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Knit directory: heatwave_co2_flux_2023/analysis/

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center <- -160
boundary <- center + 180
target_crs <- paste0("+proj=robin +over +lon_0=", center)
# target_crs <- paste0("+proj=eqearth +over +lon_0=", center)
# target_crs <- paste0("+proj=eqearth +lon_0=", center)
# target_crs <- paste0("+proj=igh_o +lon_0=", center)

worldmap <- ne_countries(scale = 'small',
                         type = 'map_units',
                         returnclass = 'sf')

worldmap <- worldmap %>% st_break_antimeridian(lon_0 = center)
worldmap_trans <- st_transform(worldmap, crs = target_crs)

# ggplot() +
#   geom_sf(data = worldmap_trans)

coastline <- ne_coastline(scale = 'small', returnclass = "sf")
coastline <- st_break_antimeridian(coastline, lon_0 = 200)
coastline_trans <- st_transform(coastline, crs = target_crs)

# ggplot() +
#   geom_sf(data = worldmap_trans, fill = "grey", col="grey") +
#   geom_sf(data = coastline_trans)


bbox <- st_bbox(c(xmin = -180, xmax = 180, ymax = 65, ymin = -78), crs = st_crs(4326))
bbox <- st_as_sfc(bbox)
bbox_trans <- st_break_antimeridian(bbox, lon_0 = center)

bbox_graticules <- st_graticule(
  x = bbox_trans,
  crs = st_crs(bbox_trans),
  datum = st_crs(bbox_trans),
  lon = c(20, 20.001),
  lat = c(-78,65),
  ndiscr = 1e3,
  margin = 0.001
)

bbox_graticules_trans <- st_transform(bbox_graticules, crs = target_crs)
rm(worldmap, coastline, bbox, bbox_trans)

# ggplot() +
#   geom_sf(data = worldmap_trans, fill = "grey", col="grey") +
#   geom_sf(data = coastline_trans) +
#   geom_sf(data = bbox_graticules_trans)

lat_lim <- ext(bbox_graticules_trans)[c(3,4)]*1.002
lon_lim <- ext(bbox_graticules_trans)[c(1,2)]*1.005

# ggplot() +
#   geom_sf(data = worldmap_trans, fill = "grey90", col = "grey90") +
#   geom_sf(data = coastline_trans) +
#   geom_sf(data = bbox_graticules_trans, linewidth = 1) +
#   coord_sf(crs = target_crs,
#            ylim = lat_lim,
#            xlim = lon_lim,
#            expand = FALSE) +
#   theme(
#     panel.border = element_blank(),
#     axis.text = element_blank(),
#     axis.ticks = element_blank()
#   )

latitude_graticules <- st_graticule(
  x = bbox_graticules,
  crs = st_crs(bbox_graticules),
  datum = st_crs(bbox_graticules),
  lon = c(20, 20.001),
  lat = c(-60,-30,0,30,60),
  ndiscr = 1e3,
  margin = 0.001
)

latitude_graticules_trans <- st_transform(latitude_graticules, crs = target_crs)

latitude_labels <- data.frame(lat_label = c("60°N","30°N","Eq.","30°S","60°S"),
                 lat = c(60,30,0,-30,-60)-4, lon = c(35)-c(0,2,4,2,0))

latitude_labels <- st_as_sf(x = latitude_labels,
               coords = c("lon", "lat"),
               crs = "+proj=longlat")

latitude_labels_trans <- st_transform(latitude_labels, crs = target_crs)

# ggplot() +
#   geom_sf(data = worldmap_trans, fill = "grey", col = "grey") +
#   geom_sf(data = coastline_trans) +
#   geom_sf(data = bbox_graticules_trans) +
#   geom_sf(data = latitude_graticules_trans,
#           col = "grey60",
#           linewidth = 0.2) +
#   geom_sf_text(data = latitude_labels_trans,
#                aes(label = lat_label),
#                size = 3,
#                col = "grey60")
pCO2_product_synopsis <-
  knitr::knit_expand(
    file = here::here("analysis/child/pCO2_product_synopsis.Rmd"),
    year_anom = 2023
  )

Read data

map <-
  read_rds(here::here("data/map.rds"))

key_biomes <-
  read_rds(here::here("data/key_biomes.rds"))

key_biomes <- 
key_biomes[!str_detect(key_biomes, "NP")]


biome_mask <-
  read_rds(here::here("data/biome_mask.rds"))

biome_mask_print <-
  biome_mask %>%
  filter(!str_detect(biome, "SO-SPSS|SO-ICE|Arctic")) %>%
  select(lon, lat)

region_biomes <-
  read_rds(here::here("data/region_biomes.rds"))
nino_sst <- read_table(here::here("data/nino34sst.txt"))

nino_sst <-
  nino_sst %>%
  select(year = YR,
         month = MON,
         resid = ANOM_3)
name_core <- c("fgco2", "fgco2_int", "fgco2_hov",
               # "sfco2", "atm_fco2", 
               "dfco2",
               # "kw_sol", 
               "temperature", 
               # "salinity",
               # "dissic", "talk", "sdissic", "stalk", "cstar", 
               "sdissic_stalk",
               "no3", "o2",
               "mld", "thetao", 
               # "so",
               "intpp", "chl",
               "sfco2_therm","sfco2_nontherm","sfco2_total",
               "resid_fgco2_dfco2", "resid_fgco2_kw_sol", "resid_fgco2_dfco2_kw_sol")


all_product_list <- c("OceanSODAv2",
                      "SOM-FFN",
                      "fCO2-Residual",
                      "CMEMS",
                      "ETHZ-CESM",
                      "FESOM-REcoM")

gobm_product_list <- c("ETHZ-CESM",
                       "FESOM-REcoM")


pco2_product_list <- c("OceanSODAv2",
                      "SOM-FFN",
                      "fCO2-Residual",
                      "CMEMS"
                      )

color_products <- c(
  "OceanSODAv2" = "#672933",
  "SOM-FFN" = "#d1495b",
  "fCO2-Residual" = "#edae49",
  "CMEMS" = "#AD8E55",
  "ETHZ-CESM" = "#66a182",
  "FESOM-REcoM" = "#00798c"
)

warm_color <- "#c33c57"
cold_color <- "#3f6fb3"
trend_color <- "#66a182"


warm_cool_gradient <- 
rev(c(
  "#61195a",
  "#6f185f",
  "#8d1e62",
  "#aa2960",
  "#c33c57",
  "#da5351",
  "#e77155",
  "#f09264",
  "#f09264",
  "#fbd297",
  "#fefefe",
  "#c6e8ea",
  "#97d4db",
  "#79bcd0",
  "#5ca2c6",
  "#4a88bc",
  "#3f6fb3",
  "#3e56a2",
  "#3c3f82",
  "#2f2c5a",
  "#272648"
))

# cmocean("balance")(100)
files <- list.files(here::here("data/quadratic_fit/"),
                    pattern = "FESOM-REcoM")

file_types <- str_remove(files, paste0("FESOM-REcoM_",2023,"_"))
# file_types <- str_remove(file_types, "_temperature_predict")
file_types <- unique(file_types)
# file_types <- str_remove(file_types, ".csv")

for(i_file_type in file_types) {
  
  # print(i_file_type)
  # i_file_type <- file_types[1]
  
  files <- list.files(here::here("data/quadratic_fit/"),
                      pattern = paste(2023, i_file_type, sep = "_"),
                      full.names = TRUE)
  

  pco2_product <-
    read_csv(files, id = "product")
  
  pco2_product <-
    pco2_product %>%
    mutate(
      product = str_extract(
        product,
        "OceanSODAv2|SOM-FFN|CMEMS|fCO2-Residual|ETHZ-CESM|FESOM-REcoM"
      )
    )
  
  if (!str_detect(files[1], "slope|_temperature_predict")) {
    pco2_product <-
      pco2_product %>%
      mutate(
        name = factor(name, levels = name_core),
        product = factor(product, levels = all_product_list)
      ) %>%
      filter(!is.na(name))
  } else {
    pco2_product <-
      pco2_product %>%
      mutate(product = factor(product, levels = all_product_list))
  }
  
  i_file_type <- str_remove(i_file_type, ".csv")
  assign(paste("pco2_product", i_file_type, sep = "_"), pco2_product)

}

Define labels and breaks

labels_breaks <- function(i_name) {
  if (i_name == "dco2") {
    i_legend_title <- "ΔpCO<sub>2</sub> anom.<br>(µatm)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "dfco2") {
    i_legend_title <- "ΔfCO<sub>2</sub> anom.<br>(µatm)"
    i_breaks <- c(-Inf, seq(-12, 12, 3), Inf)
  }
  
  if (i_name == "atm_co2") {
    i_legend_title <- "pCO<sub>2,atm</sub> anom.<br>(µatm)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "atm_fco2") {
    i_legend_title <- "fCO<sub>2,atm</sub> anom.<br>(µatm)"
    i_breaks <- c(-Inf, seq(-2, 2, 0.5), Inf)
  }
  
  if (i_name == "sol") {
    i_legend_title <- "K<sub>0</sub> anom.<br>(mol m<sup>-3</sup> µatm<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "kw") {
    i_legend_title <- "k<sub>w</sub> anom.<br>(m yr<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "kw_sol") {
    i_legend_title <- "k<sub>w</sub> K<sub>0</sub> anom.<br>(mol yr<sup>-1</sup> m<sup>-2</sup> µatm<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-0.015, 0.015, 0.003), Inf)
  }
  
  if (i_name == "spco2") {
    i_legend_title <- "pCO<sub>2,ocean</sub> anom.<br>(µatm)"
    i_breaks <- c(-Inf, seq(-12, 12, 3), Inf)
  }
  
  if (i_name == "sfco2") {
    i_legend_title <- "fCO<sub>2,ocean</sub> anom.<br>(µatm)"
    i_breaks <- c(-Inf, seq(-12, 12, 3), Inf)
  }
  
  if (i_name == "intpp") {
    i_legend_title <- "NPP<sub>int</sub> anom.<br>(mol m<sup>-2</sup> yr<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-3, 3, 0.5), Inf)
  }
  
  if (i_name == "no3") {
    i_legend_title <- "NO<sub>3</sub> anom.<br>(μmol kg<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-1.5, 1.5, 0.3), Inf)
  }
  
  if (i_name == "o2") {
    i_legend_title <- "O<sub>2</sub> anom.<br>(μmol kg<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "dissic") {
    i_legend_title <- "DIC anom.<br>(μmol kg<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-15, 15, 3), Inf)
  }
  
  if (i_name == "sdissic") {
    i_legend_title <- "sDIC anom.<br>(μmol kg<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-15, 15, 3), Inf)
  }
  
  if (i_name == "cstar") {
    i_legend_title <- "C* anom.<br>(μmol kg<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "talk") {
    i_legend_title <- "TA anom.<br>(μmol kg<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-15, 15, 3), Inf)
  }
  
  if (i_name == "stalk") {
    i_legend_title <- "sTA anom.<br>(μmol kg<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-15, 15, 3), Inf)
  }
  
  if (i_name == "sdissic_stalk") {
    i_legend_title <- "sDIC - sTA anom.<br>(μmol kg<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-15, 15, 3), Inf)
  }
  
  if (i_name == "sfco2_total") {
    i_legend_title <- "total"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "sfco2_therm") {
    i_legend_title <- "thermal"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "sfco2_nontherm") {
    i_legend_title <- "non-thermal"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "fgco2") {
    i_legend_title <- "FCO<sub>2</sub> anom.<br>(mol m<sup>-2</sup> yr<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "fgco2_hov") {
    i_legend_title <- "FCO<sub>2</sub> anom.<br>(PgC deg<sup>-1</sup> yr<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "fgco2_int") {
    i_legend_title <- "FCO<sub>2</sub> anom.<br>(PgC yr<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "thetao") {
    i_legend_title <- "Temp. anom.<br>(°C)"
    i_breaks <- c(-Inf, seq(-1.6, 1.6, 0.4), Inf)
  }
  
  if (i_name == "temperature") {
    i_legend_title <- "SST anom.<br>(°C)"
    i_breaks <- c(-Inf, seq(-1.6, 1.6, 0.4), Inf)
  }
  
  if (i_name == "salinity") {
    i_legend_title <- "SSS anom."
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "so") {
    i_legend_title <- "Salinity anom."
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "chl") {
    i_legend_title <- "lg(Chl-a) anom.<br>(lg(mg m<sup>-3</sup>))"
    i_breaks <- c(-Inf, seq(-0.2, 0.2, 0.05), Inf)
  }
  
  if (i_name == "mld") {
    i_legend_title <- "MLD anom.<br>(m)"
    i_breaks <- c(-Inf, seq(-40, 40, 10), Inf)
  }
  
  if (i_name == "press") {
    i_legend_title <- "pressure<sub>atm</sub> anom.<br>(Pa)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "wind") {
    i_legend_title <- "Wind anom.<br>(m sec<sup>-1</sup>)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "SSH") {
    i_legend_title <- "SSH anom.<br>(m)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "fice") {
    i_legend_title <- "Sea ice anom.<br>(%)"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  
  if (i_name == "resid_fgco2") {
    i_legend_title <-
      "Observed"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "resid_fgco2_dfco2") {
    i_legend_title <-
      "ΔfCO<sub>2</sub> contr."
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "resid_fgco2_kw_sol") {
    i_legend_title <-
      "k<sub>w</sub> K<sub>0</sub> contr."
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "resid_fgco2_dfco2_kw_sol") {
    i_legend_title <-
      "ΔfCO<sub>2</sub> ⨯ k<sub>w</sub> K<sub>0</sub> contr."
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "resid_fgco2_sum") {
    i_legend_title <-
      "∑"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  if (i_name == "resid_fgco2_offset") {
    i_legend_title <-
      "Obs. - ∑"
    i_breaks <- c(-Inf, seq(-0.5, 0.5, 0.1), Inf)
  }
  
  all_labels_breaks <- lst(i_legend_title, i_breaks)
  
  return(all_labels_breaks)
  
}

x_axis_labels <-
  c(
    "dco2" = labels_breaks("dco2")$i_legend_title,
    "dfco2" = labels_breaks("dfco2")$i_legend_title,
    "atm_co2" = labels_breaks("atm_co2")$i_legend_title,
    "atm_fco2" = labels_breaks("atm_fco2")$i_legend_title,
    "sol" = labels_breaks("sol")$i_legend_title,
    "kw" = labels_breaks("kw")$i_legend_title,
    "kw_sol" = labels_breaks("kw_sol")$i_legend_title,
    "intpp" = labels_breaks("intpp")$i_legend_title,
    "no3" = labels_breaks("no3")$i_legend_title,
    "o2" = labels_breaks("o2")$i_legend_title,
    "dissic" = labels_breaks("dissic")$i_legend_title,
    "sdissic" = labels_breaks("sdissic")$i_legend_title,
    "cstar" = labels_breaks("cstar")$i_legend_title,
    "talk" = labels_breaks("talk")$i_legend_title,
    "stalk" = labels_breaks("stalk")$i_legend_title,
    "sdissic_stalk" = labels_breaks("sdissic_stalk")$i_legend_title,
    "spco2" = labels_breaks("spco2")$i_legend_title,
    "sfco2" = labels_breaks("sfco2")$i_legend_title,
    "sfco2_total" = labels_breaks("sfco2_total")$i_legend_title,
    "sfco2_therm" = labels_breaks("sfco2_therm")$i_legend_title,
    "sfco2_nontherm" = labels_breaks("sfco2_nontherm")$i_legend_title,
    "fgco2" = labels_breaks("fgco2")$i_legend_title,
    "fgco2_hov" = labels_breaks("fgco2_hov")$i_legend_title,
    "fgco2_int" = labels_breaks("fgco2_int")$i_legend_title,
    "thetao" = labels_breaks("thetao")$i_legend_title,
    "temperature" = labels_breaks("temperature")$i_legend_title,
    "salinity" = labels_breaks("salinity")$i_legend_title,
    "so" = labels_breaks("so")$i_legend_title,
    "chl" = labels_breaks("chl")$i_legend_title,
    "mld" = labels_breaks("mld")$i_legend_title,
    "press" = labels_breaks("press")$i_legend_title,
    "wind" = labels_breaks("wind")$i_legend_title,
    "SSH" = labels_breaks("SSH")$i_legend_title,
    "fice" = labels_breaks("fice")$i_legend_title,
    "resid_fgco2" = labels_breaks("resid_fgco2")$i_legend_title,
    "resid_fgco2_dfco2" = labels_breaks("resid_fgco2_dfco2")$i_legend_title,
    "resid_fgco2_kw_sol" = labels_breaks("resid_fgco2_kw_sol")$i_legend_title,
    "resid_fgco2_dfco2_kw_sol" = labels_breaks("resid_fgco2_dfco2_kw_sol")$i_legend_title,
    "resid_fgco2_sum" = labels_breaks("resid_fgco2_sum")$i_legend_title,
    "resid_fgco2_offset" = labels_breaks("resid_fgco2_offset")$i_legend_title
  )

# create axis labels for absolute values by removing anom.
x_axis_labels_abs <- x_axis_labels
x_axis_labels_abs <- str_replace_all(x_axis_labels_abs, " anom.", "") 
names(x_axis_labels_abs) <- names(x_axis_labels)

Functions

Seasonality plots

p_season <- function(df, 
                     dim_row = "name", 
                     dim_col = "product", 
                     title = NULL, 
                     var = "resid",
                     scales = "free_y") {
  
  p <- ggplot(data = df,
              aes(month, !!ensym(var)))
  
  if(var == "resid"){
      p <- p +
        geom_hline(yintercept = 0, linewidth =0.5)
    
  }
  
  
  
  p <- p +
      geom_path(data = . %>% filter(year != 2023),
                aes(group = as.factor(year),
                    col = as.factor(paste(min(year), max(year), sep = "-"))), 
                alpha = 0.5)+
      geom_path(data = . %>% 
                  filter(year != 2023) %>% 
                  group_by_at(vars(month, dim_col, dim_row)) %>% 
                  summarise(!!ensym(var) := mean(!!ensym(var))),
                aes(col = "Climatological\nmean"), 
                linewidth = 0.7) +
    scale_color_manual(values = c("grey60", "grey10"),
                       guide = guide_legend(order = 2,
                                            reverse = TRUE)) +
    new_scale_color()+
    geom_path(data = . %>% filter(year == 2023),
                aes(col = as.factor(year)),
                linewidth = 1.2) +
      scale_color_manual(
        values = warm_color,
        guide = guide_legend(order = 1)
      ) +
      scale_x_continuous(breaks = seq(1, 12, 3), expand = c(0, 0)) +
      labs(title = title,
           x = "Month")
  
    if(df %>% filter(name == "fgco2") %>% nrow() > 0 & "value" %in% names(df)){
    
    df_sink <- df %>% 
      filter(year == 2023,
             name == "fgco2")
    
      p <- p +
          geom_point(data = df_sink %>% filter(value < 0),
             aes(shape = "Sink"), fill = "white") +
          geom_point(data = df_sink %>% filter(value >= 0),
             aes(shape = "Source"), fill = "white") +
        scale_shape_manual(values = c(25,24))
    
  }
  
  
  if (!(is.null(dim_col))) {
    p <- p +
      facet_grid2(
        as.formula(paste(dim_row, "~", dim_col)),
        scales = scales,
        # independent = "y",
        labeller = labeller(name = x_axis_labels),
        switch = "y"
      )
    
    
  } else {
    p <- p +
      facet_grid(
        as.formula(paste(dim_row, "~ .")),
        scales = scales,
        # independent = "y",
        labeller = labeller(name = x_axis_labels),
        switch = "y"
      )
  }
  
  p <- p +
    theme(
      strip.text.y.left = element_markdown(),
      strip.placement = "outside",
      strip.background.y = element_blank(),
      axis.title.y = element_blank(),
      legend.title = element_blank(),
      axis.text.y.right = element_blank()
    ) 
    # scale_y_continuous(sec.axis = dup_axis())
  
  p
  
}

fCO2 decomposition

fco2_decomposition <- function(df, ...) {
  
  group_by <- quos(...)
  # group_by <- quos(lon, lat, month)
  # group_by <- quos(biome, year, month)
  
  pco2_product_biome_monthly_fCO2_decomposition <-
    df %>%
    filter(name %in% c("temperature", "sfco2"))
  
  pco2_product_biome_monthly_fCO2_decomposition <-
    inner_join(
      pco2_product_biome_monthly_fCO2_decomposition %>%
        filter(name == "temperature") %>%
        select(-c(value, fit)) %>%
        pivot_wider(values_from = resid),
      pco2_product_biome_monthly_fCO2_decomposition %>%
        filter(name == "sfco2") %>%
        select(-c(value, resid)) %>%
        pivot_wider(values_from = fit)
    )
  
  pco2_product_biome_monthly_fCO2_decomposition <-
    pco2_product_biome_monthly_fCO2_decomposition %>%
    mutate(sfco2_therm = (sfco2 * exp(0.0423 * temperature)) - sfco2)
  
  
  pco2_product_biome_monthly_fCO2_decomposition <-
    inner_join(
      pco2_product_biome_monthly_fCO2_decomposition,
      df %>%
        filter(name %in% c("sfco2")) %>%
        select(-c(value, fit, name)) %>%
        rename(sfco2_total = resid)
    )
  
  
  pco2_product_biome_monthly_fCO2_decomposition <-
    pco2_product_biome_monthly_fCO2_decomposition %>%
    mutate(sfco2_nontherm = sfco2_total - sfco2_therm)
  
  pco2_product_biome_monthly_fCO2_decomposition <-
    pco2_product_biome_monthly_fCO2_decomposition %>%
    select(-c(temperature, sfco2)) %>%
    pivot_longer(starts_with("sfco2"),
                 values_to = "resid")
  
}

Flux attribution

flux_attribution <- function(df, ...) {
  
  group_by <- quos(...)
  # group_by <- quos(lon, lat, month)
  
  pco2_product_flux_attribution <-
    df %>%
    filter(name %in% c("dfco2", "kw_sol", "fgco2"))
  
  
  pco2_product_flux_attribution <-
    inner_join(
      pco2_product_flux_attribution %>%
        select(-c(value, fit)) %>%
        pivot_wider(values_from = resid,
                    names_prefix = "resid_"),
      pco2_product_flux_attribution %>%
        select(-c(value, resid)) %>%
        filter(name != "fgco2") %>%
        pivot_wider(values_from = fit)
    )
  
    pco2_product_flux_attribution <-
    pco2_product_flux_attribution %>%
    mutate(
      resid_fgco2_dfco2 = resid_dfco2 * kw_sol,
      resid_fgco2_kw_sol = resid_kw_sol * dfco2,
      resid_fgco2_dfco2_kw_sol = resid_dfco2 * resid_kw_sol
      # resid_fgco2_sum = resid_fgco2_dfco2 + resid_fgco2_kw_sol + resid_fgco2_dfco2_kw_sol
    )
  
  # pco2_product_flux_attribution <-
  #   pco2_product_flux_attribution %>%
  #   mutate(resid_fgco2_offset = resid_fgco2 - resid_fgco2_sum)
  
  pco2_product_flux_attribution <-
    pco2_product_flux_attribution %>%
    select(product, !!!group_by, starts_with("resid_fgco2")) %>%
    pivot_longer(starts_with("resid_"),
                 values_to = "resid")
  
  
  pco2_product_flux_attribution <-
    pco2_product_flux_attribution %>%
    filter(str_detect(name, "dfco2|kw_sol")) %>% 
    mutate(name = factor(
      name,
      levels = c(
        "resid_fgco2",
        "resid_fgco2_dfco2",
        "resid_fgco2_kw_sol",
        "resid_fgco2_dfco2_kw_sol",
        "resid_fgco2_sum",
        "resid_fgco2_offset"
      )
    ))
  
}

Robinson map

bbox <- st_bbox(c(xmin = -180, xmax = 180, ymax = 76, ymin = -54), crs = st_crs(4326))
bbox <- st_as_sfc(bbox)
bbox_trans <- st_break_antimeridian(bbox, lon_0 = center)

bbox_graticules <- st_graticule(
  x = bbox_trans,
  crs = st_crs(bbox_trans),
  datum = st_crs(bbox_trans),
  lon = c(20, 20.001),
  lat = c(-54,76),
  ndiscr = 1e3,
  margin = 0.001
)

bbox_graticules_trans <- st_transform(bbox_graticules, crs = target_crs)
rm(bbox, bbox_trans)

# ggplot() +
#   geom_sf(data = worldmap_trans, fill = "grey", col="grey") +
#   geom_sf(data = coastline_trans) +
#   geom_sf(data = bbox_graticules_trans)

lat_lim <- ext(bbox_graticules_trans)[c(3,4)]*1.002
lon_lim <- ext(bbox_graticules_trans)[c(1,2)]*1.005


p_map_mdim_robinson <-
  function(df,
           df_uncertainty = NULL,
           dim_row = NULL,
           dim_col = NULL,
           dim_wrap = NULL,
           n_col = NULL,
           var,
           legend_title = NULL,
           breaks = NULL,
           n_labels = 2,
           target_crs = "+proj=robin +over +lon_0=-160",
           col = "divergent",
           col_scale = "warm_cold",
           plot_latitudes = FALSE,
           legend_position = "top") {
    
    if (is.null(dim_col) & is.null(dim_row) & is.null(dim_wrap)) {
      df_raster <- df %>%
        select(lon, lat, all_of(var)) %>% 
        rast(crs = "+proj=longlat")
      
      df_raster <-
        project(df_raster, target_crs)
      
      df_tibble <-
        df_raster %>%
        as.data.frame(xy = TRUE, na.rm = FALSE) %>%
        as_tibble() %>%
        rename(lon = x, lat = y) %>%
        drop_na()
      
      
    } else {
      
      # if (!is.null(dim_col) & !is.null(dim_row) & !is.null(dim_wrap)) {
      #   names_sep <- ";"
      # } else {
      #   names_sep <- NULL
      # }
      
      names_sep <- ";"

      df_raster <- df %>%
        select(lon, lat,
               all_of(c(dim_row, dim_col, dim_wrap)),
               all_of(var)) %>%
        pivot_wider(names_from = all_of(c(dim_row, dim_col, dim_wrap)), 
                    values_from = all_of(var),
                    names_sep = names_sep) %>%
        rast(crs = "+proj=longlat")
      
      
      df_raster <-
        project(df_raster, target_crs)

           
            
      if (length(c(dim_row, dim_col, dim_wrap)) <= 1) {
        names_sep <- NULL
      }

      df_tibble <-
        df_raster %>%
        as.data.frame(xy = TRUE, na.rm = FALSE) %>%
        as_tibble() %>%
        rename(lon = x, lat = y) %>%
        pivot_longer(
          -c(lon, lat),
          names_sep = names_sep,
          names_to = c(dim_row, dim_col, dim_wrap),
          values_to = var
        ) %>%
        drop_na()
      
      
    }
    
    
    if (is.null(legend_title)) {
      legend_title <- var
    }
    
    var <- sym(var)
    
    p_map <- ggplot() +
      geom_raster(data = df_tibble, aes(
        x = lon,
        y = lat,
        fill = cut(!!var, breaks, include.lowest = TRUE)
      ))
    
    
    p_map <- p_map +
      geom_sf(data = worldmap_trans %>% select(-name),
              fill = "grey90",
              col = "grey90") +
      geom_sf(data = coastline_trans, linewidth = 0.3) +
      geom_sf(data = bbox_graticules_trans, linewidth = 0.5)
    
    if (plot_latitudes) {
      p_map <- p_map +
        geom_sf(data = latitude_graticules_trans,
                col = "grey60",
                linewidth = 0.2) +
        geom_sf_text(
          data = latitude_labels_trans,
          aes(label = lat_label),
          size = 3,
          col = "grey60"
        )
    }
    
    if (!is.null(df_uncertainty)) {
      p_map <- p_map +
        geom_sf(
          data = df_uncertainty %>% filter(signif_single == 0),
          col = "grey60",
          size = 0.05
        )
    }
    
    p_map <- p_map +
      coord_sf(
        crs = target_crs,
        ylim = lat_lim,
        xlim = lon_lim,
        expand = FALSE
      )
    
    if (legend_position == "top") {
      p_map <- p_map +
        guides(
          fill = guide_colorsteps(
            barheight = unit(0.3, "cm"),
            barwidth = unit(8, "cm"),
            ticks = TRUE,
            ticks.colour = "grey20",
            frame.colour = "grey20",
            label.position = "top",
            direction = "horizontal"
          )
        ) +
        theme_void() +
        theme(
          legend.margin=margin(t = .1, b = .1, unit='cm'),
          plot.margin = margin(.1,.1,.1,.1,"cm"),
          panel.spacing = unit(.1,"cm"),
          legend.position = "top",
          legend.title.align = 1,
          legend.box.spacing = unit(0.1, "cm"),
          legend.title = element_markdown(halign = 1, lineheight = 1.5)
        )
    }
    
    if (legend_position == "bottom") {
      p_map <- p_map +
        guides(
          fill = guide_colorsteps(
            barheight = unit(0.3, "cm"),
            barwidth = unit(8, "cm"),
            ticks = TRUE,
            ticks.colour = "grey20",
            frame.colour = "grey20",
            label.position = "bottom",
            direction = "horizontal"
          )
        ) +
        theme_void() +
        theme(
          legend.margin=margin(t = .1, b = .1, unit='cm'),
          plot.margin = margin(.1,.1,.1,.1,"cm"),
          panel.spacing = unit(.1,"cm"),
          legend.position = "bottom",
          legend.title.align = 1,
          legend.box.spacing = unit(0.1, "cm"),
          legend.title = element_markdown(halign = 1, lineheight = 1.5)
        )
    }
    
    if (legend_position == "right") {
      p_map <- p_map +
        guides(
          fill = guide_colorsteps(
            barheight = unit(6, "cm"),
            barwidth = unit(0.3, "cm"),
            ticks = TRUE,
            ticks.colour = "grey20",
            frame.colour = "grey20",
            label.position = "right",
            direction = "vertical"
          )
        ) +
        theme_void() +
        theme(
          legend.position = "right",
          legend.title.align = 0,
          legend.box.spacing = unit(0.1, "cm"),
          legend.title = element_markdown(halign = 0, lineheight = 1.5)
        )
    }
    
    if (legend_position == "left") {
      p_map <- p_map +
        guides(
          fill = guide_colorsteps(
            barheight = unit(6, "cm"),
            barwidth = unit(0.3, "cm"),
            ticks = TRUE,
            ticks.colour = "grey20",
            frame.colour = "grey20",
            label.position = "left",
            direction = "vertical"
          )
        ) +
        theme_void() +
        theme(
          legend.position = "left",
          legend.title.align = 0,
          legend.box.spacing = unit(0.1, "cm"),
          legend.title = element_markdown(halign = 0, lineheight = 1.5)
        )
    }
    
    if (col == "sequential") {
      breaks_test <- breaks[!breaks == Inf]
      breaks_test <- breaks_test[!breaks_test == -Inf]
      breaks_reverse <-
        abs(first(breaks_test)) < abs(last(breaks_test))
      
      if (breaks_reverse == TRUE) {
        direction_value = 1
        reverse_value = TRUE
      } else{
        direction_value = -1
        reverse_value = FALSE
      }
      
      if (n_labels == 1) {
        labels <- breaks_test
      } else {
        breaks_test[seq_along(breaks_test) %% 2 == 0] <- ""
        labels <- breaks_test
      }
      
      if (col_scale %in% c("viridis", "plasma", "cividis")) {
        p_map <- p_map +
          scale_fill_viridis_d(
            drop = FALSE,
            name = legend_title,
            direction = direction_value,
            option = col_scale,
            labels = unname(labels)
          )
      }
      
    } else {
      
      breaks_test <- breaks[!breaks == Inf]
      breaks_test <- breaks_test[!breaks_test == -Inf]
      
      if (n_labels == 1) {
        labels <- breaks_test
      } else {
        breaks_test[seq_along(breaks_test) %% 2 == 0] <- ""
        labels <- breaks_test
      }
      
      p_map <- p_map +
        scale_fill_gradientn(
          colours = warm_cool_gradient,
          # rescaler = ~ scales::rescale_mid(.x, mid = 0),
          super = ScaleDiscretised,
          name = legend_title,
          labels = unname(labels)
        )
        # colorspace::scale_fill_discrete_divergingx(
        #   palette = "RdBu",
        #   drop = FALSE,
        #   rev = TRUE,
        #   name = legend_title,
        #   labels = unname(labels)
        # )
    }
    
    
    
    if (!(is.null(dim_row) & is.null(dim_col))) {
      if (is.null(dim_col)) {
        dim_col <- "."
      }
      
      if (is.null(dim_row)) {
        dim_row <- "."
      }
      
      p_map <- p_map +
        facet_grid(as.formula(paste(dim_row, "~", dim_col)),
                   labeller = labeller(name = x_axis_labels),
                   switch = "y") +
        theme(strip.text.x.top = element_markdown(),
              strip.text.y.left = element_markdown())
      
    }
    
    if (!is.null(dim_wrap) & is.null(n_col)) {

      p_map <- p_map +
        facet_wrap(as.formula(paste("~", dim_wrap)))
    }
    

    if (!(is.null(dim_wrap) & is.null(n_col))) {
      if (dim_wrap == "name") {
        p_map <- p_map +
          facet_wrap(as.formula(paste("~", dim_wrap)),
                     labeller = labeller(name = x_axis_labels),
                     ncol = n_col) +
          theme(strip.text.x.top = element_markdown())
      } else{
        p_map <- p_map +
          facet_wrap(as.formula(paste("~", dim_wrap)), ncol = n_col) +
          theme(strip.text.x.top = element_markdown())
      }
    }
    
    p_map
    
  }

Maps

The following maps show the anomalies of each variable in 2023 as provided through the fCO2 product. Anomalies are determined based on the predicted value of a linear regression model fit to the available data from 1990 to 2022.

Maps are first presented as annual means, and than as monthly means. Note that the 2023 predictions for the monthly maps are done individually for each month, such the mean seasonal anomaly from the annual mean is removed.

Note: The increase the computational speed, I regridded all maps to 5X5° grid.

Annual means

2023 anomaly

pco2_product_map_annual_anomaly <-
  inner_join(
    biome_mask_print,
    pco2_product_map_annual_anomaly
  )

pco2_product_map_annual_anomaly %>%
  filter(year == 2023) %>%
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ p_map_mdim_robinson(
      df = .x,
      var = "resid",
      legend_title = labels_breaks(.x %>% distinct(name))$i_legend_title,
      breaks = labels_breaks(.x %>% distinct(name))$i_breaks,
      dim_wrap = "product",
      n_col = 2
    )
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
bf01e6c jens-daniel-mueller 2024-05-31
fbba0a0 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16
960912c jens-daniel-mueller 2024-05-16
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[2]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
c6f967e jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
7c448f7 jens-daniel-mueller 2024-05-31
bf01e6c jens-daniel-mueller 2024-05-31
fbba0a0 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16
960912c jens-daniel-mueller 2024-05-16
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
e44a62b jens-daniel-mueller 2024-04-23
6709afa jens-daniel-mueller 2024-04-12
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[3]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
c6f967e jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
7c448f7 jens-daniel-mueller 2024-05-31
bf01e6c jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
fbba0a0 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16
960912c jens-daniel-mueller 2024-05-16
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
e44a62b jens-daniel-mueller 2024-04-23
6709afa jens-daniel-mueller 2024-04-12
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[4]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
c6f967e jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
7c448f7 jens-daniel-mueller 2024-05-31
bf01e6c jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
fbba0a0 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16
960912c jens-daniel-mueller 2024-05-16
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
e44a62b jens-daniel-mueller 2024-04-23
6709afa jens-daniel-mueller 2024-04-12
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[5]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
c6f967e jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
7c448f7 jens-daniel-mueller 2024-05-31
bf01e6c jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
fbba0a0 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16
960912c jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
e44a62b jens-daniel-mueller 2024-04-23
6709afa jens-daniel-mueller 2024-04-12
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[6]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
c6f967e jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
7c448f7 jens-daniel-mueller 2024-05-31
bf01e6c jens-daniel-mueller 2024-05-31
b754e95 jens-daniel-mueller 2024-05-28
fbba0a0 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16
960912c jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
60abdac jens-daniel-mueller 2024-04-23
e44a62b jens-daniel-mueller 2024-04-23
6709afa jens-daniel-mueller 2024-04-12
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[7]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
c6f967e jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
7c448f7 jens-daniel-mueller 2024-05-31
bf01e6c jens-daniel-mueller 2024-05-31
4d3ccb2 jens-daniel-mueller 2024-05-29
b754e95 jens-daniel-mueller 2024-05-28
fbba0a0 jens-daniel-mueller 2024-05-28
97eff6a jens-daniel-mueller 2024-05-25
dbc1fc6 jens-daniel-mueller 2024-05-16
960912c jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
e44a62b jens-daniel-mueller 2024-04-23
6709afa jens-daniel-mueller 2024-04-12
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[8]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
a58162a jens-daniel-mueller 2024-07-11
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
c6f967e jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
7c448f7 jens-daniel-mueller 2024-05-31
bf01e6c jens-daniel-mueller 2024-05-31
4d3ccb2 jens-daniel-mueller 2024-05-29
b754e95 jens-daniel-mueller 2024-05-28
fbba0a0 jens-daniel-mueller 2024-05-28
e1e0ccb jens-daniel-mueller 2024-05-27
97eff6a jens-daniel-mueller 2024-05-25
dbc1fc6 jens-daniel-mueller 2024-05-16
960912c jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
e44a62b jens-daniel-mueller 2024-04-23
6709afa jens-daniel-mueller 2024-04-12
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05
# plot_list <- 
# pco2_product_map_annual_anomaly %>%
#   filter(year == 2023,
#          product == "ETHZ-CESM",
#          name %in% c(
#            "fgco2",
#            "dfco2",
#            "kw_sol",
#            "temperature",
#            "salinity",
#            "sdissic",
#            "stalk",
#            "no3",
#            "mld",
#            "intpp",
#            "chl"
#          )) %>%
#   group_split(name) %>% 
#   # head(1) %>%
#   map(
#     ~ map +
#       geom_tile(data = .x,
#                 aes(lon, lat, fill = resid)) +
#       scale_fill_gradientn(
#         colours = warm_cool_gradient,
#         rescaler = ~ scales::rescale_mid(.x, mid = 0),
#         name = labels_breaks(.x %>% distinct(name))$i_legend_title,
#         limits = c(quantile(.x$resid, .01), quantile(.x$resid, .99)),
#         oob = squish
#       ) +
#       theme(legend.title = element_markdown(),
#             legend.justification = "left")
#   )


plot_list <- 
pco2_product_map_annual_anomaly %>%
  filter(year == 2023,
         product == "ETHZ-CESM",
         name %in% c(
           "fgco2",
           "dfco2",
           "kw_sol",
           "temperature",
           "salinity",
           "sdissic",
           "stalk",
           "sdissic_stalk",
           "no3",
           "mld",
           "intpp",
           "chl"
         )) %>%
  group_split(name) %>% 
  # head(1) %>%
  map(
    ~ p_map_mdim_robinson(
      df = .x,
      var = "resid",
      legend_title = labels_breaks(.x %>% distinct(name))$i_legend_title,
      breaks = labels_breaks(.x %>% distinct(name))$i_breaks
    )
  )


ggsave(plot = wrap_plots(plot_list,
                         ncol = 3,
                         byrow = FALSE),
       width = 14,
       height = 11,
       filename = "../output/map_anomaly_ETHZ-CESM.jpg")
plot_list <- 
pco2_product_map_annual_anomaly %>%
  filter(year == 2023,
         product == "FESOM-REcoM",
         name %in% c(
           "fgco2",
           "dfco2",
           "kw_sol",
           "temperature",
           "salinity",
           "sdissic",
           "stalk",
           "sdissic_stalk",
           "no3",
           "mld",
           "intpp",
           "chl"
         )) %>%
  group_split(name) %>% 
  # head(1) %>%
  map(
    ~ p_map_mdim_robinson(
      df = .x,
      var = "resid",
      legend_title = labels_breaks(.x %>% distinct(name))$i_legend_title,
      breaks = labels_breaks(.x %>% distinct(name))$i_breaks
    )
  )


ggsave(plot = wrap_plots(plot_list,
                         ncol = 3,
                         byrow = FALSE),
       width = 14,
       height = 11,
       filename = "../output/map_anomaly_FESOM-REcoM.jpg")

rm(plot_list)
pco2_product_map_annual_anomaly_ensemble <-
  pco2_product_map_annual_anomaly %>% 
  filter(year == 2023,
         product %in% pco2_product_list) %>%
  fgroup_by(name, lon, lat) %>%
  fsummarise(
    resid_sd = fsd(resid),
    resid_mean = fmean(resid),
    value_sd = fsd(value),
    value_mean = fmean(value),
    n = fnobs(resid)
  ) %>%
  filter(n == length(pco2_product_list)) %>% 
  select(-n)

pco2_product_map_annual_anomaly_ensemble_coarse <-
  m_grid_horizontal_coarse(pco2_product_map_annual_anomaly_ensemble) %>%
  fgroup_by(name, lon_grid, lat_grid) %>%
  fsummarise(
    resid_sd_coarse = fmean(resid_sd, na.rm = TRUE),
    resid_mean_coarse = fmean(resid_mean, na.rm = TRUE),
    value_sd_coarse = fmean(value_sd, na.rm = TRUE),
    value_mean_coarse = fmean(value_mean, na.rm = TRUE)
  ) %>% 
  rename(lon = lon_grid, lat = lat_grid)

pco2_product_map_annual_anomaly_ensemble_uncertainty <-
  pco2_product_map_annual_anomaly_ensemble_coarse %>%
  mutate(signif_single = if_else(abs(resid_mean_coarse) < resid_sd_coarse, 0, 1)) %>% 
  select(lon, lat, name, signif_single) %>% 
  st_as_sf(coords = c("lon", "lat"), crs = "+proj=longlat")


pco2_product_map_annual_anomaly_ensemble %>%
  mutate(product = "Ensemble mean") %>% 
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ p_map_mdim_robinson(
      df = .x,
      df_uncertainty = pco2_product_map_annual_anomaly_ensemble_uncertainty %>% 
        filter(name == .x %>% distinct(name) %>% pull()),
      var = "resid_mean",
      legend_title = labels_breaks(.x %>% distinct(name))$i_legend_title,
      breaks = labels_breaks(.x %>% distinct(name))$i_breaks,
      n_labels = 2
    )
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4a437fb jens-daniel-mueller 2024-07-09
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
bf01e6c jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16

[[2]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4a437fb jens-daniel-mueller 2024-07-09
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
bf01e6c jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16

[[3]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
4a437fb jens-daniel-mueller 2024-07-09
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
bf01e6c jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16

[[4]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
4a437fb jens-daniel-mueller 2024-07-09
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
bf01e6c jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16
plot_list <- pco2_product_map_annual_anomaly_ensemble %>%
  mutate(product = "Ensemble mean") %>%
  filter(name %in% c("fgco2", "temperature")) %>% 
  group_split(name) %>%
  map(
    ~ p_map_mdim_robinson(
      df = .x,
      df_uncertainty = pco2_product_map_annual_anomaly_ensemble_uncertainty %>% 
        filter(name == .x %>% distinct(name) %>% pull()),
      var = "resid_mean",
      legend_title = labels_breaks(.x %>% distinct(name))$i_legend_title,
      legend_position = "bottom",
      breaks = labels_breaks(.x %>% distinct(name))$i_breaks,
      n_labels = 2
    )
  )

ggsave(plot = wrap_plots(plot_list,
                         ncol = 2,
                         byrow = FALSE),
       width = 10,
       height = 3,
       filename = "../output/map_anomaly_ensemble_mean_pco2_products.jpg")


pco2_product_map_annual_anomaly_ensemble_uncertainty <-
  pco2_product_map_annual_anomaly_ensemble_coarse %>%
  mutate(signif_single = if_else(abs(value_mean_coarse) < value_sd_coarse, 0, 1)) %>% 
  select(lon, lat, name, signif_single) %>% 
  st_as_sf(coords = c("lon", "lat"), crs = "+proj=longlat")

pco2_product_map_annual_anomaly_ensemble %>%
  mutate(product = "Ensemble mean") %>%
  filter(name %in% c("fgco2")) %>% 
  group_split(name) %>%
  map(
    ~ p_map_mdim_robinson(
      df = .x,
      df_uncertainty = pco2_product_map_annual_anomaly_ensemble_uncertainty %>%
        filter(name == .x %>% distinct(name) %>% pull()),
      var = "value_mean",
      legend_title = str_remove(
        labels_breaks(.x %>% distinct(name))$i_legend_title,
        " anom."),
      breaks = c(-Inf, seq(-4,4,1), Inf),
      n_labels = 2
    )
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
6a96e1f jens-daniel-mueller 2024-08-26
4a437fb jens-daniel-mueller 2024-07-09
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
bf01e6c jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16
ggsave(width = 5,
       height = 3,
       filename = "../output/map_absolute_ensemble_mean_pco2_products.jpg")




rm(pco2_product_map_annual_anomaly_ensemble_uncertainty)
pco2_product_map_annual_anomaly_ensemble_offset <-
left_join(
    pco2_product_map_annual_anomaly_ensemble,
    pco2_product_map_annual_anomaly %>% 
      filter(year == 2023,
             product %in% pco2_product_list)
  ) %>%
  mutate(`Anomaly offset` = resid - resid_mean) %>% 
  select(name, lon, lat, product, `Anomaly offset`)

pco2_product_map_annual_anomaly_ensemble_baseline <-
  pco2_product_map_annual_anomaly %>% 
  filter(year == 2023,
         product %in% pco2_product_list) %>%
  group_by(name, lon, lat) %>%
  summarize(
    fit_mean = mean(fit),
    n = n()
  ) %>%
  ungroup() %>%
  filter(n == length(pco2_product_list)) %>% 
  select(-n)

pco2_product_map_annual_anomaly_ensemble_baseline <-
left_join(
    pco2_product_map_annual_anomaly_ensemble_baseline,
    pco2_product_map_annual_anomaly %>% 
      filter(year == 2023,
             product %in% pco2_product_list)
  ) %>%
  mutate(`Baseline offset` = fit - fit_mean) %>% 
  select(name, lon, lat, product, `Baseline offset`)

full_join(
  pco2_product_map_annual_anomaly_ensemble_offset,
  pco2_product_map_annual_anomaly_ensemble_baseline
) %>%
  pivot_longer(contains("offset"),
               names_to = "offset") %>% 
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ map +
      geom_tile(data = .x,
                aes(lon, lat, fill = value)) +
      labs(title =  paste(2023, "offset from ensemble mean")) +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        name = labels_breaks(.x %>% distinct(name))$i_legend_title,
        limits = c(quantile(.x$value, .01), quantile(.x$value, .99)),
        oob = squish
      ) +
      facet_grid(product ~ offset) +
      guides(
        fill = guide_colorbar(
          barheight = unit(0.3, "cm"),
          barwidth = unit(6, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(legend.title = element_markdown(), legend.position = "top")
  )

rm(pco2_product_map_annual_anomaly_ensemble_offset,
   pco2_product_map_annual_anomaly_ensemble_baseline)

gc()
pco2_product_map_annual_anomaly_ensemble_gobm <-
  pco2_product_map_annual_anomaly %>% 
  filter(year == 2023,
         product %in% gobm_product_list) %>%
  group_by(name, lon, lat) %>%
  summarize(
    resid_sd = sd(resid),
    resid_range = max(resid) - min(resid),
    resid_mean = mean(resid),
    n = n()
  ) %>%
  ungroup() %>%
  filter(n == length(gobm_product_list)) %>% 
  select(-n)


plot_list <- 
pco2_product_map_annual_anomaly_ensemble_gobm %>%
  filter(name %in% c(
           "fgco2",
           "dfco2",
           "kw_sol",
           "temperature",
           "salinity",
           "sdissic",
           "stalk",
           "sdissic_stalk",
           "no3",
           "mld",
           "intpp",
           "chl"
         )) %>%
  group_split(name) %>% 
  # head(1) %>%
  map(
    ~ p_map_mdim_robinson(
      df = .x,
      var = "resid_mean",
      legend_title = labels_breaks(.x %>% distinct(name))$i_legend_title,
      breaks = labels_breaks(.x %>% distinct(name))$i_breaks
    )
  )


ggsave(plot = wrap_plots(plot_list,
                         ncol = 2,
                         byrow = FALSE),
       width = 10,
       height = 16,
       filename = "../output/map_anomaly_ensemble_mean_gobm.jpg")

rm(plot_list,
   pco2_product_map_annual_anomaly_ensemble_gobm)

gc()
            used   (Mb) gc trigger   (Mb)  max used   (Mb)
Ncells   3170277  169.4    7684335  410.4   7684335  410.4
Vcells 294073444 2243.7  604131921 4609.2 604131921 4609.2

Bivariate anomaly

bivariate_map <-
  pco2_product_map_annual_anomaly %>%
  filter(year == 2023, name %in% c("fgco2", "temperature")) %>%
  select(product, name, lon, lat, resid) %>%
  pivot_wider(names_from = name, values_from = resid) %>%
  drop_na()

dim_set <- 3


bivariate_map <-
  bivariate_map %>%
  mutate(
    temperature = cut(
      temperature,
      breaks = c(
        min(bivariate_map$temperature),
        0,
        0.3,
        max(bivariate_map$temperature)
      ),
      include.lowest = TRUE
    ),
    fgco2 = cut(
      fgco2,
      breaks = c(
        min(bivariate_map$fgco2),
        0,
        0.1,
        max(bivariate_map$fgco2)
      ),
      include.lowest = TRUE
    )
  )


bivariate_map <-
  bi_class(
    bivariate_map,
    x = temperature,
    y = fgco2,
    dim = dim_set,
    style = "quantile"
  )

bi_breaks <-
  bi_class_breaks(
    bivariate_map,
    x = temperature,
    y = fgco2,
    dim = dim_set,
    style = "quantile",
    dig_lab = 1,
    split = TRUE
  )

bivariate_map_raster <-
bivariate_map %>%
    relocate(lon, lat) %>%
    select(lon, lat, product, bi_class) %>%
    mutate(bi_class_numeric = as.character(as.numeric(as.factor(bi_class))))


bivariate_map_raster_values <- 
bivariate_map_raster %>% 
  distinct(bi_class, bi_class_numeric)

bivariate_map_raster <- rast(
  bivariate_map_raster %>%
    select(-bi_class) %>% 
    pivot_wider(names_from = product,
                values_from = bi_class_numeric),
    crs = "+proj=longlat"
)


bivariate_map_raster <- project(bivariate_map_raster, target_crs, method = "near")

bivariate_map_tibble <- bivariate_map_raster %>%
  as.data.frame(xy = TRUE, na.rm = FALSE) %>%
  as_tibble() %>%
  rename(lon = x, lat = y) %>%
  pivot_longer(-c(lon, lat),
               names_to = "product",
               values_to = "bi_class_numeric") %>% 
  drop_na()

bivariate_map_tibble <-
  right_join(
    bivariate_map_tibble,
    bivariate_map_raster_values %>%
      mutate(bi_class_numeric = as.numeric(bi_class_numeric))
  )


ggplot() +
  geom_raster(data = bivariate_map_tibble,
            aes(x = lon, y = lat, fill = bi_class)) +
  bi_scale_fill(pal = "DkBlue2", dim = dim_set, flip_axes = TRUE) +
  geom_sf(data = worldmap_trans, fill = "grey90", col = "grey90") +
  geom_sf(data = coastline_trans, linewidth = 0.3) +
  geom_sf(data = bbox_graticules_trans, linewidth = 0.5) +
  coord_sf(
    crs = target_crs,
    ylim = lat_lim,
    xlim = lon_lim,
    expand = FALSE
  ) +
  theme(
    axis.title = element_blank(),
    axis.text = element_blank(),
    axis.ticks = element_blank(),
    panel.border = element_rect(colour = "transparent"),
    strip.background = element_blank(),
    legend.position = "none"
  ) +
  facet_wrap( ~ product, ncol = 2)

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
4acb1fc jens-daniel-mueller 2024-09-05
c50054d jens-daniel-mueller 2024-08-29
681629f jens-daniel-mueller 2024-08-26
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
67956dd jens-daniel-mueller 2024-07-08
8cdfed7 jens-daniel-mueller 2024-06-21
478e699 jens-daniel-mueller 2024-06-14
bf01e6c jens-daniel-mueller 2024-05-31
b754e95 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
960912c jens-daniel-mueller 2024-05-16
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
1ff6eb0 jens-daniel-mueller 2024-04-22
6709afa jens-daniel-mueller 2024-04-12
ggsave(
  width = 6,
  height = 5,
  dpi = 600,
  filename = "../output/map_anomaly_bivariate_all_products.jpg"
)


bi_breaks$bi_x <- bi_breaks$bi_x[-1]
bi_breaks$bi_x[1] <- paste0("-", bi_breaks$bi_x[1])

bi_breaks$bi_y <- bi_breaks$bi_y[-1]
bi_breaks$bi_y[1] <- paste0("-", bi_breaks$bi_y[1])


bi_legend(
  pal = "DkBlue2",
  xlab = labels_breaks("temperature")$i_legend_title,
  ylab = labels_breaks("fgco2")$i_legend_title,
  dim = dim_set,
  pad_width = 2,
  breaks = bi_breaks,
  arrows = FALSE,
  flip_axes = TRUE
) +
  theme(
    axis.title.x = element_markdown(),
    axis.title.y = element_markdown(),
    axis.ticks = element_blank(),
    axis.text = element_text(size = 10)
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
4acb1fc jens-daniel-mueller 2024-09-05
c50054d jens-daniel-mueller 2024-08-29
681629f jens-daniel-mueller 2024-08-26
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
ba4aaac jens-daniel-mueller 2024-07-08
8cdfed7 jens-daniel-mueller 2024-06-21
478e699 jens-daniel-mueller 2024-06-14
bf01e6c jens-daniel-mueller 2024-05-31
b754e95 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
960912c jens-daniel-mueller 2024-05-16
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
6709afa jens-daniel-mueller 2024-04-12
ggsave(
  width = 4,
  height = 3,
  dpi = 600,
  filename = "../output/map_anomaly_bivariate_all_products_legend.jpg"
)
bivariate_map <- 
pco2_product_map_annual_anomaly_ensemble %>%
  filter(name %in% c("fgco2", "temperature")) %>%
  select(name, lon, lat, resid_mean) %>% 
  pivot_wider(names_from = name,
              values_from = resid_mean) %>% 
  drop_na()


dim_set <- 3

bivariate_map <-
  bivariate_map %>%
  mutate(
    temperature = cut(
      temperature,
      breaks = c(
        min(bivariate_map$temperature),
        0,
        0.3,
        max(bivariate_map$temperature)
      ),
      include.lowest = TRUE
    ),
    fgco2 = cut(
      fgco2,
      breaks = c(
        max(bivariate_map$fgco2),
        0.1,
        0,
        min(bivariate_map$fgco2)
      ),
      include.lowest = TRUE
    )
  )

bivariate_map <-
  bi_class(
    bivariate_map,
    x = temperature,
    y = fgco2,
    dim = dim_set,
    style = "quantile"
  )

bi_breaks <-
  bi_class_breaks(
    bivariate_map,
    x = temperature,
    y = fgco2,
    dim = dim_set,
    style = "quantile",
    dig_lab = 1,
    split = TRUE
  )

bivariate_map_raster <-
bivariate_map %>%
    relocate(lon, lat) %>%
    select(lon, lat, bi_class) %>%
    mutate(bi_class_numeric = as.character(as.numeric(as.factor(bi_class))))


bivariate_map_raster_values <- 
bivariate_map_raster %>% 
  distinct(bi_class, bi_class_numeric)

bivariate_map_raster <- rast(
  bivariate_map_raster %>%
    select(-bi_class),
    crs = "+proj=longlat"
)


bivariate_map_raster <- project(bivariate_map_raster, target_crs, method = "near")

bivariate_map_tibble <- bivariate_map_raster %>%
  as.data.frame(xy = TRUE, na.rm = FALSE) %>%
  as_tibble() %>%
  rename(lon = x, lat = y) %>%
  drop_na()

bivariate_map_tibble <-
  right_join(
    bivariate_map_tibble,
    bivariate_map_raster_values %>%
      mutate(bi_class_numeric = as.numeric(bi_class_numeric))
  )


ggplot() +
  geom_raster(data = bivariate_map_tibble,
            aes(x = lon, y = lat, fill = bi_class)) +
  bi_scale_fill(pal = "DkBlue2", dim = dim_set, flip_axes = TRUE) +
  geom_sf(data = worldmap_trans, fill = "grey90", col = "grey90") +
  geom_sf(data = coastline_trans, linewidth = 0.3) +
  geom_sf(data = bbox_graticules_trans, linewidth = 0.5) +
  coord_sf(
    crs = target_crs,
    ylim = lat_lim,
    xlim = lon_lim,
    expand = FALSE
  ) +
  theme(
    axis.title = element_blank(),
    axis.text = element_blank(),
    axis.ticks = element_blank(),
    panel.border = element_rect(colour = "transparent"),
    strip.background = element_blank(),
    legend.position = "none"
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
681629f jens-daniel-mueller 2024-08-26
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
478e699 jens-daniel-mueller 2024-06-14
ggsave(width = 5,
       height = 2.5,
       dpi = 600,
       filename = "../output/map_anomaly_bivariate_ensemble_mean_pco2_products.jpg")

bi_breaks$bi_x <- bi_breaks$bi_x[-1]
bi_breaks$bi_x[1] <- paste0("-", bi_breaks$bi_x[1])

bi_breaks$bi_y <- bi_breaks$bi_y[-1]
bi_breaks$bi_y[1] <- paste0("-", bi_breaks$bi_y[1])


bi_legend(
  pal = "DkBlue2",
  xlab = labels_breaks("temperature")$i_legend_title,
  ylab = labels_breaks("fgco2")$i_legend_title,
  dim = dim_set,
  pad_width = 2,
  breaks = bi_breaks,
  arrows = FALSE,
  flip_axes = TRUE
) +
  theme(
    axis.title.x = element_markdown(),
    axis.title.y = element_markdown(),
    axis.ticks = element_blank(),
    axis.text = element_text(size = 10)
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
4acb1fc jens-daniel-mueller 2024-09-05
c50054d jens-daniel-mueller 2024-08-29
681629f jens-daniel-mueller 2024-08-26
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
ba4aaac jens-daniel-mueller 2024-07-08
aeca619 jens-daniel-mueller 2024-06-19
478e699 jens-daniel-mueller 2024-06-14
ggsave(width = 4,
       height = 3,
       dpi = 600,
       filename = "../output/map_anomaly_bivariate_ensemble_mean_pco2_products_legend.jpg")
pco2_product_zonal_annual_anomaly <-
pco2_product_hovmoeller_monthly_anomaly %>%
  filter(year == 2023) %>%
  group_by(product, name, lat) %>%
  summarise(resid = mean(resid)) %>%
  ungroup() 


pco2_product_zonal_annual_anomaly %>%
  ggplot(aes(resid, lat, col = product)) +
  geom_vline(xintercept = 0) +
  geom_hline(yintercept = 0) +
  geom_path() +
  scale_color_manual(values = color_products) +
  facet_wrap( ~ name, scales = "free_x", ncol = 4)

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
3bb8433 jens-daniel-mueller 2024-09-03
pco2_product_zonal_annual_anomaly_ensemble <- 
pco2_product_zonal_annual_anomaly %>%
  filter(product %in% pco2_product_list) %>% 
  group_by(lat, name) %>% 
  fsummarise(
    resid_sd = fsd(resid),
    resid_mean = fmean(resid)
  )

pco2_product_zonal_annual_anomaly_ensemble %>%
  filter(name %in% c("fgco2_hov", "temperature")) %>%
  ggplot(aes(resid_mean, lat)) +
  geom_vline(xintercept = 0) +
  geom_hline(yintercept = 0) +
  # geom_ribbon(aes(xmin = resid_mean - resid_sd, xmax = resid_mean + resid_sd),
  #             alpha = 0.5) +
  geom_ribbon(aes(xmin = 0, xmax = pmax(0, resid_mean), fill = "Positive"),
              alpha = 0.5) +
  geom_ribbon(aes(xmax = 0, xmin = pmin(0, resid_mean), fill = "Negative"),
              alpha = 0.5) +
  scale_fill_manual(values = c(cold_color, warm_color)) +
  geom_path() +
  facet_grid(. ~ name,
             labeller = labeller(name = x_axis_labels),
             scales = "free_x",
             switch = "x") +
  scale_y_continuous(breaks = seq(-60,60,30),
                     name = "Lat (°N)",
                     limits = c(-54,76),
                     expand = c(0,0)) +
  theme(
    strip.text.x.bottom = element_markdown(),
    strip.placement = "outside",
    strip.background.x = element_blank(),
    axis.title.x = element_blank(),
    legend.position = "none"
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
3bb8433 jens-daniel-mueller 2024-09-03
bi_pal("DkBlue2", preview = FALSE)
      1-1       2-1       3-1       1-2       2-2       3-2       1-3       2-3 
"#d3d3d3" "#97c5c5" "#52b6b6" "#c098b9" "#898ead" "#4a839f" "#ad5b9c" "#7c5592" 
      3-3 
"#434e87" 
# "#d3d3d3" "#97c5c5" "#52b6b6" "#c098b9" "#898ead" "#4a839f" "#ad5b9c" "#7c5592" "#434e87"

p_zonal_fgco2 <- 
pco2_product_zonal_annual_anomaly_ensemble %>%
  filter(name %in% c("fgco2_hov")) %>%
  mutate(resid_mean = resid_mean * 1000) %>% 
  ggplot(aes(resid_mean, lat)) +
  geom_vline(xintercept = 0) +
  geom_ribbon(aes(xmin = 0, xmax = pmax(0, resid_mean), fill = "Positive"),
              alpha = 0.9) +
  geom_ribbon(aes(xmax = 0, xmin = pmin(0, resid_mean), fill = "Negative"),
              alpha = 0.9) +
  scale_fill_manual(values = c("#d3d3d3", "#52b6b6")) +
  geom_path() +
  scale_y_continuous(breaks = seq(-60,60,30),
                     name = "Lat (°N)",
                     limits = c(-54,76),
                     expand = c(0,0)) +
  scale_x_continuous(breaks = seq(-5,5,5),
                     name = str_replace(
                       labels_breaks("fgco2_hov")$i_legend_title,
                     "PgC", "TgC"
                     )) +
  theme_classic() +
  theme(
    legend.position = "none",
    axis.title.x = element_markdown(),
    axis.text.y = element_blank(),
    axis.ticks.y = element_blank(),
    axis.title.y = element_blank(),
    axis.line.y = element_blank()
  )


p_zonal_temperature <- 
pco2_product_zonal_annual_anomaly_ensemble %>%
  filter(name %in% c("temperature")) %>%
  ggplot(aes(resid_mean, lat)) +
  geom_vline(xintercept = 0) +
  geom_ribbon(aes(xmin = 0, xmax = pmax(0, resid_mean), fill = "Positive"),
              alpha = 0.9) +
  geom_ribbon(aes(xmax = 0, xmin = pmin(0, resid_mean), fill = "Negative"),
              alpha = 0.9) +
  scale_fill_manual(values = c("#d3d3d3", "#ad5b9c")) +
  geom_path() +
  scale_y_continuous(breaks = seq(-60,60,30),
                     name = "Lat (°N)",
                     limits = c(-54,76),
                     expand = c(0,0)) +
  scale_x_continuous(breaks = seq(-0.6,0.6,0.3),
                     name = labels_breaks("temperature")$i_legend_title) +
  theme_classic() +
  theme(
    legend.position = "none",
    axis.title.x = element_markdown(),
    axis.title.y = element_text(angle = 0)
  )

p_zonal_temperature | p_zonal_fgco2

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
4acb1fc jens-daniel-mueller 2024-09-05
3bb8433 jens-daniel-mueller 2024-09-03
ggsave(width = 2.8,
       height = 4.5,
       filename = "../output/zonal_mean_anomaly_pco2_product_ensemble_mean.jpg")
pco2_product_map_annual_slope %>%
  p_map_mdim_robinson(
    var = "slope",
    legend_title = "Slope FCO<sub>2</sub> anom. / SST anom.<br>(mol m<sup>-2</sup> yr<sup>-1</sup> °C<sup>-1</sup>)",
    breaks = c(-Inf, seq(-1, 1, 0.25), Inf),
    dim_wrap = "product",
    n_col = 2
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
67956dd jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
8cdfed7 jens-daniel-mueller 2024-06-21
aeca619 jens-daniel-mueller 2024-06-19
ggsave(width = 7,
       height = 6,
       dpi = 600,
       filename = "../output/map_anomaly_correlation_all_products.jpg")


pco2_product_map_annual_slope_predict <-
  inner_join(
    pco2_product_map_annual_slope,
    pco2_product_map_annual_anomaly %>%
      filter(name %in% c("temperature", "fgco2")) %>% 
      select(lon, lat, product, name, resid) %>% 
      pivot_wider(values_from = "resid")
  )


pco2_product_map_annual_slope_predict <-
  pco2_product_map_annual_slope_predict %>%
  mutate(fgco2_predict = slope * temperature)

pco2_product_map_annual_slope_predict %>%
  select(-c(temperature, slope)) %>%
  pivot_longer(starts_with("fgco2"), values_to = "resid") %>%
  p_map_mdim_robinson(
    var = "resid",
    legend_title = labels_breaks("fgco2")$i_legend_title,
    breaks = labels_breaks("fgco2")$i_breaks,
    dim_row = "product",
    dim_col = "name"
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
4a437fb jens-daniel-mueller 2024-07-09
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
# pco2_product_map_annual_slope_ensemble <-
#   pco2_product_map_annual_slope %>% 
#   filter(product %in% pco2_product_list) %>%
#   fgroup_by(lon, lat) %>%
#   fsummarise(
#     slope_sd = fsd(slope),
#     slope_mean = fmean(slope),
#     n = fnobs(slope)
#   ) %>%
#   filter(n == length(pco2_product_list)) %>% 
#   select(-n)
# 
# pco2_product_map_annual_slope_ensemble_coarse <-
#   m_grid_horizontal_coarse(pco2_product_map_annual_slope_ensemble) %>%
#   fgroup_by(lon_grid, lat_grid) %>%
#   fsummarise(
#     slope_sd_coarse = fmean(slope_sd, na.rm = TRUE),
#     slope_mean_coarse = fmean(slope_mean, na.rm = TRUE)
#   ) %>% 
#   rename(lon = lon_grid, lat = lat_grid)
# 
# pco2_product_map_annual_slope_ensemble <-
#   left_join(
#     pco2_product_map_annual_slope_ensemble,
#     pco2_product_map_annual_slope_ensemble_coarse
#   )
# 
# 
# map +
#   geom_tile(data = pco2_product_map_annual_slope_ensemble, 
#             aes(lon, lat, fill = slope_mean)) +
#   geom_point(
#     data = pco2_product_map_annual_slope_ensemble %>%
#       filter(abs(slope_mean_coarse) < slope_sd_coarse),
#     aes(lon, lat, shape = "Ensemble mean\n< StDev"),
#     col = "grey80",
#     size = 1
#   )+
#   scale_fill_gradientn(
#     colours = warm_cool_gradient,
#     rescaler = ~ scales::rescale_mid(.x, mid = 0),
#     limits = c(
#       quantile(pco2_product_map_annual_slope$slope,.01),
#       quantile(pco2_product_map_annual_slope$slope, .99)),
#     oob = squish,
#     name = paste0("Slope<br><br>",
#                   labels_breaks("fgco2"),
#                   " / <br><br>",
#                   labels_breaks("temperature"))
#   ) +
#   scale_shape(name = "") +
#   labs(title = "Correlation of historic annual flux and SST anomalies", 
#        subtitle = "fCO2 product ensemble mean") +
#   guides(
#     fill = guide_colorbar(
#       barheight = unit(0.3, "cm"),
#       barwidth = unit(6, "cm"),
#       ticks = TRUE,
#       ticks.colour = "grey20",
#       frame.colour = "grey20",
#       label.position = "top",
#       direction = "horizontal"
#     )
#   ) +
#   theme(legend.title = element_markdown(), 
#         legend.position = "top")

Monthly means

2023 anomaly

pco2_product_map_monthly_anomaly <-
  inner_join(
    biome_mask_print,
    pco2_product_map_monthly_anomaly
  )
pco2_product_map_monthly_anomaly %>%
  filter(name %in% name_core,
         year == 2023) %>%
  group_split(name) %>%
  head(1) %>%
  map(
    ~ map +
      geom_tile(data = .x,
                aes(lon, lat, fill = resid)) +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        name = labels_breaks(.x %>% distinct(name))$i_legend_title,
        limits = c(quantile(.x$resid, .01), quantile(.x$resid, .99)),
        oob = squish
      ) +
      theme(legend.title = element_markdown()) +
      facet_grid(month ~ product) +
      guides(
        fill = guide_colorbar(
          barheight = unit(0.3, "cm"),
          barwidth = unit(6, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(legend.title = element_markdown(),
            legend.position = "top")
  )
pco2_product_map_monthly_anomaly_ensemble <-
  pco2_product_map_monthly_anomaly %>%
  filter(year == 2023,
         product %in% pco2_product_list) %>%
  fgroup_by(name, lon, lat, month) %>%
  fsummarise(
    resid_sd = fsd(resid),
    resid_mean = fmean(resid),
    n = fnobs(resid)
  ) %>%
  filter(n == length(pco2_product_list)) %>%
  select(-n)

pco2_product_map_monthly_anomaly_ensemble_coarse <-
  m_grid_horizontal_coarse(pco2_product_map_monthly_anomaly_ensemble) %>%
  fgroup_by(name, month, lon_grid, lat_grid) %>%
  fsummarise(resid_sd_coarse = fmean(resid_sd, na.rm = TRUE),
             resid_mean_coarse = fmean(resid_mean, na.rm = TRUE)) %>%
  rename(lon = lon_grid, lat = lat_grid)

pco2_product_map_monthly_anomaly_ensemble <-
  left_join(
    pco2_product_map_monthly_anomaly_ensemble,
    pco2_product_map_monthly_anomaly_ensemble_coarse
  )


pco2_product_map_monthly_anomaly_ensemble %>%
  filter(name %in% name_core) %>%
  mutate(month = as.character(month),
         month = fct_inorder(month)) %>% 
  group_split(name) %>%
  head(1) %>%
  map(
    ~ p_map_mdim_robinson(
      df = .x,
      var = "resid_mean",
      dim_wrap = "month",
      legend_title = labels_breaks(.x %>% distinct(name))$i_legend_title,
      breaks = labels_breaks(.x %>% distinct(name))$i_breaks
    )
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
rm(
  pco2_product_map_monthly_anomaly_ensemble,
  pco2_product_map_monthly_anomaly_ensemble_coarse
)

gc()
            used   (Mb) gc trigger   (Mb)  max used   (Mb)
Ncells   3237462  172.9    7684335  410.4   7684335  410.4
Vcells 271819009 2073.9  604131921 4609.2 604131921 4609.2

fCO2 decomposition

pco2_product_map_monthly_fCO2_decomposition <-
  inner_join(pco2_product_map_monthly_fCO2_decomposition,
             biome_mask_print)
pco2_product_map_monthly_fCO2_decomposition %>%
  filter(year == 2023) %>% 
  group_split(product) %>%
  # head(1) %>%
  map(
    ~ map +
      geom_tile(data = .x,
                aes(lon, lat, fill = resid)) +
      labs(title = .x$product) +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        name = labels_breaks("sfco2"),
        limits = c(quantile(.x$resid, .01), quantile(.x$resid, .99)),
        oob = squish
      ) +
      facet_grid(month ~ name,
                 labeller = labeller(name = x_axis_labels)) +
      guides(
        fill = guide_colorbar(
          barheight = unit(0.3, "cm"),
          barwidth = unit(6, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(legend.title = element_markdown(),
            legend.position = "top")
  )

pco2_product_map_monthly_fCO2_decomposition %>%
  filter(year == 2023,
         product %in% pco2_product_list) %>%
  group_by(name, lon, lat, month) %>%
  summarize(
    resid_sd = sd(resid),
    resid_mean = mean(resid),
    n = n()
  ) %>%
  ungroup() %>%
  filter(n == length(pco2_product_list)) %>% 
  select(-n) %>% 
  mutate(product = "Ensemble mean") %>% 
  group_split(product) %>%
  # head(1) %>%
  map(
    ~ map +
      geom_tile(data = .x,
                aes(lon, lat, fill = resid_mean)) +
      # geom_point(
      #   data = .x %>% filter(abs(resid_mean) < resid_sd),
      #   aes(lon, lat, shape = "Ensemble mean\n< StDev"),
      #   col = "grey"
      # ) +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        name = labels_breaks("sfco2"),,
        limits = c(quantile(.x$resid_mean, .01), quantile(.x$resid_mean, .99)),
        oob = squish
      ) +
      scale_shape_manual(values = 46, name = "") +
      facet_grid(month ~ name,
                 labeller = labeller(name = x_axis_labels)) +
      guides(
        fill = guide_colorbar(
          barheight = unit(0.3, "cm"),
          barwidth = unit(6, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(legend.title = element_markdown(),
            legend.position = "top")
  )
pco2_product_map_annual_fCO2_decomposition <-
  pco2_product_map_monthly_fCO2_decomposition %>% 
  select(product, year, lat, lon, name, resid) %>% 
  fgroup_by(product, year, lat, lon, name) %>% 
  fmean()

gc()
            used   (Mb) gc trigger   (Mb)  max used   (Mb)
Ncells   3209204  171.4    7684335  410.4   7684335  410.4
Vcells 246421485 1880.1  604131921 4609.2 604131921 4609.2
pco2_product_map_annual_fCO2_decomposition %>%
  filter(year == 2023) %>%
  select(-year) %>% 
  relocate(lon, lat) %>% 
  # mutate(name = str_remove(name, "sfco2_")) %>%
  p_map_mdim_robinson(
    var = "resid",
    dim_col = "name",
    dim_row = "product",
    legend_title = labels_breaks("sfco2")$i_legend_title,
    breaks = 2 * (labels_breaks("sfco2")$i_breaks),
    n_labels = 2
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
d3235fa jens-daniel-mueller 2024-09-20
681629f jens-daniel-mueller 2024-08-26
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
bf01e6c jens-daniel-mueller 2024-05-31
b754e95 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
a29d870 jens-daniel-mueller 2024-05-16
pco2_product_map_annual_fCO2_decomposition_ensemble <-
  pco2_product_map_annual_fCO2_decomposition %>%
  filter(product %in% pco2_product_list, year == 2023) %>%
  group_by(name, lon, lat) %>%
  summarize(resid_sd = sd(resid),
            resid_mean = mean(resid),
            n = n()) %>%
  ungroup() %>%
  filter(n == length(pco2_product_list)) %>%
  select(-n)


pco2_product_map_annual_fCO2_decomposition_ensemble_coarse <-
  m_grid_horizontal_coarse(pco2_product_map_annual_fCO2_decomposition_ensemble) %>%
  fgroup_by(name, lon_grid, lat_grid) %>%
  fsummarise(resid_sd_coarse = fmean(resid_sd, na.rm = TRUE),
             resid_mean_coarse = fmean(resid_mean, na.rm = TRUE)) %>%
  rename(lon = lon_grid, lat = lat_grid)



pco2_product_map_annual_fCO2_decomposition_ensemble_uncertainty <-
  pco2_product_map_annual_fCO2_decomposition_ensemble_coarse %>%
  mutate(signif_single = if_else(abs(resid_mean_coarse) < resid_sd_coarse, 0, 1)) %>% 
  select(lon, lat, name, signif_single) %>% 
  st_as_sf(coords = c("lon", "lat"), crs = "+proj=longlat")


pco2_product_map_annual_fCO2_decomposition_ensemble %>%
  select(lon, lat, name, resid_mean) %>% 
  mutate(name = fct_relevel(name,
                            c("sfco2_therm", "sfco2_nontherm"))) %>% 
  p_map_mdim_robinson(
    df_uncertainty = pco2_product_map_annual_fCO2_decomposition_ensemble_uncertainty,
    var = "resid_mean",
    legend_title = labels_breaks("sfco2")$i_legend_title,
    breaks = 2*(labels_breaks("sfco2")$i_breaks),
    dim_wrap = "name",
    n_col = 1,
    n_labels = 2
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
d3235fa jens-daniel-mueller 2024-09-20
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4a437fb jens-daniel-mueller 2024-07-09
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
8cdfed7 jens-daniel-mueller 2024-06-21
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
bf01e6c jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
1eefab2 jens-daniel-mueller 2024-05-21
a29d870 jens-daniel-mueller 2024-05-16
ggsave(width = 5,
       height = 7,
       dpi = 600,
       filename = "../output/map_anomaly_fco2_decomposition_ensemble_mean_pco2_products.jpg")

Flux attribution

pco2_product_map_monthly_flux_attribution <-
  inner_join(pco2_product_map_monthly_flux_attribution, biome_mask_print)
# pco2_product_map_monthly_flux_attribution <-
#   flux_attribution(pco2_product_map_monthly_anomaly,
#                    year, month, lon, lat)

pco2_product_map_monthly_flux_attribution %>%
  filter(year == 2023) %>% 
  drop_na() %>% 
  group_split(product) %>%
  # head(1) %>%
  map(
    ~ map +
      geom_tile(data = .x,
                aes(lon, lat, fill = resid)) +
      labs(subtitle = .x$product) +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        name = labels_breaks("fgco2"),
        limits = c(quantile(.x$resid, .01), quantile(.x$resid, .99)),
        oob = squish
      ) +
      theme(legend.title = element_markdown(), 
            legend.position = "bottom") +
      facet_grid(month ~ name,
                 labeller = labeller(name = x_axis_labels)) +
      guides(
        fill = guide_colorbar(
          barheight = unit(0.3, "cm"),
          barwidth = unit(6, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(legend.title = element_markdown(),
            legend.position = "top",
            strip.text.x.top = element_markdown())
  )



pco2_product_map_monthly_flux_attribution %>%
  filter(year == 2023) %>% 
  drop_na() %>% 
  filter(product %in% pco2_product_list) %>%
  group_by(name, lon, lat, month) %>%
  summarize(
    resid_sd = sd(resid),
    resid_mean = mean(resid),
    n = n()
  ) %>%
  ungroup() %>%
  filter(n == length(pco2_product_list)) %>% 
  select(-n) %>% 
  mutate(product = "Ensemble mean") %>% 
  drop_na() %>% 
  group_split(product) %>%
  # head(1) %>%
  map(
    ~ map +
      geom_tile(data = .x,
                aes(lon, lat, fill = resid_mean)) +
      # geom_point(data = .x %>% filter(abs(resid_mean) < resid_sd),
      #            aes(lon, lat, shape = "Ensemble mean\n< StDev"))+
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        name = labels_breaks("fgco2"),
        limits = c(quantile(.x$resid_mean, .01), quantile(.x$resid_mean, .99)),
        oob = squish
      )+
      scale_shape_manual(values = 46, name = "") +
      theme(legend.title = element_markdown(),
            legend.position = "bottom") +
      facet_grid(month ~ name,
                 labeller = labeller(name = x_axis_labels)) +
      guides(
        fill = guide_colorbar(
          barheight = unit(0.3, "cm"),
          barwidth = unit(6, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(
        legend.title = element_markdown(),
        legend.position = "top",
        strip.text.x.top = element_markdown()
      )
  )
pco2_product_map_annual_flux_attribution <-
  pco2_product_map_monthly_flux_attribution %>% 
  group_by(product, year, lat, lon, name) %>% 
  summarise(resid = mean(resid, na.rm = TRUE)) %>% 
  ungroup()

pco2_product_map_annual_flux_attribution %>%
  filter(year == 2023) %>%
  select(-year) %>% 
  relocate(lon, lat) %>% 
  # mutate(name = str_remove_all(name, "_")) %>%
  p_map_mdim_robinson(
    var = "resid",
    dim_row = "product",
    dim_col = "name",
    legend_title = labels_breaks("fgco2")$i_legend_title,
    breaks = labels_breaks("fgco2")$i_breaks,
    n_labels = 2
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
681629f jens-daniel-mueller 2024-08-26
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
bf01e6c jens-daniel-mueller 2024-05-31
acaac5f jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16
pco2_product_map_annual_flux_attribution_ensemble <-
pco2_product_map_annual_flux_attribution %>%
  filter(year == 2023,
         product %in% pco2_product_list) %>%
  group_by(name, lon, lat) %>%
  summarize(
    resid_sd = sd(resid),
    resid_mean = mean(resid),
    n = n()
  ) %>%
  ungroup() %>%
  filter(n == length(pco2_product_list)) %>% 
  select(-n) %>% 
  drop_na()

pco2_product_map_annual_flux_attribution_ensemble_coarse <-
  m_grid_horizontal_coarse(pco2_product_map_annual_flux_attribution_ensemble) %>%
  fgroup_by(name, lon_grid, lat_grid) %>%
  fsummarise(resid_sd_coarse = fmean(resid_sd, na.rm = TRUE),
             resid_mean_coarse = fmean(resid_mean, na.rm = TRUE)) %>%
  rename(lon = lon_grid, lat = lat_grid)



pco2_product_map_annual_flux_attribution_ensemble_uncertainty <-
  pco2_product_map_annual_flux_attribution_ensemble_coarse %>%
  mutate(signif_single = if_else(abs(resid_mean_coarse) < resid_sd_coarse, 0, 1)) %>% 
  select(lon, lat, name, signif_single) %>% 
  st_as_sf(coords = c("lon", "lat"), crs = "+proj=longlat")


pco2_product_map_annual_flux_attribution_ensemble %>%
  select(lon, lat, name, resid_mean) %>% 
  p_map_mdim_robinson(
    df_uncertainty = pco2_product_map_annual_flux_attribution_ensemble_uncertainty,
    var = "resid_mean",
    legend_title = labels_breaks("fgco2")$i_legend_title,
    breaks = labels_breaks("fgco2")$i_breaks,
    dim_wrap = "name",
    n_col = 1,
    n_labels = 2
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
2f165ec jens-daniel-mueller 2024-07-23
4a437fb jens-daniel-mueller 2024-07-09
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
8cdfed7 jens-daniel-mueller 2024-06-21
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
bf01e6c jens-daniel-mueller 2024-05-31
acaac5f jens-daniel-mueller 2024-05-28
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
1eefab2 jens-daniel-mueller 2024-05-21
a29d870 jens-daniel-mueller 2024-05-16
dbc1fc6 jens-daniel-mueller 2024-05-16
ggsave(width = 5,
       height = 7,
       dpi = 600,
       filename = "../output/map_anomaly_flux_attribution_ensemble_mean_pco2_products.jpg")

Hovmoeller plots

The following Hovmoeller plots show the anomalies from the prediction of a linear/quadratic fit to the data from 1990 to 2022.

Hovmoeller plots are presented as monthly means. Note that the predictions for the monthly Hovmoeller plots are done individually for each month, such the mean seasonal anomaly from the annual mean is removed.

Monthly means

Anomalies

pco2_product_hovmoeller_monthly_anomaly %>%
  filter(name %in% name_core) %>%
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x,
             aes(decimal, lat, fill = resid)) +
      geom_raster() +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        name = labels_breaks(.x %>% distinct(name))$i_legend_title,
        limits = c(quantile(.x$resid,.01),quantile(.x$resid,.99)),
        oob = squish
      ) +
      theme(legend.title = element_markdown()) +
      coord_cartesian(expand = 0) +
      labs(title = "Monthly mean anomalies",
           y = "Latitude") +
      theme(axis.title.x = element_blank()) +
      facet_wrap(~ product, ncol = 1)
  )
pco2_product_hovmoeller_monthly_anomaly_ensemble <-
  pco2_product_hovmoeller_monthly_anomaly %>% 
  group_by(name, decimal, lat) %>%
  summarize(
    resid_range = max(resid) - min(resid),
    resid_mean = mean(resid),
    n = n()
  ) %>%
  ungroup() %>%
  filter(n > 1)
  

pco2_product_hovmoeller_monthly_anomaly_ensemble %>%
  mutate(product = "Ensemble mean") %>% 
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x,
             aes(decimal, lat, fill = resid_mean)) +
      geom_raster() +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        name = labels_breaks(.x %>% distinct(name))$i_legend_title,
        limits = c(quantile(.x$resid_mean, .01), quantile(.x$resid_mean, .99)),
        oob = squish
      ) +
      theme(legend.title = element_markdown()) +
      coord_cartesian(expand = 0) +
      labs(title = "Monthly mean anomalies",
           y = "Latitude") +
      theme(axis.title.x = element_blank()) +
      facet_wrap( ~ product, ncol = 1)
  )
left_join(
    pco2_product_hovmoeller_monthly_anomaly_ensemble,
    pco2_product_hovmoeller_monthly_anomaly
  ) %>%
  mutate(resid_offset = resid - resid_mean) %>% 
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x,
             aes(decimal, lat, fill = resid_offset)) +
      geom_raster() +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        name = labels_breaks(.x %>% distinct(name))$i_legend_title,
        limits = c(quantile(.x$resid_mean, .01), quantile(.x$resid_mean, .99)),
        oob = squish
      ) +
      theme(legend.title = element_markdown()) +
      coord_cartesian(expand = 0)+
      labs(title = "Monthly offset from ensemble mean anomalies",
           y = "Latitude") +
      theme(axis.title.x = element_blank()) +
      facet_wrap( ~ product, ncol = 1)
  )

Regional means and integrals

The following plots show biome-, super biome- or global- averaged/integrated values of each variable as provided through the fCO2 product, represented here as the anomalies from the prediction of a linear/quadratic fit to the data from 1990 to 2022.

Anomalies are presented relative to the predicted annual mean of each year, hence preserving the seasonality.

Annual anomalies

pco2_product_biome_annual_anomaly_ensemble <-
  pco2_product_biome_annual_anomaly %>%
  filter(product %in% pco2_product_list) %>%
  group_by(year, name, biome) %>%
  summarise(resid_sd = sd(resid),
            resid = mean(resid),
            value = mean(value),
            fit = mean(fit)) %>%
  ungroup()


lm_fgco2_sst <- pco2_product_biome_annual_anomaly %>%
  filter(
    name %in% c("fgco2_int", "temperature"),
    biome == "Global non-polar",
    year != 2023,
    product %in% pco2_product_list
  ) %>%
  select(year, product, name, resid) %>%
  pivot_wider(values_from = resid) %>%
  nest(data = -product) %>%
  mutate(fit = map(data, ~ flm(
    formula = fgco2_int ~ temperature, data = .x
  )))

lm_fgco2_sst <-
  left_join(
    lm_fgco2_sst %>%
      unnest_wider(fit) %>%
      select(product, intercept = `(Intercept)`, slope = temperature) %>%
      mutate(intercept = as.vector(intercept), slope = as.vector(slope)),
    pco2_product_biome_annual_anomaly %>%
      filter(
        name %in% c("temperature"),
        biome == "Global non-polar",
        year == 2023,
        product %in% pco2_product_list
      ) %>%
      select(product, name, resid) %>%
      pivot_wider(values_from = resid)
  ) %>%
  mutate(resid = intercept + temperature * slope)


lm_fgco2_sst
# A tibble: 4 × 5
  product       intercept  slope temperature   resid
  <fct>             <dbl>  <dbl>       <dbl>   <dbl>
1 CMEMS          1.05e-12 -0.557       0.166 -0.0927
2 fCO2-Residual  6.50e-13 -0.640       0.177 -0.114 
3 OceanSODAv2   -2.05e-13 -0.424       0.189 -0.0804
4 SOM-FFN        1.44e-13 -0.379       0.206 -0.0782
lm_fgco2_sst %>%
  mutate(across(c(slope, temperature, resid), ~ round(.x, 2)),
         across(c(intercept), ~ signif(.x, 2))) %>%
  write_csv("../output/lm_fgco2_sst.csv")

lm_fgco2_sst <-
lm_fgco2_sst %>% 
  summarise(resid_sd = sd(resid),
            resid_mean = mean(resid),
            temperature_sd = sd(temperature),
            temperature_mean = mean(temperature))



pco2_product_biome_annual_anomaly_ensemble_lm_fgco2_sst <-
  bind_cols(
    lm_fgco2_sst,
    pco2_product_biome_annual_anomaly_ensemble %>%
      filter(name %in% c("fgco2_int"), biome == "Global non-polar",
             year == 2023) %>%
      select(year, name, fit)
  ) %>%
  mutate(fgco2_predict = resid_mean + fit) %>%
  select(-fit)

nino_sst %>% 
  filter(year >= 1990) %>% 
  ggplot(aes(year + month/12, resid)) +
  geom_hline(yintercept = 0.5) +
  geom_path() +
  geom_path(data = . %>% 
              group_by(year) %>% 
              mutate(resid = mean(resid)) %>% 
              ungroup())

bind_rows(
  pco2_product_biome_annual_anomaly_ensemble,
  pco2_product_biome_annual_anomaly_ensemble %>%
    filter(year == max(year)) %>%
    mutate(year = year + 1) %>%
    select(-c(resid, resid_sd))
) %>%
  filter(name %in% c("fgco2_int", "temperature"), biome == "Global non-polar") %>%
  mutate(name = fct_rev(as.factor(name))) %>%
  ggplot() +
  geom_path(
    data = pco2_product_biome_monthly_anomaly %>%
      filter(
        product %in% pco2_product_list,
        name %in% c("fgco2_int", "temperature"),
        biome == "Global non-polar"
      ) %>%
      group_by(year, month, name, biome) %>%
      summarise(value = mean(value)) %>%
      ungroup(),
    aes(year + month / 12, value),
    col = "grey90"
  ) +

  geom_rect(
    data = pco2_product_biome_annual_anomaly_ensemble_lm_fgco2_sst %>%
      filter(year %in% c(2023)),
    aes(xmin = year, xmax = year + 1, ymin = fgco2_predict - resid_sd,
        ymax = fgco2_predict + resid_sd),
    fill = trend_color, col = trend_color
  ) +
  geom_text(
    data = pco2_product_biome_annual_anomaly_ensemble_lm_fgco2_sst %>%
      filter(year %in% c(2023)),
    aes(x = year + 1, y = fgco2_predict - 0.2, label = "Expected 2023 anomaly"),
    hjust = 1,
    fontface = "bold",
    col = trend_color
  ) +
  geom_text(
    data = . %>%
      filter(year == 1991, name == "temperature"),
    aes(x = year, y = 21.95, label = "Warm"),
    hjust = 0,
    fontface = "bold",
    col = warm_color
  ) +
  geom_text(
    data = . %>%
      filter(year == 1991, name == "temperature"),
    aes(x = year, y = 21.45, label = "Cold"),
    hjust = 0,
    fontface = "bold",
    col = cold_color
  ) +
  geom_text(
    data = . %>%
      filter(year == 1991, name == "fgco2_int"),
    aes(x = year, y = -0.85, label = "Weak carbon sink"),
    hjust = 0,
    fontface = "bold",
    col = warm_color
  ) +
  geom_text(
    data = . %>%
      filter(year == 1991, name == "fgco2_int"),
    aes(x = year, y = -2.1, label = "Strong carbon sink"),
    hjust = 0,
    fontface = "bold",
    col = cold_color
  ) +
  geom_text(
    data = . %>%
      filter(year %in% c(1997, 2015, 2023), name == "fgco2_int"),
    aes(
      x = year + 0.5,
      y = -2.6,
      label = "EN"
    ), size = 3, fontface = "italic", col = "grey20") +
  geom_text(
    data = . %>%
      filter(year %in% c(1997, 2015, 2023), name == "temperature"),
    aes(
      x = year + 0.5,
      y = 21.45,
      label = "EN"
    ), size = 3, fontface = "italic", col = "grey20") +
  geom_rect(
    data = . %>% filter(year != max(year)),
    aes(
      xmin = year,
      xmax = year + 1,
      ymin = fit,
      ymax = value,
      fill = as.factor(sign(-resid))
    ),
    alpha = 0.7
  ) +
  geom_step(aes(year, fit, col = "Baseline")) +
  geom_step(aes(year, value, col = "Observed")) +
  geom_linerange(aes(
    x = year + 0.5,
    ymin = value - resid_sd,
    ymax = value + resid_sd,
    linetype = "Product SD"
  )) +
  scale_color_manual(values = c("grey40", "grey10"), name = "Annual means") +
  scale_fill_manual(
    values = c(warm_color, cold_color),
    labels = c("positive", "negative"),
    name = "Anomalies"
  ) +
  scale_linetype(name = "Anomaly uncertainty") +
  guides(
    color = guide_legend(order = 1),
    fill = guide_legend(order = 2),
    linetype = guide_legend(order = 3)
  ) +
  scale_x_continuous(limits = c(1989.5, 2024.8), expand = c(0, 0)) +
  facet_wrap(
    . ~ name,
    scales = "free_y",
    strip.position = "left",
    labeller = labeller(name = x_axis_labels_abs)
    # switch = "y"
  )+
  labs(x = "Year") +
  theme(
    axis.title.y = element_blank(),
    axis.title.x = element_blank(),
    strip.text.y.left = element_markdown(),
    strip.placement = "outside",
    strip.background.y = element_blank(),
    legend.position = "none",
    legend.direction = "vertical"
  )

ggsave(width = 10,
       height = 2,
       dpi = 600,
       filename = "../output/timeseries_ensemble_mean_pco2_products.jpg")

bind_rows(
  pco2_product_biome_annual_anomaly,
  pco2_product_biome_annual_anomaly %>%
    filter(year == max(year)) %>%
    mutate(year = year + 1) %>% 
    select(-c(resid))
) %>% 
  filter(name %in% c("fgco2_int", "temperature"),
         biome == "Global non-polar") %>%
  ggplot() +
  geom_path(
    data = pco2_product_biome_monthly_anomaly %>%
      filter(name %in% c("fgco2_int", "temperature"),
             biome == "Global non-polar"),
    aes(year + month / 12, value),
    col = "grey90"
  )+
  geom_rect(
    data = . %>% filter(year != max(year)),
    aes(
      xmin = year,
      xmax = year + 1,
      ymin = fit,
      ymax = value,
      fill = as.factor(sign(-resid))
    ),
    alpha = 0.5
  ) +
  geom_step(aes(year, fit, col = "Baseline")) +
  geom_step(aes(year, value, col = "Observed")) +
  scale_color_manual(values = c("grey40", "grey10"),
                     name = "Annual means") +
  scale_fill_manual(
    values = c(warm_color, cold_color),
    labels = c("positive", "negative"),
    name = "Anomalies"
  ) +
  guides(
    color = guide_legend(order = 1),
    fill = guide_legend(order = 2)
  ) +
  scale_x_continuous(limits = c(1989.5,2024.5), expand = c(0,0),
                     breaks = c(1990,2010)) +
  facet_grid(
    name ~ product,
    scales = "free_y",
    labeller = labeller(name = x_axis_labels),
    switch = "y"
  ) +
  theme(
    axis.title = element_blank(),
    strip.text.y.left = element_markdown(),
    strip.placement = "outside",
    strip.background.y = element_blank(),
    legend.position = "none",
    legend.direction = "vertical"
  )

ggsave(width = 8,
       height = 3,
       dpi = 600,
       filename = "../output/timeseries_all_products.jpg")


bind_rows(
  pco2_product_biome_monthly_anomaly,
  pco2_product_biome_monthly_anomaly %>%
    filter(year == max(year),
           month == 12) %>%
    mutate(month = month + 1)
) %>%
  mutate(year = year + month/12) %>% 
  filter(name %in% c("fgco2_int", "temperature"),
         product == "OceanSODAv2",
         biome == "Global non-polar",
         year >= 2010) %>%
  ggplot() +
  geom_rect(
    data = . %>% filter(year != max(year)),
    aes(
      xmin = year,
      xmax = year + 1/12,
      ymin = fit,
      ymax = value,
      fill = as.factor(sign(-resid))
    ),
    alpha = 0.5
  ) +
  geom_step(aes(year, fit, col = "Baseline")) +
  scale_color_manual(values = c("grey40", "grey10"),
                     name = "Annual means") +
  scale_fill_manual(
    values = c(warm_color, cold_color),
    labels = c("positive", "negative"),
    name = "Anomalies"
  ) +
  guides(color = guide_legend(order = 1),
         fill = guide_legend(order = 2))+
  facet_grid(
    name ~ .,
    scales = "free_y",
    labeller = labeller(name = x_axis_labels),
    switch = "y"
  ) +
  coord_cartesian(expand = 0) +
  theme(
    axis.title = element_blank(),
    strip.text.y.left = element_markdown(),
    strip.placement = "outside",
    strip.background.y = element_blank(),
    legend.position = "top",
    legend.direction = "vertical"
  )

pco2_product_biome_annual_anomaly %>%
  filter(year == 2023,
         name %in% c("fgco2", "fgco2_int", "dfco2",
                     "kw_sol", "temperature",
                     "no3", "mld", "intpp", "chl")) %>%
  mutate(region = case_when(biome == "Global non-polar" ~ "Global non-polar",
                            # biome %in% super_biomes ~ "Super biomes",
                            TRUE ~ "Biomes"),
         region = factor(region, levels = c("Global non-polar", "Biomes"))) %>% 
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x) +
      geom_col(aes(biome, value, fill = product),
                 position = "dodge2") +
      scale_fill_manual(values = color_products) +
      geom_col(aes(biome, fit, group = product, col = paste0(2023,"\nlinear\nprediction")),
               position = "dodge2",
               fill = "transparent") +
      labs(y = labels_breaks(unique(.x$name))$i_legend_title,
           title = "Absolute") +
      scale_color_grey() +
      facet_grid(.~region, scales = "free_x", space = "free_x") +
      theme(legend.title = element_blank(),
            axis.text.x = element_text(angle = 90, vjust = 0.5, hjust=1),
            axis.title.x = element_blank(),
            axis.title.y = element_markdown(),
            strip.background = element_blank(),
            legend.position = "top")
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[2]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[3]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[4]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[5]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[6]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
60abdac jens-daniel-mueller 2024-04-23
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[7]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
231f7cd jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[8]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
2a28b07 jens-daniel-mueller 2024-07-22
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
7b6f27c jens-daniel-mueller 2024-05-27
97eff6a jens-daniel-mueller 2024-05-25
dbc1fc6 jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
e44a62b jens-daniel-mueller 2024-04-23
7f9c687 jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05
full_join(
  pco2_product_biome_annual_anomaly %>%
    filter(year != 2023,
           name %in% name_core) %>%
    group_by(product, name, biome) %>% 
    summarise(resid_sd = sd(resid)) %>% 
    ungroup(),
  pco2_product_biome_annual_anomaly %>%
    filter(year == 2023,
           name %in% name_core)) %>%
  mutate(
    region = case_when(
      biome == "Global non-polar" ~ "Global non-polar",
      TRUE ~ "Biomes"
    ),
    region = factor(region, levels = c("Global non-polar", "Biomes"))
  ) %>%
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x) +
      geom_col(aes(biome, value - fit, fill = product),
                 position = "dodge2") +
      scale_fill_manual(values = color_products) +
      geom_col(aes(biome, resid_sd * sign(value - fit), 
                   group = product, col = paste0("Anomaly SD\nexcl.",2023)),
               position = "dodge2",
               fill = "transparent") +
      labs(y = labels_breaks(unique(.x$name))$i_legend_title,
           title = "Anomalies") +
      scale_color_grey() +
      facet_grid(.~region, scales = "free_x", space = "free_x") +
      theme(legend.title = element_blank(),
            axis.text.x = element_text(angle = 90, vjust = 0.5, hjust=1),
            axis.title.x = element_blank(),
            axis.title.y = element_markdown(),
            strip.background = element_blank(),
            legend.position = "top")
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
589243f jens-daniel-mueller 2024-05-15
1e4c153 jens-daniel-mueller 2024-05-14
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[2]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
589243f jens-daniel-mueller 2024-05-15
1e4c153 jens-daniel-mueller 2024-05-14
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[3]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
589243f jens-daniel-mueller 2024-05-15
1e4c153 jens-daniel-mueller 2024-05-14
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[4]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
589243f jens-daniel-mueller 2024-05-15
1e4c153 jens-daniel-mueller 2024-05-14
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

[[5]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
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4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
589243f jens-daniel-mueller 2024-05-15
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dfcf790 jens-daniel-mueller 2024-04-11
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[[6]]

Version Author Date
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c50054d jens-daniel-mueller 2024-08-29
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4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
1e4c153 jens-daniel-mueller 2024-05-14
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60abdac jens-daniel-mueller 2024-04-23
dfcf790 jens-daniel-mueller 2024-04-11
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[[7]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
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0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
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dfcf790 jens-daniel-mueller 2024-04-11
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[[8]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
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4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
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de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
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dfcf790 jens-daniel-mueller 2024-04-11
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[[9]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
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a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
4d3ccb2 jens-daniel-mueller 2024-05-29
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e1e0ccb jens-daniel-mueller 2024-05-27
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dbc1fc6 jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
e44a62b jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05

Super regions

pco2_product_biome_annual_anomaly_super_regions <-
  full_join(
    pco2_product_biome_annual_anomaly %>% 
      filter(biome != "Global non-polar"),
    biome_mask %>%
      mutate(area = earth_surf(lat, lon)) %>%
      group_by(biome) %>%
      summarise(area = sum(area)) %>%
      ungroup()
  ) %>% 
  pivot_longer(c(value,resid,fit),
               names_to = "estimate") %>% 
  pivot_wider()

pco2_product_biome_annual_anomaly_super_regions <-
bind_rows(
  pco2_product_biome_annual_anomaly_super_regions %>%
    select(-biome) %>% 
    group_by(product, estimate, year) %>%
    summarise(across(-c(fgco2_int, area),
                     ~ weighted.mean(., area, na.rm = TRUE)),
              across(fgco2_int,
                     ~ sum(., na.rm = TRUE))) %>%
    ungroup() %>%
    mutate(region = "Global"),
  pco2_product_biome_annual_anomaly_super_regions %>%
    filter(!str_detect(biome, "SO-ICE|SO-SPSS|Arctic")) %>%
    select(-biome) %>% 
    group_by(product, estimate, year) %>%
    summarise(across(-c(fgco2_int, area),
                     ~ weighted.mean(., area, na.rm = TRUE)),
              across(fgco2_int,
                     ~ sum(., na.rm = TRUE))) %>%
    ungroup() %>%
    mutate(region = "Global non-polar"),
  pco2_product_biome_annual_anomaly_super_regions %>%
    filter(str_detect(biome, "NA-|NP-")) %>%
    select(-biome) %>% 
    group_by(product, estimate, year) %>%
    summarise(across(-c(fgco2_int, area),
                     ~ weighted.mean(., area, na.rm = TRUE)),
              across(fgco2_int,
                     ~ sum(., na.rm = TRUE))) %>%
    ungroup() %>%
    mutate(region = "NH extratropics"),
  pco2_product_biome_annual_anomaly_super_regions %>%
    filter(str_detect(biome, "NA-")) %>%
    select(-biome) %>% 
    group_by(product, estimate, year) %>%
    summarise(across(-c(fgco2_int, area),
                     ~ weighted.mean(., area, na.rm = TRUE)),
              across(fgco2_int,
                     ~ sum(., na.rm = TRUE))) %>%
    ungroup() %>%
    mutate(region = "North Atlantic"),
  pco2_product_biome_annual_anomaly_super_regions %>%
    filter(str_detect(biome, "NP-")) %>%
    select(-biome) %>% 
    group_by(product, estimate, year) %>%
    summarise(across(-c(fgco2_int, area),
                     ~ weighted.mean(., area, na.rm = TRUE)),
              across(fgco2_int,
                     ~ sum(., na.rm = TRUE))) %>%
    ungroup() %>%
    mutate(region = "North Pacific"),
  pco2_product_biome_annual_anomaly_super_regions %>%
    filter(str_detect(biome, "PEQU|AEQU|Equ")) %>%
    select(-biome) %>% 
    group_by(product, estimate, year) %>%
    summarise(across(-c(fgco2_int, area),
                     ~ weighted.mean(., area, na.rm = TRUE)),
              across(fgco2_int,
                     ~ sum(., na.rm = TRUE))) %>%
    ungroup() %>%
    mutate(region = "Tropics"),
  pco2_product_biome_annual_anomaly_super_regions %>%
    filter(str_detect(biome, "SA-|SP-|Southern|SO-STSS")) %>%
    select(-biome) %>%
    group_by(product, estimate, year) %>%
    summarise(across(-c(fgco2_int, area),
                     ~ weighted.mean(., area, na.rm = TRUE)),
              across(fgco2_int, 
                     ~ sum(., na.rm = TRUE))) %>%
    ungroup() %>%
    mutate(region = "SH extratropics")) %>%
  mutate(region = fct_inorder(region)) %>% 
  pivot_longer(-c(product, year, region, estimate)) %>% 
  pivot_wider(names_from = estimate)

pco2_product_biome_annual_anomaly_super_regions %>% 
  filter(year == 2023,
         name %in% c("fgco2", "fgco2_int", "dfco2", "temperature")) %>%    
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x) +
      geom_hline(yintercept = 0) +
      geom_col(aes(region, value, fill = product),
                 position = "dodge2") +
      scale_fill_manual(values = color_products) +
      geom_col(aes(region, fit, group = product, col = paste0(2023,"\nlinear\nprediction")),
               position = "dodge2",
               fill = "transparent") +
      labs(y = str_remove(labels_breaks(unique(.x$name))$i_legend_title, " anom.")) +
      scale_color_grey() +
      facet_grid(.~region, scales = "free_x", space = "free_x") +
      theme(legend.title = element_blank(),
            axis.text.x = element_blank(),
            axis.title.x = element_blank(),
            axis.ticks.x = element_blank(),
            axis.title.y = element_markdown(),
            strip.background = element_blank(),
            legend.position = "top")
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
0f5b472 jens-daniel-mueller 2024-08-27
08ca8c7 jens-daniel-mueller 2024-08-27
d82bd91 jens-daniel-mueller 2024-08-27
6a96e1f jens-daniel-mueller 2024-08-26
c62d92d jens-daniel-mueller 2024-08-23
4897f6e jens-daniel-mueller 2024-07-08
ba4aaac jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
dd97823 jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
e83b65a jens-daniel-mueller 2024-05-31
7ad8576 jens-daniel-mueller 2024-05-29
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
4be90dd jens-daniel-mueller 2024-05-27
7013182 jens-daniel-mueller 2024-05-27

[[2]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
0f5b472 jens-daniel-mueller 2024-08-27
08ca8c7 jens-daniel-mueller 2024-08-27
d82bd91 jens-daniel-mueller 2024-08-27
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
e83b65a jens-daniel-mueller 2024-05-31
7ad8576 jens-daniel-mueller 2024-05-29
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
4be90dd jens-daniel-mueller 2024-05-27
7013182 jens-daniel-mueller 2024-05-27

[[3]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
0f5b472 jens-daniel-mueller 2024-08-27
08ca8c7 jens-daniel-mueller 2024-08-27
d82bd91 jens-daniel-mueller 2024-08-27
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
e83b65a jens-daniel-mueller 2024-05-31
7ad8576 jens-daniel-mueller 2024-05-29
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
4be90dd jens-daniel-mueller 2024-05-27
7013182 jens-daniel-mueller 2024-05-27

[[4]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
0f5b472 jens-daniel-mueller 2024-08-27
08ca8c7 jens-daniel-mueller 2024-08-27
d82bd91 jens-daniel-mueller 2024-08-27
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
e83b65a jens-daniel-mueller 2024-05-31
7ad8576 jens-daniel-mueller 2024-05-29
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
4be90dd jens-daniel-mueller 2024-05-27
7013182 jens-daniel-mueller 2024-05-27
full_join(pco2_product_biome_annual_anomaly_super_regions %>%
  group_by(product, name, region) %>%
  summarise(resid_sd = sd(resid, na.rm = TRUE)) %>%
  ungroup(),
pco2_product_biome_annual_anomaly_super_regions %>%  
  filter(year == 2023)) %>% 
  filter(name %in% c("fgco2", "fgco2_int", "dfco2", "temperature")) %>%    
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x) +
      geom_hline(yintercept = 0) +
      geom_col(aes(region, resid, fill = product),
               position = "dodge2") +
      scale_fill_manual(values = color_products) +
      geom_col(aes(region, resid_sd * sign(value - fit), 
                   group = product, col = paste0("Anomaly SD\nexcl.",2023)),
               position = "dodge2",
               fill = "transparent") +
      labs(y = labels_breaks(unique(.x$name))$i_legend_title) +
      scale_color_grey() +
      facet_grid(. ~ region, scales = "free_x", space = "free_x") +
      theme(legend.title = element_blank(),
            axis.text.x = element_blank(),
            axis.title.x = element_blank(),
            axis.ticks.x = element_blank(),
            axis.title.y = element_markdown(),
            strip.background = element_blank(),
            legend.position = "top")
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
0f5b472 jens-daniel-mueller 2024-08-27
08ca8c7 jens-daniel-mueller 2024-08-27
d82bd91 jens-daniel-mueller 2024-08-27
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
e83b65a jens-daniel-mueller 2024-05-31
7ad8576 jens-daniel-mueller 2024-05-29
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
4be90dd jens-daniel-mueller 2024-05-27
7013182 jens-daniel-mueller 2024-05-27

[[2]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
0f5b472 jens-daniel-mueller 2024-08-27
08ca8c7 jens-daniel-mueller 2024-08-27
d82bd91 jens-daniel-mueller 2024-08-27
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
e83b65a jens-daniel-mueller 2024-05-31
7ad8576 jens-daniel-mueller 2024-05-29
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
4be90dd jens-daniel-mueller 2024-05-27
7013182 jens-daniel-mueller 2024-05-27

[[3]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
0f5b472 jens-daniel-mueller 2024-08-27
08ca8c7 jens-daniel-mueller 2024-08-27
d82bd91 jens-daniel-mueller 2024-08-27
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
e83b65a jens-daniel-mueller 2024-05-31
7ad8576 jens-daniel-mueller 2024-05-29
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
4be90dd jens-daniel-mueller 2024-05-27
7013182 jens-daniel-mueller 2024-05-27

[[4]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
0f5b472 jens-daniel-mueller 2024-08-27
08ca8c7 jens-daniel-mueller 2024-08-27
d82bd91 jens-daniel-mueller 2024-08-27
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
e83b65a jens-daniel-mueller 2024-05-31
7ad8576 jens-daniel-mueller 2024-05-29
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
4be90dd jens-daniel-mueller 2024-05-27
7013182 jens-daniel-mueller 2024-05-27
pco2_product_biome_annual_anomaly_super_regions <-
  bind_rows(
    pco2_product_biome_annual_anomaly_super_regions %>%
      rename(biome = region),
    pco2_product_biome_annual_anomaly %>% 
      filter(biome != "Global non-polar")
  ) %>%
  filter(product %in% pco2_product_list) %>%
  group_by(year, name, biome) %>%
  summarise(
    resid_sd = sd(resid),
    resid = mean(resid),
    value_sd = sd(value),
    value = mean(value)
  ) %>%
  ungroup()


pco2_product_biome_annual_anomaly_super_regions <-
  pco2_product_biome_annual_anomaly_super_regions %>%
  filter(name %in% c("temperature", "fgco2", "fgco2_int"))

pco2_product_biome_annual_anomaly_super_regions %>%
  filter(year == 2023) %>%
  mutate(
    resid = paste(ifelse(
      resid > 0, paste0("+", round(resid, 2)), round(resid, 2)
    ), round(resid_sd, 2), sep = "±"),
    value = paste(ifelse(
      value > 0, paste0("+", round(value, 2)), round(value, 2)
    ), round(value_sd, 2), sep = "±")
  ) %>%
  select(-c(contains("_sd"), year)) %>%
  pivot_wider(values_from = c(resid, value)) %>%
  relocate(
    biome,
    value_temperature,
    resid_temperature,
    value_fgco2_int,
    resid_fgco2_int,
    value_fgco2,
    resid_fgco2
  ) %>%
  arrange(match(
    biome,
    c(
      "NA-SPSS",
      "NA-STPS",
      "NA-STSS",
            "North Atlantic",
            "NP-SPSS",
      "NP-STPS",
      "NP-STSS",
      "North Pacific",
      "NH extratropics",
      "PEQU-E",
      "PEQU-W",
      "AEQU",
      "Equatorial Indian",
      "Tropics",
      "SA-STPS",
      "SP-STPS",
      "Southern Indian",
      "SO-STSS",
      "SH extratropics",
      "Global non-polar",
      "SO-SPSS",
      "SO-ICE",
      "Arctic",
      "Global"
    )
  )) %>% 
  write_csv("../output/biome_anomaly_ensemble_mean_pco2_products.csv")
pco2_product_biome_annual_anomaly_merged <-
full_join(region_biomes,
          pco2_product_biome_annual_anomaly) %>%
  mutate(region = case_when(biome == "Global non-polar" ~ "Global\nnon-polar",
                            region == "atlantic" ~ "Atlantic",
                            region == "pacific" ~ "Pacific",
                            region == "indian" ~ "Indian Ocean",
                            TRUE ~ region),
         region = fct_rev(fct_inorder(region))) %>% 
  mutate(
    latitude = case_when(
      biome == "Global non-polar" ~ "Global\nnon-polar",
      biome %in% c(
        "NA-SPSS",
        "NA-STSS",
        "NA-STPS",
        "NP-SPSS",
        "NP-STSS",
        "NP-STPS"
      ) ~ "NH extratropics",
      biome %in% c(
        "Equatorial Indian",
        "PEQU-W",
        "PEQU-E",
        "AEQU"
      ) ~ "Tropics",
      biome %in% c("SA-STPS", "SP-STPS", "Southern Indian", "SO-STSS") ~ "SH extratropics",
      biome %in% c("SO-SPSS", "SO-ICE") ~ "SH polar",
      biome %in% c("Arctic") ~ "NH polar",
      TRUE ~ "other"
    ),
    latitude = fct_relevel(latitude, c("Global\nnon-polar",
                                       "NH polar",
                                       "NH extratropics",
                                       "Tropics",
                                       "SH extratropics",
                                       "SH polar"))) %>% 
  mutate(basin = case_when(
    biome == "Global non-polar" ~ "",
    str_detect(biome, "NA-|SA-|AEQU") ~ "Atlantic",
    str_detect(biome, "NP-|SP-") ~ "Pacific",
    str_detect(biome, "Indian") ~ "Indian",
    str_detect(biome, "SO-") ~ "Southern\nOcean",
    str_detect(biome, "Arctic") ~ "Arctic",
    biome == "PEQU-E" ~ "Pacific-E",
    biome == "PEQU-W" ~ "Pacific-W",
    TRUE ~ "other")) %>% 
  mutate(biome_class = case_when(
    str_detect(biome, "SPSS") ~ "Subpolar\nseasonally\nstratified\n(SPSS)",
    str_detect(biome, "STSS") ~ "Subtropical\nseasonally\nstratified\n(STSS)",
    str_detect(biome, "STPS|Southern Indian") ~ "Subtropical\npermanently\nstratified\n(STPS)",
    str_detect(biome, "Arctic|ICE") ~ "Ice",
    TRUE ~ ""),
    biome_class = fct_relevel(biome_class, 
                              "Subtropical\nseasonally\nstratified\n(STSS)", 
                              after = 2)) %>% 
  filter(year == 2023,
         name %in% c("temperature", "fgco2", "fgco2_int"))

pco2_product_biome_annual_anomaly_merged_ensemble <- 
pco2_product_biome_annual_anomaly_merged %>% 
  filter(product %in% pco2_product_list) %>% 
  group_by(name, biome, basin, region, latitude, biome_class) %>%
  summarise(resid_sd = sd(resid),
            resid = mean(resid))

pco2_product_biome_annual_anomaly_merged_ensemble %>%
  kable() %>%
  kable_styling() %>%
  scroll_box(height = "300px")
name biome basin region latitude biome_class resid_sd resid
fgco2 AEQU Atlantic Atlantic Tropics 0.0786877 -0.0265955
fgco2 Arctic Arctic arctic NH polar Ice 0.0827442 0.0671843
fgco2 Equatorial Indian Indian Indian Ocean Tropics 0.0619086 0.0137602
fgco2 Global non-polar Global non-polar |Global non-pola
seasonally stratified (SPSS)
0.0485
permanently stratified (STP
) | 0.0408 99| 0.1322
fgco2 NA-STSS Atlantic Atlantic NH extratropics Subtropical seasonally stratified (STSS
0.0544
seasonally stratified (SPSS)
0.1371
permanently stratified (STP
) | 0.1294 88| 0.0669
fgco2 NP-STSS Pacific Pacific NH extratropics Subtropical seasonally stratified (STSS
0.1046
permanently stratified (STP
) | 0.0313 50| -0.0255
fgco2 SO-ICE Southern Ocean |southern |SH polar |Ice
0.170058
Ocean
|southern |SH polar |Subpolar seasonally stratified (SPSS)
0.419
Ocean
|southern |SH extratropics |Subtropical seasonally stratified (STS ) | 0.216 107| 0.189
fgco2 SP-STPS Pacific Pacific SH extratropics Subtropical permanently stratified (STP ) | 0.1607 69| 0.0582
fgco2 Southern Indian Indian Indian Ocean SH extratropics Subtropical permanently stratified (STP ) | 0.1569 12| 0.1662
fgco2_int AEQU Atlantic Atlantic Tropics 0.0079857 -0.0026551
fgco2_int Arctic Arctic arctic NH polar Ice 0.0079389 0.0168068
fgco2_int Equatorial Indian Indian Indian Ocean Tropics 0.0201151 0.0044713
fgco2_int Global non-polar Global non-polar |Global non-pola
seasonally stratified (SPSS)
0.0050
permanently stratified (STP
) | 0.0113 12| 0.0356
fgco2_int NA-STSS Atlantic Atlantic NH extratropics Subtropical seasonally stratified (STSS
0.0039
seasonally stratified (SPSS)
0.0221
permanently stratified (STP
) | 0.0668 23| 0.0345
fgco2_int NP-STSS Pacific Pacific NH extratropics Subtropical seasonally stratified (STSS
0.0099
permanently stratified (STP
) | 0.0073 93| -0.0059
fgco2_int SO-ICE Southern Ocean |southern |SH polar |Ice
0.036827
Ocean
|southern |SH polar |Subpolar seasonally stratified (SPSS)
0.155
Ocean
|southern |SH extratropics |Subtropical seasonally stratified (STS ) | 0.074 665| 0.066
fgco2_int SP-STPS Pacific Pacific SH extratropics Subtropical permanently stratified (STP ) | 0.1056 82| 0.0381
fgco2_int Southern Indian Indian Indian Ocean SH extratropics Subtropical permanently stratified (STP ) | 0.0318 96| 0.0341
temperature AEQU Atlantic Atlantic Tropics 0.0735601 0.2494307
temperature Arctic Arctic arctic NH polar Ice 0.1440263 -0.0028089
temperature Equatorial Indian Indian Indian Ocean Tropics 0.0517563 0.0000372
temperature Global non-polar Global non-polar |Global non-pola
seasonally stratified (SPSS)
0.0692
permanently stratified (STP
) | 0.0378 75| 0.5617
temperature NA-STSS Atlantic Atlantic NH extratropics Subtropical seasonally stratified (STSS
0.0521
seasonally stratified (SPSS)
0.0299
permanently stratified (STP
) | 0.0426 10| -0.1647
temperature NP-STSS Pacific Pacific NH extratropics Subtropical seasonally stratified (STSS
0.0504
permanently stratified (STP
) | 0.0463 50| 0.0876
temperature SO-ICE Southern Ocean |southern |SH polar |Ice
0.020059
Ocean
|southern |SH polar |Subpolar seasonally stratified (SPSS)
0.050
Ocean
|southern |SH extratropics |Subtropical seasonally stratified (STS ) | 0.056 611| 0.230
temperature SP-STPS Pacific Pacific SH extratropics Subtropical permanently stratified (STP ) | 0.0388 47| 0.1370
temperature Southern Indian Indian Indian Ocean SH extratropics Subtropical permanently stratified (STP ) | 0.0726 65| 0.2057
pco2_product_biome_annual_anomaly_merged_ensemble %>%
  filter(name != "fgco2_int", !str_detect(biome, "SO-SPSS|SO-ICE|Arctic")) %>%
  ggplot(aes(x = basin, y = resid)) +
  geom_hline(yintercept = 0) +
  geom_col(aes(fill = "fCO2 product\nensemble mean"), col = "grey20") +
  geom_linerange(aes(
    ymin = resid - resid_sd,
    ymax = resid + resid_sd,
    col = "fCO2 product\nensemble SD"
  )) +
  scale_color_manual(values = "grey20", name = "") +
  scale_fill_manual(values = "grey90", name = "") +
  new_scale_color() +
  geom_point(
    data = pco2_product_biome_annual_anomaly_merged %>%
      filter(
        name != "fgco2_int",
        product %in% pco2_product_list,
        !str_detect(biome, "SO-SPSS|SO-ICE|Arctic")
      ),
    aes(col = product, shape = product)
  ) +
  scale_color_manual(values = color_products, name = "fCO2 products") +
  scale_shape_manual(values = 21:24, name = "fCO2 products") +
  new_scale_color() +
  new_scale("shape") +
  geom_point(
    data = pco2_product_biome_annual_anomaly_merged %>%
      filter(
        name != "fgco2_int",
        product %in% gobm_product_list,
        !str_detect(biome, "SO-SPSS|SO-ICE|Arctic")
      ),
    aes(col = product, shape = product),
    position = position_nudge(x = 0.2)
  ) +
  scale_color_manual(values = color_products, name = "GOBMs") +
  scale_shape_manual(values = 21:22, name = "GOBMs") +
  facet_nested(
    name ~ latitude + biome_class,
    scales = "free",
    space = "free_x",
    labeller = labeller(name = x_axis_labels),
    switch = "y",
    nest_line = element_line(linewidth = 0.8),
    solo_line = TRUE,
    strip = strip_nested(
      text_x = list(
        element_text(face = "bold"),
        element_text(face = "bold"),
        element_text(face = "bold"),
        element_text(face = "bold"),
        elem_list_text(),
        elem_list_text(),
        elem_list_text(),
        elem_list_text(),
        elem_list_text(),
        elem_list_text(),
        elem_list_text()
      )
    )
  ) +
  theme(
    axis.text.x = element_text(
      angle = 90,
      vjust = 0.5,
      hjust = 1
    ),
    axis.title.x = element_blank(),
    axis.title.y = element_blank(),
    strip.text.y.left = element_markdown(),
    strip.placement = "outside",
    strip.background.y = element_blank(),
    strip.background.x = element_blank()
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
d82bd91 jens-daniel-mueller 2024-08-27
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
c6f967e jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
ggsave(width = 10,
       height = 6,
       dpi = 600,
       filename = "../output/biome_anomaly_ensemble_mean_pco2_products.jpg")


p_global <- pco2_product_biome_annual_anomaly_merged_ensemble %>% 
  filter(biome == "Global non-polar") %>% 
  ggplot(aes(basin, resid)) +
  geom_hline(yintercept = 0) +
  geom_col(aes(fill = "fCO2 product\nensemble mean"), col = "grey20") +
  geom_linerange(aes(ymin = resid - resid_sd,
                     ymax = resid + resid_sd,
                     col = "fCO2 product\nensemble SD")) +
  scale_color_manual(values = "grey20", name = "") +
  scale_fill_manual(values = "grey90", name = "") +
  new_scale_color()+
  geom_point(
    data = pco2_product_biome_annual_anomaly_merged %>%
      filter(biome == "Global non-polar",
             product %in% pco2_product_list),
    aes(col = product),
    # position = position_nudge(x = -0.15),
    shape = 21
  ) +
  scale_color_manual(values = color_products,
                     name = "fCO2 products") +
  new_scale_color()+
  geom_point(data = pco2_product_biome_annual_anomaly_merged %>% 
               filter(biome == "Global",
                      product %in% gobm_product_list),
             aes(col = product),
             position = position_nudge(x = 0.2),
             shape = 21) +
  scale_color_manual(values = color_products,
                     name = "GOBMs") +
  facet_nested(name ~ latitude + biome_class, 
             scales = "free", space = "free_x",
             labeller = labeller(name = x_axis_labels),
             switch = "y",
             nest_line = element_line(),
             solo_line = TRUE) +
  theme(
    axis.text.x = element_text(
      angle = 90,
      vjust = 0.5,
      hjust = 1
    ),
    axis.title.x = element_blank(),
    axis.title.y = element_blank(),
    strip.text.y.left = element_markdown(),
    strip.placement = "outside",
    strip.background.y = element_blank(),
    strip.background.x = element_blank(),
    legend.position = "none"
  )
  
p_biome <- pco2_product_biome_annual_anomaly_merged_ensemble %>% 
  filter(biome != "Global non-polar") %>% 
  ggplot(aes(basin, resid)) +
  geom_hline(yintercept = 0) +
  geom_col(aes(fill = "fCO2 product\nensemble mean"), col = "grey20") +
  geom_linerange(aes(ymin = resid - resid_sd,
                     ymax = resid + resid_sd,
                     col = "fCO2 product\nensemble SD")) +
  scale_color_manual(values = "grey20", name = "") +
  scale_fill_manual(values = "grey90", name = "") +
  new_scale_color()+
  geom_point(
    data = pco2_product_biome_annual_anomaly_merged %>%
      filter(biome != "Global non-polar",
             product %in% pco2_product_list),
    aes(col = product),
    # position = position_nudge(x = -0.15),
    shape = 21
  ) +
  scale_color_manual(values = color_products,
                     name = "fCO2 products") +
  new_scale_color()+
  geom_point(data = pco2_product_biome_annual_anomaly_merged %>% 
               filter(biome != "Global non-polar",
                      product %in% gobm_product_list),
             aes(col = product),
             position = position_nudge(x = 0.2),
             shape = 21) +
  scale_color_manual(values = color_products,
                     name = "GOBMs") +
  facet_nested(name ~ latitude + biome_class, 
             scales = "free", space = "free_x",
             labeller = labeller(name = ""),
             # switch = "y",
             nest_line = element_line(),
             solo_line = TRUE
             ) +
  theme(
    axis.text.x = element_text(
      angle = 90,
      vjust = 0.5,
      hjust = 1
    ),
    axis.title.x = element_blank(),
    axis.title.y = element_blank(),
    strip.text.y.right = element_text(colour = "transparent",
                                      size = 0),
    strip.placement = "outside",
    strip.background.y = element_blank(),
    strip.background.x = element_blank(),
    legend.position = "bottom",
    legend.direction = "vertical"
  )


ggsave(cowplot::plot_grid(p_global, p_biome,
                   align = "hv",
                   axis = "tb",
                   rel_widths = c(1,7)),
       width = 12,
       height = 8,
       dpi = 600,
       filename = "../output/biome_anomaly_ensemble_mean_pco2_products_with_integrated_flux_and_SO.jpg")

Seasonal anomalies

Flux anomaly correlation

The following plots aim to unravel the correlation between biome-, super-biome- or globally- integrated monthly flux anomalies and the corresponding anomalies of the means/integrals of each other variable.

Anomalies are first presented are first presented in absolute units. Due to the different flux magnitudes, we need to plot the globally and biome-integrated fluxes separately. Secondly, we normalize the anomalies to the monthly spread (expressed as standard deviation) of the anomalies from 1990 to 2021.

Annual anomalies

Absolute

pco2_product_biome_annual_anomaly %>%
  filter(biome %in% c("Global non-polar", key_biomes),
         name %in% name_core) %>%
  mutate(biome = if_else(biome == "Global non-polar", "Global non-polar", biome)) %>% 
  select(-c(value, fit)) %>%
  pivot_wider(values_from = resid) %>%
  pivot_longer(-c(product, year, biome, fgco2_int))  %>%
  filter(name == "temperature") %>% 
  group_split(name) %>%
  # tail(1) %>%
  map(
    ~ ggplot(data = .x,
             aes(value, fgco2_int)) +
      geom_smooth(
        data = . %>% filter(year != 2023),
        method = "lm",
        fill = "grey",
        col = "grey40",
        fullrange = TRUE,
        level = 0.68
      ) +
      geom_point(
        data = . %>% filter(!year %in% c(2023, 1997, 2015)),
        aes(fill = "1990-2022"),
        shape = 21
      ) +
      scale_color_manual(values = "grey60", name = "X") +
      scale_fill_manual(values = "grey60", name = "X") +
      new_scale_fill() +
      new_scale_color() +
      geom_point(
        data = . %>% filter(year %in% c(2023, 1997, 2015)),
        aes(fill = as.factor(year)),
        shape = 21,
        size = 3
      )  +
      scale_fill_manual(
        values = rev(warm_cool_gradient[c(17,13,20)]),
        guide = guide_legend(reverse = TRUE,
                             order = 2)
      ) +
      scale_color_manual(
        values = rev(warm_cool_gradient[c(17,13,20)]),
        guide = guide_legend(reverse = TRUE,
                             order = 2)
      ) +
      labs(y = labels_breaks("fgco2_int")$i_legend_title,
           x = labels_breaks(unique(.x$name))$i_legend_title) +
      facet_grid2(
        product ~ biome,
        scales = "free",
        independent = "y"
      ) +
      theme(
        axis.title.x = element_markdown(),
        axis.title.y = element_markdown(),
        legend.title = element_blank(),
        legend.position = "top"
      )
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
4acb1fc jens-daniel-mueller 2024-09-05
aecb187 jens-daniel-mueller 2024-08-28
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
e83b65a jens-daniel-mueller 2024-05-31
0493049 jens-daniel-mueller 2024-05-29
b99b329 jens-daniel-mueller 2024-05-28
571e2f8 jens-daniel-mueller 2024-05-22
29e0ec4 jens-daniel-mueller 2024-05-21
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05
a83c8fc jens-daniel-mueller 2024-04-03
ggsave(width = 8,
       height = 10,
       dpi = 600,
       filename = "../output/biome_anomaly_correlation_all_pco2_products.jpg")


pco2_product_biome_annual_anomaly_ensemble <-
  pco2_product_biome_annual_anomaly %>%
  filter(name %in% name_core, product %in% pco2_product_list) %>%
  select(-c(value, fit, product)) %>%
  fgroup_by(name, biome, year) %>%
  fsummarise(sd = fsd(resid),
             mean = fmean(resid))

pco2_product_biome_annual_anomaly_ensemble <-
  full_join(
    pco2_product_biome_annual_anomaly_ensemble %>%
      filter(name == "fgco2_int") %>%
      pivot_wider(values_from = c(sd, mean)),
    pco2_product_biome_annual_anomaly_ensemble %>%
      filter(name != "fgco2_int")
  )



pco2_product_biome_annual_anomaly_super_regions %>%
  filter(name %in% c("fgco2_int", "temperature")) %>%
  select(-contains("value")) %>%
  pivot_wider(values_from = contains("resid")) %>%
  filter(biome %in% c("Global non-polar", key_biomes)) %>%
  ggplot(aes(resid_temperature, resid_fgco2_int)) +
  # geom_vline(xintercept = 0) +
  # geom_hline(yintercept = 0) +
  geom_smooth(
    data = . %>% filter(year != 2023),
    method = "lm",
    fill = "grey",
    col = "grey40",
    fullrange = TRUE,
    level = 0.68
  )+
  geom_linerange(
    data = . %>% filter(!year %in% c(2023, 1997, 2015)),
    aes(
      ymin = resid_fgco2_int - resid_sd_fgco2_int,
      ymax = resid_fgco2_int + resid_sd_fgco2_int,
      col = "1990-2022"
    )
  ) +
  geom_linerange(
    data = . %>% filter(!year %in% c(2023, 1997, 2015)),
    aes(
      xmin = resid_temperature - resid_sd_temperature,
      xmax = resid_temperature + resid_sd_temperature,
      col = "1990-2022"
    )
  ) +
  geom_point(data = . %>% filter(!year %in% c(2023, 1997, 2015)),
             aes(fill = "1990-2022"),
             shape = 21) +
  scale_color_manual(values = "grey60", name = "X") +
  scale_fill_manual(values = "grey60", name = "X") +
  new_scale_fill() +
  new_scale_color() +
  geom_linerange(
    data = . %>% filter(year %in% c(2023, 1997, 2015)),
    aes(
      ymin = resid_fgco2_int - resid_sd_fgco2_int,
      ymax = resid_fgco2_int + resid_sd_fgco2_int,
      col = as.factor(year)
    ),
    linewidth = 1
  ) +
  geom_linerange(
    data = . %>% filter(year %in% c(2023, 1997, 2015)),
    aes(
      xmin = resid_temperature - resid_sd_temperature,
      xmax = resid_temperature + resid_sd_temperature,
      col = as.factor(year)
    ),
    linewidth = 1
  ) +
  geom_point(
    data = . %>% filter(year %in% c(2023, 1997, 2015)),
    aes(fill = as.factor(year)),
    shape = 21,
    size = 3
  )  +
  scale_fill_manual(values = rev(warm_cool_gradient[c(17, 13, 20)]),
                    guide = guide_legend(reverse = TRUE, order = 2)) +
  scale_color_manual(values = rev(warm_cool_gradient[c(17, 13, 20)]),
                     guide = guide_legend(reverse = TRUE, order = 2)) +
  labs(y = labels_breaks("fgco2_int")$i_legend_title,
       x = labels_breaks(unique("temperature"))$i_legend_title) +
  facet_wrap(~ biome, scales = "free") +
  # theme_classic() +
  theme(
    axis.title.x = element_markdown(),
    axis.title.y = element_markdown(),
    legend.title = element_blank()
    # strip.background = element_blank()
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
4acb1fc jens-daniel-mueller 2024-09-05
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
ba4aaac jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
dd97823 jens-daniel-mueller 2024-06-28
c6f967e jens-daniel-mueller 2024-06-28
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
0493049 jens-daniel-mueller 2024-05-29
7013182 jens-daniel-mueller 2024-05-27
571e2f8 jens-daniel-mueller 2024-05-22
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05
a83c8fc jens-daniel-mueller 2024-04-03
ggsave(width = 8,
       height = 6,
       dpi = 600,
       filename = "../output/biome_anomaly_correlation_ensemble_mean_pco2_products.jpg")


pco2_product_biome_annual_anomaly_super_regions %>%
  filter(name %in% c("fgco2_int", "temperature")) %>%
  select(-contains("value")) %>%
  pivot_wider(values_from = contains("resid")) %>%
  ggplot(aes(resid_temperature, resid_fgco2_int)) +
  # geom_vline(xintercept = 0) +
  # geom_hline(yintercept = 0) +
  geom_smooth(
    data = . %>% filter(year != 2023),
    method = "lm",
    fill = "grey",
    col = "grey40",
    fullrange = TRUE,
        level = 0.68
  ) +
  geom_linerange(
    data = . %>% filter(!year %in% c(2023, 1997, 2015)),
    aes(
      ymin = resid_fgco2_int - resid_sd_fgco2_int,
      ymax = resid_fgco2_int + resid_sd_fgco2_int,
      col = "1990-2022"
    )
  ) +
  geom_linerange(
    data = . %>% filter(!year %in% c(2023, 1997, 2015)),
    aes(
      xmin = resid_temperature - resid_sd_temperature,
      xmax = resid_temperature + resid_sd_temperature,
      col = "1990-2022"
    )
  ) +
  geom_point(data = . %>% filter(!year %in% c(2023, 1997, 2015)),
             aes(fill = "1990-2022"),
             shape = 21) +
  scale_color_manual(values = "grey60", name = "X") +
  scale_fill_manual(values = "grey60", name = "X") +
  new_scale_fill() +
  new_scale_color() +
  geom_linerange(
    data = . %>% filter(year %in% c(2023, 1997, 2015)),
    aes(
      ymin = resid_fgco2_int - resid_sd_fgco2_int,
      ymax = resid_fgco2_int + resid_sd_fgco2_int,
      col = as.factor(year)
    ),
    linewidth = 1
  ) +
  geom_linerange(
    data = . %>% filter(year %in% c(2023, 1997, 2015)),
    aes(
      xmin = resid_temperature - resid_sd_temperature,
      xmax = resid_temperature + resid_sd_temperature,
      col = as.factor(year)
    ),
    linewidth = 1
  ) +
  geom_point(
    data = . %>% filter(year %in% c(2023, 1997, 2015)),
    aes(fill = as.factor(year)),
    shape = 21,
    size = 3
  )  +
  scale_fill_manual(values = rev(warm_cool_gradient[c(17, 13, 20)]),
                    guide = guide_legend(reverse = TRUE, order = 2)) +
  scale_color_manual(values = rev(warm_cool_gradient[c(17, 13, 20)]),
                     guide = guide_legend(reverse = TRUE, order = 2)) +
  labs(y = labels_breaks("fgco2_int")$i_legend_title,
       x = labels_breaks(unique("temperature"))$i_legend_title) +
  facet_wrap(~ biome, scales = "free",
             ncol = 4) +
  # theme_classic() +
  theme(
    axis.title.x = element_markdown(),
    axis.title.y = element_markdown(),
    legend.title = element_blank(),
    legend.position = "top"
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
4acb1fc jens-daniel-mueller 2024-09-05
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
67956dd jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
0493049 jens-daniel-mueller 2024-05-29
b99b329 jens-daniel-mueller 2024-05-28
7013182 jens-daniel-mueller 2024-05-27
97eff6a jens-daniel-mueller 2024-05-25
571e2f8 jens-daniel-mueller 2024-05-22
29e0ec4 jens-daniel-mueller 2024-05-21
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
60abdac jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05
a83c8fc jens-daniel-mueller 2024-04-03
ggsave(width = 9,
       height = 12,
       dpi = 600,
       filename = "../output/biome_anomaly_correlation_ensemble_mean_pco2_products_all_biomes.jpg")


pco2_product_biome_annual_anomaly %>%
  filter(
    biome %in% c("Global non-polar", key_biomes),
    name %in% c(
      "fgco2_int",
      "chl",
      "dfco2",
      "sfco2",
      "atm_fco2",
      "temperature",
      "sdissic",
      "no3",
      "int_pp",
      "mld",
      "kw_sol"
    )
  ) %>% 
  select(-c(value, fit)) %>%
  pivot_wider(values_from = resid) %>%
  pivot_longer(-c(product, year, biome, fgco2_int)) %>% 
  group_by(product, name, biome) %>% 
  summarise(correlation = cor(fgco2_int, value)) %>% 
  ungroup() %>% 
  group_by(name) %>% 
  mutate(correlation_mean = mean(abs(correlation), na.rm = TRUE)) %>% 
  ungroup() %>% 
  mutate(name = fct_reorder(name, correlation_mean)) %>% 
  ggplot(aes(product,name,fill=correlation)) +
  geom_tile() +
  scale_fill_divergent() +
  facet_wrap(~ biome) +
  labs(title = "Correlation with FCO2 on a annual mean basis") +
  theme(axis.text.x = element_text(angle = 90, hjust = 1),
        axis.title = element_blank(),
        legend.position = c(0.85,0.1),
        legend.direction = "horizontal")

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
67956dd jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
0493049 jens-daniel-mueller 2024-05-29
7013182 jens-daniel-mueller 2024-05-27
97eff6a jens-daniel-mueller 2024-05-25
571e2f8 jens-daniel-mueller 2024-05-22
29e0ec4 jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05
a83c8fc jens-daniel-mueller 2024-04-03
pco2_product_biome_monthly_anomaly %>%
filter(
    biome %in% c("Global non-polar", key_biomes),
    name %in% c(
      "fgco2_int",
      "chl",
      "dfco2",
      "sfco2",
      "atm_fco2",
      "temperature",
      "sdissic",
      "no3",
      "int_pp",
      "mld",
      "kw_sol"
    )
  ) %>% 
  select(-c(value, fit)) %>%
  pivot_wider(values_from = resid) %>%
  pivot_longer(-c(product, year, month, biome, fgco2_int)) %>% 
  group_by(product, name, biome) %>% 
  summarise(correlation = cor(fgco2_int, value)) %>% 
  ungroup() %>% 
  group_by(name) %>% 
  mutate(correlation_mean = mean(abs(correlation), na.rm = TRUE)) %>% 
  ungroup() %>% 
  mutate(name = fct_reorder(name, correlation_mean)) %>% 
  ggplot(aes(product,name,fill=correlation)) +
  geom_tile() +
  scale_fill_divergent() +
  facet_wrap(~ biome) +
  labs(title = "Correlation with FCO2 on a monthly mean basis") +
  theme(axis.text.x = element_text(angle = 90, hjust = 1),
        axis.title = element_blank(),
        legend.position = c(0.85,0.1),
        legend.direction = "horizontal")

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
67956dd jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
478e699 jens-daniel-mueller 2024-06-14
0493049 jens-daniel-mueller 2024-05-29
7013182 jens-daniel-mueller 2024-05-27
97eff6a jens-daniel-mueller 2024-05-25
571e2f8 jens-daniel-mueller 2024-05-22
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
dbc1fc6 jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05
a83c8fc jens-daniel-mueller 2024-04-03
pco2_product_biome_monthly_anomaly %>%
filter(
    biome %in% c("Global non-polar", key_biomes),
    name %in% c(
      "fgco2_int",
      "chl",
      "dfco2",
      "sfco2",
      "atm_fco2",
      "temperature",
      "sdissic",
      "no3",
      "int_pp",
      "mld",
      "kw_sol"
    )
  ) %>% 
  select(-c(value, fit)) %>%
  pivot_wider(values_from = resid) %>%
  pivot_longer(-c(product, year, month, biome, fgco2_int)) %>% 
  group_by(product, name, biome, month) %>% 
  summarise(correlation = cor(fgco2_int, value)) %>% 
  ungroup() %>% 
  group_by(name) %>% 
  mutate(correlation_mean = mean(abs(correlation), na.rm = TRUE)) %>% 
  ungroup() %>% 
  mutate(name = fct_reorder(name, correlation_mean)) %>% 
  ggplot(aes(month, correlation, col = name)) +
  geom_hline(yintercept = 0) +
  geom_path() +
  facet_grid(product ~ biome) +
  labs(title = "Correlation with FCO2 on a monthly mean basis")

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
0493049 jens-daniel-mueller 2024-05-29
7013182 jens-daniel-mueller 2024-05-27
97eff6a jens-daniel-mueller 2024-05-25
571e2f8 jens-daniel-mueller 2024-05-22
29e0ec4 jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
589243f jens-daniel-mueller 2024-05-15
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
3fea035 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
dfcf790 jens-daniel-mueller 2024-04-11
d5075c5 jens-daniel-mueller 2024-04-11
19f40c9 jens-daniel-mueller 2024-04-05
a83c8fc jens-daniel-mueller 2024-04-03

Monthly anomalies

Absolute

pco2_product_biome_monthly_detrended %>%
  filter(biome == "Global non-polar") %>%
  select(-c(time, fit, value)) %>% 
  pivot_wider(values_from = resid) %>%
  pivot_longer(-c(product, year, month, biome, fgco2_int))  %>%
  filter(name == "temperature") %>% 
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x,
             aes(value, fgco2_int)) +
      geom_hline(yintercept = 0) +
      geom_point(
        data = . %>% filter(year != 2023),
        aes(col = paste(min(year), max(year), sep = "-")),
        alpha = 0.2
      ) +
      geom_smooth(
        data = . %>% filter(year != 2023),
        aes(col = paste(min(year), max(year), sep = "-")),
        method = "lm",
        se = FALSE,
        fullrange = TRUE
      )  +
      scale_color_grey(name = "") +
      new_scale_color() +
      geom_path(data = . %>% filter(year == 2023),
      aes(col = as.factor(month), group = 1))  +
      geom_point(
        data = . %>% filter(year == 2023),
        aes(fill =  as.factor(month)),
        shape = 21,
        size = 3
      )  +
      scale_color_scico_d(
        palette = "buda",
        guide = guide_legend(reverse = TRUE,
                             order = 1),
        name = paste("Month\nof", 2023)
      ) +
      scale_fill_scico_d(
        palette = "buda",
        guide = guide_legend(reverse = TRUE,
                             order = 1),
        name = paste("Month\nof", 2023)
      ) +
      labs(
        y = labels_breaks("fgco2_int")$i_legend_title,
        x = labels_breaks(unique(.x$name))$i_legend_title
      ) +
      facet_grid(biome ~ product,
                 scales = "free_y") +
      theme(
        axis.title.x = element_markdown(),
        axis.title.y = element_markdown()
      )
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
d82bd91 jens-daniel-mueller 2024-08-27
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
29e0ec4 jens-daniel-mueller 2024-05-21
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
6709afa jens-daniel-mueller 2024-04-12
58e3680 jens-daniel-mueller 2024-04-11
pco2_product_biome_monthly_detrended %>%
  filter(biome %in% key_biomes) %>%
  select(-c(time, fit, value)) %>% 
  pivot_wider(values_from = resid) %>%
  pivot_longer(-c(product, year, month, biome, fgco2_int))  %>%
  filter(name == "temperature") %>% 
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x,
             aes(value, fgco2_int)) +
      geom_hline(yintercept = 0) +
      geom_point(
        data = . %>% filter(year != 2023),
        aes(col = paste(min(year), max(year), sep = "-")),
        alpha = 0.2
      ) +
      geom_smooth(
        data = . %>% filter(year != 2023),
        aes(col = paste(min(year), max(year), sep = "-")),
        method = "lm",
        se = FALSE,
        fullrange = TRUE
      )  +
      scale_color_grey(name = "") +
      new_scale_color() +
      geom_path(data = . %>% filter(year == 2023),
      aes(col = as.factor(month), group = 1))  +
      geom_point(
        data = . %>% filter(year == 2023),
        aes(fill =  as.factor(month)),
        shape = 21,
        size = 3
      )  +
      scale_color_scico_d(
        palette = "buda",
        guide = guide_legend(reverse = TRUE,
                             order = 1),
        name = paste("Month\nof", 2023)
      ) +
      scale_fill_scico_d(
        palette = "buda",
        guide = guide_legend(reverse = TRUE,
                             order = 1),
        name = paste("Month\nof", 2023)
      ) +
      labs(
        y = labels_breaks("fgco2_int")$i_legend_title,
        x = labels_breaks(unique(.x$name))$i_legend_title
      ) +
      facet_grid(biome ~ product,
                 scales = "free_y") +
      theme(
        axis.title.x = element_markdown(),
        axis.title.y = element_markdown()
      )
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
d82bd91 jens-daniel-mueller 2024-08-27
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
b99b329 jens-daniel-mueller 2024-05-28
29e0ec4 jens-daniel-mueller 2024-05-21
009791f jens-daniel-mueller 2024-05-14
8c96de4 jens-daniel-mueller 2024-05-08
4b81eaf jens-daniel-mueller 2024-05-07
60abdac jens-daniel-mueller 2024-04-23
1ff6eb0 jens-daniel-mueller 2024-04-22
9ecd92e jens-daniel-mueller 2024-04-22
231f7cd jens-daniel-mueller 2024-04-17
a5911f0 jens-daniel-mueller 2024-04-17
6709afa jens-daniel-mueller 2024-04-12

fCO2 decomposition

pco2_product_biome_monthly_fCO2_decomposition %>%
  filter(biome %in% c("Global non-polar",key_biomes)) %>%
  group_split(biome) %>%
  # head(1) %>%
  map(
    ~ p_season(df = .x,
               title  = paste("Anomalies from predicted monthly mean |", .x$biome))
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
d3235fa jens-daniel-mueller 2024-09-20
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
b18b0e5 jens-daniel-mueller 2024-06-28
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
b754e95 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
dbc1fc6 jens-daniel-mueller 2024-05-16
1e4c153 jens-daniel-mueller 2024-05-14
009791f jens-daniel-mueller 2024-05-14

[[2]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
d3235fa jens-daniel-mueller 2024-09-20
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b18b0e5 jens-daniel-mueller 2024-06-28
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
b754e95 jens-daniel-mueller 2024-05-28
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
dbc1fc6 jens-daniel-mueller 2024-05-16
1e4c153 jens-daniel-mueller 2024-05-14
009791f jens-daniel-mueller 2024-05-14

[[3]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
d3235fa jens-daniel-mueller 2024-09-20
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b18b0e5 jens-daniel-mueller 2024-06-28
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
b754e95 jens-daniel-mueller 2024-05-28
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
dbc1fc6 jens-daniel-mueller 2024-05-16
1e4c153 jens-daniel-mueller 2024-05-14
009791f jens-daniel-mueller 2024-05-14

[[4]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
d3235fa jens-daniel-mueller 2024-09-20
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
b754e95 jens-daniel-mueller 2024-05-28
29e0ec4 jens-daniel-mueller 2024-05-21
5af03d1 jens-daniel-mueller 2024-05-17
dbc1fc6 jens-daniel-mueller 2024-05-16
1e4c153 jens-daniel-mueller 2024-05-14
009791f jens-daniel-mueller 2024-05-14
pco2_product_biome_annual_fCO2_decomposition <-
  pco2_product_biome_monthly_fCO2_decomposition %>%
  filter(product %in% pco2_product_list) %>%
  group_by(year, name, biome, product) %>%
  summarise(resid = mean(resid)) %>%
  ungroup() %>%
  group_by(year, name, biome) %>%
  summarise(resid_sd = sd(resid), resid = mean(resid)) %>%
  ungroup()

pco2_product_biome_annual_fCO2_decomposition %>%
  ggplot(aes(year, resid, colour = name)) +
  geom_hline(yintercept = 0) +
  geom_path() +
  facet_wrap( ~ biome)

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
pco2_product_biome_annual_fCO2_decomposition %>%
  pivot_wider(values_from = contains("resid")) %>% 
  ggplot(aes(resid_sfco2_therm, resid_sfco2_nontherm, col = "observed")) +
  geom_vline(xintercept = 0) +
  geom_hline(yintercept = 0) +
  geom_abline(slope = -1, intercept = 0) +
  geom_smooth(method = "lm", se = FALSE) +
  geom_point(shape = 21) +
  scale_color_muted() +
  facet_wrap( ~ biome, scales = "free")

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
pco2_product_biome_annual_fCO2_decomposition %>%
  filter(year == 2023) %>%
  ggplot(aes(name, resid, fill = name)) +
  geom_hline(yintercept = 0) +
  geom_col(col = "grey20") +
  scale_fill_manual(values = c(warm_color, cold_color, "grey80")) +
  labs(y = labels_breaks("sfco2")$i_legend_title) +
  facet_wrap(~ biome, scales = "free_y") +
  theme(
    legend.title = element_blank(),
    axis.text.x = element_blank(),
    axis.ticks.x = element_blank(),
    axis.title.x = element_blank(),
    axis.title.y = element_markdown(),
    legend.position = c(0.9, 0.1)
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
pco2_product_biome_annual_fCO2_decomposition %>%
  filter(year == 2023, biome %in% c("PEQU-E", "NA-STPS")) %>%
  mutate(name = case_when(
    name == "sfco2_therm" ~ "thermal",
    name == "sfco2_nontherm" ~ "non-thermal",
    name == "sfco2_total" ~ "total"
  ),
  name = fct_inorder(name)) %>% 
  ggplot(aes(name, resid, fill = name)) +
  geom_hline(yintercept = 0) +
  geom_col(col = "grey20") +
  geom_text(
    data = . %>% filter(biome == "NA-STPS"),aes(
    label = name,
    col = name,
    hjust = if_else(sign(resid) > 0, 0, 1),
    y = resid + if_else(sign(resid) > 0, 1, -1)
  ),
  angle = 90,
  fontface = "bold") +
  scale_color_manual(values = c(warm_color, cold_color, "grey20")) +
  scale_fill_manual(values = c(warm_color, cold_color, "grey20")) +
  labs(y = labels_breaks("sfco2")$i_legend_title) +
  scale_y_continuous(breaks = seq(-20, 20, 20)) +
  facet_grid(. ~ fct_rev(biome)) +
  theme_classic() +
  theme(
    legend.title = element_blank(),
    axis.text.x = element_blank(),
    axis.ticks.x = element_blank(),
    axis.title.x = element_blank(),
    axis.title.y = element_markdown(),
    strip.background = element_blank(),
    strip.text = element_text(face = "bold", size = 16),
    axis.line.x = element_blank(),
    legend.position = "none"
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
3bb8433 jens-daniel-mueller 2024-09-03
c50054d jens-daniel-mueller 2024-08-29
# ggsave(width = 6,
#        height = 3,
#        dpi = 600,
#        filename = "../output/biome_annual_fco2_decomposition.jpg")

pco2_product_biome_annual_fCO2_decomposition %>%
  filter(year == 2023) %>%
  mutate(name = case_when(
    name == "sfco2_therm" ~ "thermal",
    name == "sfco2_nontherm" ~ "non-thermal",
    name == "sfco2_total" ~ "total"
  ),
  name = fct_inorder(name)) %>% 
  ggplot(aes(name, resid, fill = name)) +
  geom_hline(yintercept = 0) +
  geom_col(col = "grey20") +
    geom_linerange(aes(
    name,
    ymin = resid - resid_sd,
    ymax = resid + resid_sd
  ), col = "grey20") +
  scale_color_manual(values = c(warm_color, cold_color, "grey20")) +
  scale_fill_manual(values = c(warm_color, cold_color, "grey20")) +
  labs(y = labels_breaks("sfco2")$i_legend_title) +
  facet_wrap(. ~ biome, scales = "free_y", ncol = 4) +
  theme(
    legend.title = element_blank(),
    legend.position = c(0.9,0.1),
    axis.text.x = element_blank(),
    axis.ticks.x = element_blank(),
    axis.title.x = element_blank(),
    axis.title.y = element_markdown()
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
713d232 jens-daniel-mueller 2024-09-12
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
ggsave(width = 7,
       height = 7,
       dpi = 600,
       filename = "../output/biome_annual_fco2_decomposition_all_biomes.jpg")

Flux attribution

Seasonal

pco2_product_biome_annual_flux_attribution_ensemble <- 
pco2_product_biome_annual_flux_attribution %>%
      filter(product %in% pco2_product_list) %>% 
      group_by(biome, name) %>% 
      summarise(
        resid_sd = sd(resid),
        resid = mean(resid)) %>% 
      ungroup()



pco2_product_biome_annual_flux_attribution_ensemble %>%
  filter(biome %in% c("Global non-polar", key_biomes)) %>%
  ggplot() +
  geom_hline(yintercept = 0) +
  geom_col(aes("", resid), fill = "grey90", col = "grey20") +
  geom_point(
    data = pco2_product_biome_annual_flux_attribution %>%
      filter(biome %in% c("Global non-polar", key_biomes)),
    aes("", resid, fill = product),
    shape = 21
  ) +
  scale_fill_manual(values = color_products) +
  scale_y_continuous(breaks = seq(-10, 10, 0.1)) +
  labs(y = labels_breaks(unique("fgco2"))$i_legend_title) +
  facet_grid(
    biome ~ name,
    labeller = labeller(name = x_axis_labels),
    scales = "free_y",
    space = "free_y",
    switch = "x"
  ) +
  theme(
    legend.title = element_blank(),
    axis.text.x = element_blank(),
    axis.ticks.x = element_blank(),
    axis.title.x = element_blank(),
    axis.title.y = element_markdown(),
    strip.text.x.bottom = element_markdown(),
    strip.placement = "outside",
    strip.background.x = element_blank(),
    legend.position = "top"
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c62d92d jens-daniel-mueller 2024-08-23
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b99b329 jens-daniel-mueller 2024-05-28
7013182 jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
571e2f8 jens-daniel-mueller 2024-05-22
563345f jens-daniel-mueller 2024-05-21
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
b7d0689 jens-daniel-mueller 2024-05-15
00ad9d5 jens-daniel-mueller 2024-05-15
47f8868 jens-daniel-mueller 2024-05-15
pco2_product_biome_annual_flux_attribution_ensemble %>%
  ggplot() +
  geom_hline(yintercept = 0) +
  geom_col(aes(name, resid, fill = name), col = "grey20") +
  geom_linerange(aes(
    name,
    ymin = resid - resid_sd,
    ymax = resid + resid_sd
  ), col = "grey20") +
  scale_fill_bright(labels = x_axis_labels) +
  labs(y = labels_breaks(unique("fgco2"))$i_legend_title) +
  facet_wrap( ~ biome, scales = "free_y", ncol = 4) +
  theme(
    legend.title = element_blank(),
    legend.text = element_markdown(),
    legend.position = c(0.8,0.1),
    axis.text.x = element_blank(),
    axis.ticks.x = element_blank(),
    axis.title.x = element_blank(),
    axis.title.y = element_markdown()
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
713d232 jens-daniel-mueller 2024-09-12
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b99b329 jens-daniel-mueller 2024-05-28
7013182 jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
571e2f8 jens-daniel-mueller 2024-05-22
563345f jens-daniel-mueller 2024-05-21
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
b7d0689 jens-daniel-mueller 2024-05-15
00ad9d5 jens-daniel-mueller 2024-05-15
47f8868 jens-daniel-mueller 2024-05-15
ggsave(width = 7,
       height = 7,
       dpi = 600,
       filename = "../output/biome_annual_flux_attribution_all_biomes.jpg")


ggplot() +
  geom_hline(yintercept = 0) +
  geom_col(
    data = pco2_product_biome_annual_flux_attribution %>%
      filter(biome %in% c("Global non-polar", key_biomes)),
    aes("", resid, fill = product),
    position = position_dodge(width = 1),
    alpha = 0.5, col = "grey30"
  ) +
  geom_point(
    data = pco2_product_biome_monthly_flux_attribution %>%
      filter(year == 2023,
             biome %in% c("Global non-polar", key_biomes)),
    aes("", resid, fill = product),
    position = position_dodge(width = 1),
    shape = 21, alpha = 0.5, col = "grey30"
  ) +
  scale_fill_manual(values = color_products) +
  # scale_color_manual(values = color_products) +
  scale_y_continuous(breaks = seq(-10,10,0.2)) +
  labs(y = labels_breaks(unique("fgco2"))$i_legend_title) +
  facet_grid(biome ~ name,
             labeller = labeller(name = x_axis_labels),
                          scales = "free_y",
             space = "free_y",
             switch = "x") +
  theme(
    legend.title = element_blank(),
    axis.text.x = element_blank(),
    axis.ticks.x = element_blank(),
    axis.title.x = element_blank(),
    axis.title.y = element_markdown(),
    strip.text.x.bottom = element_markdown(),
    strip.placement = "outside",
    strip.background.x = element_blank(),
    legend.position = "top"
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
c62d92d jens-daniel-mueller 2024-08-23
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b99b329 jens-daniel-mueller 2024-05-28
7013182 jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
571e2f8 jens-daniel-mueller 2024-05-22
563345f jens-daniel-mueller 2024-05-21
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
b7d0689 jens-daniel-mueller 2024-05-15
00ad9d5 jens-daniel-mueller 2024-05-15
47f8868 jens-daniel-mueller 2024-05-15
pco2_product_biome_monthly_flux_attribution %>%
  filter(year == 2023,
         biome %in% c("Global non-polar", key_biomes)) %>%
  ggplot() +
  geom_hline(yintercept = 0) +
  geom_path(
    aes(month, resid, col = product)
  ) +
  geom_point(
    aes(month, resid, fill = product),
    shape = 21,
    alpha = 0.5,
    col = "grey30"
  ) +
  scale_fill_manual(values = color_products) +
  scale_color_manual(values = color_products) +
  scale_y_continuous(breaks = seq(-10,10,0.2)) +
  scale_x_continuous(position = "top", breaks = seq(1,12,3)) +
  labs(y = labels_breaks(unique("fgco2"))$i_legend_title) +
  facet_grid(biome ~ name,
             labeller = labeller(name = x_axis_labels),
             scales = "free_y",
             space = "free_y", 
             switch = "x") +
  theme(
    legend.title = element_blank(),
    axis.title.y = element_markdown(),
    strip.text.x.bottom = element_markdown(),
    strip.placement = "outside",
    strip.background.x = element_blank(),
    legend.position = "top"
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
b7d0689 jens-daniel-mueller 2024-05-15
00ad9d5 jens-daniel-mueller 2024-05-15
47f8868 jens-daniel-mueller 2024-05-15
pco2_product_biome_monthly_flux_attribution %>%
  filter(biome %in% c("Global non-polar", key_biomes)) %>% 
  group_split(biome) %>%
  # head(1) %>%
  map(
    ~ p_season(
      df = .x,
      title  = paste("Anomalies from predicted monthly mean |", .x$biome)
    ) +
      facet_grid(
        name ~ product,
        labeller = labeller(name = x_axis_labels),
        switch = "y"
      ) +
      theme(
        strip.text.y.left = element_markdown(),
        strip.placement = "outside",
        strip.background.y = element_blank(),
        axis.title.y = element_blank(),
        legend.title = element_blank()
      )
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
c62d92d jens-daniel-mueller 2024-08-23
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
b18b0e5 jens-daniel-mueller 2024-06-28
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
aea0b99 jens-daniel-mueller 2024-05-16
3310cf6 jens-daniel-mueller 2024-05-16
b7d0689 jens-daniel-mueller 2024-05-15

[[2]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b18b0e5 jens-daniel-mueller 2024-06-28
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
aea0b99 jens-daniel-mueller 2024-05-16
3310cf6 jens-daniel-mueller 2024-05-16
b7d0689 jens-daniel-mueller 2024-05-15

[[3]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b18b0e5 jens-daniel-mueller 2024-06-28
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
aea0b99 jens-daniel-mueller 2024-05-16
3310cf6 jens-daniel-mueller 2024-05-16
b7d0689 jens-daniel-mueller 2024-05-15

[[4]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
aea0b99 jens-daniel-mueller 2024-05-16
3310cf6 jens-daniel-mueller 2024-05-16
b7d0689 jens-daniel-mueller 2024-05-15

Annual

# pco2_product_biome_annual_flux_attribution <-
# full_join(
# pco2_product_biome_annual_flux_attribution %>% 
#   filter(year == 2023) %>% 
#   select(-year),
# pco2_product_biome_annual_flux_attribution %>% 
#   filter(year != 2023) %>% 
#   group_by(product, biome, name) %>% 
#   summarise(resid_mean = mean(abs(resid))) %>% 
#   ungroup())

pco2_product_biome_annual_flux_attribution %>%
  filter(biome %in% c("Global non-polar", key_biomes)) %>% 
  group_split(biome) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x) +
      geom_col(aes("x", resid, fill = product),
               position = "dodge2") +
      scale_fill_manual(values = color_products) +
      geom_col(
        aes(
          "x",
          resid_mean * sign(resid),
          group = product,
          col = paste0("Mean\nexcl.",2023)
        ),
        position = "dodge2",
        fill = "transparent"
      ) +
      labs(y = labels_breaks(unique("fgco2"))$i_legend_title,
           title = .x$biome) +
      facet_grid(
        .~name,
        labeller = labeller(name = x_axis_labels),
        switch = "x"
      ) +
      scale_color_grey() +
      theme(
        legend.title = element_blank(),
        axis.text.x = element_blank(),
        axis.ticks.x = element_blank(),
        axis.title.x = element_blank(),
        axis.title.y = element_markdown(),
        strip.text.x.bottom = element_markdown(),
        strip.placement = "outside",
        strip.background.x = element_blank(),
        legend.position = "top"
      )
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c62d92d jens-daniel-mueller 2024-08-23
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
aea0b99 jens-daniel-mueller 2024-05-16
3310cf6 jens-daniel-mueller 2024-05-16
b7d0689 jens-daniel-mueller 2024-05-15

[[2]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
aea0b99 jens-daniel-mueller 2024-05-16
3310cf6 jens-daniel-mueller 2024-05-16
b7d0689 jens-daniel-mueller 2024-05-15

[[3]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
aea0b99 jens-daniel-mueller 2024-05-16
3310cf6 jens-daniel-mueller 2024-05-16
b7d0689 jens-daniel-mueller 2024-05-15

[[4]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
acaac5f jens-daniel-mueller 2024-05-28
b99b329 jens-daniel-mueller 2024-05-28
7b6f27c jens-daniel-mueller 2024-05-27
29e0ec4 jens-daniel-mueller 2024-05-21
7c08e1c jens-daniel-mueller 2024-05-21
dbc1fc6 jens-daniel-mueller 2024-05-16
aea0b99 jens-daniel-mueller 2024-05-16
3310cf6 jens-daniel-mueller 2024-05-16
b7d0689 jens-daniel-mueller 2024-05-15

Merged seasonality plots

pco2_product_biome_monthly_detrended %>%
  filter(product %in% pco2_product_list) %>%
  group_by(year, month, biome, name) %>%
  summarise(across(where(is.numeric), mean)) %>%
  ungroup() %>%
  filter(name %in% c("temperature", "fgco2"), biome %in% key_biomes,
         year != 2023) %>%
  group_by(month, biome, name) %>% 
  summarise(resid_sd = sd(resid)) %>% 
  ungroup() %>% 
  ggplot(aes(month, resid_sd)) +
  geom_path() +
  facet_grid(name ~ biome, scales = "free_y")

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
b7806ad jens-daniel-mueller 2024-07-02
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
aeca619 jens-daniel-mueller 2024-06-19
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
pco2_product_biome_monthly_detrended %>%
  filter(product %in% pco2_product_list) %>%
  group_by(year, month, biome, name) %>%
  summarise(across(where(is.numeric), mean)) %>%
  ungroup() %>%
  filter(name %in% c("temperature", "fgco2"), biome %in% key_biomes) %>%
  p_season(dim_col = "biome", 
           title = "Ensemble mean anomalies from predicted monthly mean") +
  theme(axis.title.x = element_blank(), axis.text.x = element_blank()) +
  new_scale_color() +
  scale_color_manual(values = warm_cool_gradient[15]) +
  geom_path(
    data = pco2_product_biome_monthly_detrended %>%
      filter(
        product %in% gobm_product_list,
        year == 2023,
        name %in% c("temperature", "fgco2"),
        biome %in% key_biomes
      ) %>%
      group_by(year, month, biome, name) %>%
      summarise(across(where(is.numeric), mean)) %>%
      ungroup(),
    aes(month, resid, col = "2023\nGOBM mean")
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
ba4aaac jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
aeca619 jens-daniel-mueller 2024-06-19
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
acaac5f jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
ggsave(width = 9,
       height = 4,
       dpi = 600,
       filename = "../output/biome_seasonal_anomaly_fgco2_sst_ensemble_mean_pco2_products.jpg")

pco2_product_biome_monthly_flux_attribution %>%
  filter(product %in% pco2_product_list) %>%
  group_by(year, month, biome, name) %>%
  summarise(across(where(is.numeric), mean)) %>%
  ungroup() %>%
  filter(name %in% c("resid_fgco2_dfco2", "resid_fgco2_kw_sol"),
         biome %in% key_biomes) %>%
  p_season(dim_col = "biome",
           title = "Ensemble mean drivers of flux anomaly",
           scales = "fixed") +
  new_scale_color() +
  scale_color_manual(values = warm_cool_gradient[15]) +
  geom_path(
    data = pco2_product_biome_monthly_flux_attribution %>%
      filter(
        product %in% gobm_product_list,
        year == 2023,
        name %in% c("resid_fgco2_dfco2", "resid_fgco2_kw_sol"),
        biome %in% key_biomes
      ) %>%
      group_by(year, month, biome, name) %>%
      summarise(across(where(is.numeric), mean)) %>%
      ungroup(),
    aes(month, resid, col = "2023\nGOBM mean")
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
2f165ec jens-daniel-mueller 2024-07-23
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
b18b0e5 jens-daniel-mueller 2024-06-28
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
8cdfed7 jens-daniel-mueller 2024-06-21
aeca619 jens-daniel-mueller 2024-06-19
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
b754e95 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
ggsave(width = 9,
       height = 4,
       dpi = 600,
       filename = "../output/biome_seasonal_anomaly_fgco2_attribution_ensemble_mean_pco2_products.jpg")

pco2_product_biome_monthly_fCO2_decomposition %>%
  filter(product %in% pco2_product_list) %>%
  group_by(year, month, biome, name) %>%
  summarise(across(where(is.numeric), mean)) %>%
  ungroup() %>%
  filter(name %in% c("sfco2_nontherm", "sfco2_therm", "sfco2_total"),
         biome %in% c("Global non-polar", key_biomes)) %>%
  p_season(dim_col = "biome",
           title = "Ensemble mean decomposition of fCO2 anomaly")  

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
d3235fa jens-daniel-mueller 2024-09-20
878c674 jens-daniel-mueller 2024-09-10
c50054d jens-daniel-mueller 2024-08-29
aecb187 jens-daniel-mueller 2024-08-28
c62d92d jens-daniel-mueller 2024-08-23
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
ggsave(width = 9,
       height = 4,
       dpi = 600,
       filename = "../output/biome_seasonal_anomaly_fco2_decomposition_ensemble_mean_pco2_products.jpg")
pco2_product_biome_monthly_detrended %>% 
  filter(year == 2023,
         name %in% c("temperature", "fgco2"),
         biome %in% c("Global non-polar", key_biomes)) %>%
  ggplot(aes(month, resid)) +
  geom_hline(yintercept = 0, linewidth = 0.5) +
  geom_path(aes(col = product)) +
  scale_color_manual(values = color_products) +
  scale_x_continuous(breaks = seq(1, 12, 3), expand = c(0, 0)) +
  labs(x = "Month",
       title = "Anomalies from predicted monthly mean") +
  facet_grid(
    name ~ biome,
    scales = "free_y",
    labeller = labeller(name = x_axis_labels),
    switch = "y"
  ) +
  theme(
    strip.text.y.left = element_markdown(),
    strip.placement = "outside",
    strip.background.y = element_blank(),
    axis.title.y = element_blank(),
    legend.title = element_blank()
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c62d92d jens-daniel-mueller 2024-08-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
aeca619 jens-daniel-mueller 2024-06-19
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
7013182 jens-daniel-mueller 2024-05-27
7868a54 jens-daniel-mueller 2024-05-22
ggsave(width = 9,
       height = 3,
       dpi = 600,
       filename = "../output/biome_seasonal_anomaly_fgco2_sst_all_products.jpg")

pco2_product_biome_monthly_flux_attribution %>%
  filter(year == 2023,
         name %in% c("resid_fgco2_dfco2", "resid_fgco2_kw_sol"),
         biome %in% c("Global non-polar", key_biomes)) %>%
  ggplot(aes(month, resid)) +
  geom_hline(yintercept = 0, linewidth = 0.5) +
  geom_path(aes(col = product)) +
  scale_color_manual(values = color_products) +
  scale_x_continuous(breaks = seq(1, 12, 3), expand = c(0, 0)) +
  labs(x = "Month",
       title = "Drivers of flux anomaly") +
  facet_grid(
    name ~ biome,
    scales = "fixed",
    labeller = labeller(name = x_axis_labels),
    switch = "y"
  ) +
  theme(
    strip.text.y.left = element_markdown(),
    strip.placement = "outside",
    strip.background.y = element_blank(),
    axis.title.y = element_blank(),
    legend.title = element_blank()
  )

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
878c674 jens-daniel-mueller 2024-09-10
c62d92d jens-daniel-mueller 2024-08-23
2f165ec jens-daniel-mueller 2024-07-23
4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
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197dac4 jens-daniel-mueller 2024-06-27
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aeca619 jens-daniel-mueller 2024-06-19
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
acaac5f jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
7013182 jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
7868a54 jens-daniel-mueller 2024-05-22
ggsave(width = 9,
       height = 3,
       dpi = 600,
       filename = "../output/biome_seasonal_anomaly_fgco2_attribution_all_products.jpg")

pco2_product_biome_monthly_fCO2_decomposition %>% 
  filter(year == 2023,
         name %in% c("sfco2_nontherm", "sfco2_therm", "sfco2_total"),
         biome %in% c("Global non-polar", key_biomes)) %>%
  ggplot(aes(month, resid)) +
  geom_hline(yintercept = 0, linewidth = 0.5) +
  geom_path(aes(col = product)) +
  scale_color_manual(values = color_products) +
  scale_x_continuous(breaks = seq(1, 12, 3), expand = c(0, 0)) +
  labs(x = "Month",
       title = "Decomposition of fCO2 anomaly") +
  facet_grid(
    name ~ biome,
    scales = "free_y",
    labeller = labeller(name = x_axis_labels),
    switch = "y"
  ) +
  theme(
    strip.text.y.left = element_markdown(),
    strip.placement = "outside",
    strip.background.y = element_blank(),
    axis.title.y = element_blank(),
    legend.title = element_blank()
  )

Version Author Date
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d3235fa jens-daniel-mueller 2024-09-20
878c674 jens-daniel-mueller 2024-09-10
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4ef742b jens-daniel-mueller 2024-07-20
a58162a jens-daniel-mueller 2024-07-11
4a437fb jens-daniel-mueller 2024-07-09
ba4aaac jens-daniel-mueller 2024-07-08
67956dd jens-daniel-mueller 2024-07-08
b7806ad jens-daniel-mueller 2024-07-02
197dac4 jens-daniel-mueller 2024-06-27
9589349 jens-daniel-mueller 2024-06-27
8cdfed7 jens-daniel-mueller 2024-06-21
aeca619 jens-daniel-mueller 2024-06-19
d2a80a9 jens-daniel-mueller 2024-06-14
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
9cfceb9 jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
b99b329 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
7013182 jens-daniel-mueller 2024-05-27
fe97ed3 jens-daniel-mueller 2024-05-25
7868a54 jens-daniel-mueller 2024-05-22
ggsave(width = 9,
       height = 4,
       dpi = 600,
       filename = "../output/biome_seasonal_anomaly_fco2_decomposition_all_products.jpg")

Biome profiles

The following analysis is available for GOBMs only.

Annual means

2023 anomaly

pco2_product_profiles_annual %>%
  filter(biome %in% key_biomes,
         name %in% name_core) %>% 
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x) +
      geom_vline(xintercept = 0) +
      geom_path(aes(resid, depth, group = year), col = "grey30", alpha = 0.3) +
      geom_path(data = .x %>% filter(year == 2023),
                aes(resid, depth, col = as.factor(year)),
                linewidth = 1) +
      scale_color_brewer(palette = "Set1") +
      scale_y_continuous(trans = trans_reverser("sqrt"),
                         breaks = c(50,100,200,400)) +
      coord_cartesian(expand = 0) +
      facet_grid2(biome ~ product,
                  scales = "free_x", independent = "x") +
      labs(y = "Depth (m)",
           x = labels_breaks(.x %>% distinct(name))$i_legend_title) +
      theme(legend.title = element_blank(),
            axis.title.x = element_markdown())
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
d533f68 jens-daniel-mueller 2024-05-28
97eff6a jens-daniel-mueller 2024-05-25

[[2]]

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197dac4 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
d533f68 jens-daniel-mueller 2024-05-28
97eff6a jens-daniel-mueller 2024-05-25

[[3]]

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a58162a jens-daniel-mueller 2024-07-11
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197dac4 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
4d3ccb2 jens-daniel-mueller 2024-05-29
d533f68 jens-daniel-mueller 2024-05-28
7013182 jens-daniel-mueller 2024-05-27
97eff6a jens-daniel-mueller 2024-05-25

Monthly means

2023 anomaly

pco2_product_profiles_monthly %>%
  filter(year == 2023,
         biome %in% key_biomes,
         name %in% name_core) %>% 
  group_split(name) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x) +
      geom_vline(xintercept = 0) +
      geom_path(aes(resid, depth, col = as.factor(month)),
                linewidth = 1) +
      scale_color_viridis_d(option = "magma", end = .8) +
      scale_y_continuous(trans = trans_reverser("sqrt"),
                         breaks = c(50,100,200,400)) +
      coord_cartesian(expand = 0) +
      facet_grid2(biome ~ product,
                  scales = "free_x", independent = "x") +
      labs(y = "Depth (m)",
           x = labels_breaks(.x %>% distinct(name))$i_legend_title) +
      theme(legend.title = element_blank(),
            axis.title.x = element_markdown())
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
fbba0a0 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
97eff6a jens-daniel-mueller 2024-05-25

[[2]]

Version Author Date
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c50054d jens-daniel-mueller 2024-08-29
a58162a jens-daniel-mueller 2024-07-11
ba4aaac jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
fbba0a0 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
97eff6a jens-daniel-mueller 2024-05-25

[[3]]

Version Author Date
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c50054d jens-daniel-mueller 2024-08-29
a58162a jens-daniel-mueller 2024-07-11
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197dac4 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
4d3ccb2 jens-daniel-mueller 2024-05-29
fbba0a0 jens-daniel-mueller 2024-05-28
d533f68 jens-daniel-mueller 2024-05-28
7013182 jens-daniel-mueller 2024-05-27
97eff6a jens-daniel-mueller 2024-05-25
pco2_product_profiles_monthly %>%
  filter(year == 2023,
         biome %in% key_biomes,
         product == "ETHZ-CESM",
         name %in% name_core) %>% 
  ggplot() +
  geom_vline(xintercept = 0) +
  geom_path(aes(resid, depth, col = as.factor(month)),
            linewidth = 1) +
  scale_color_viridis_d(option = "magma", end = .8,
                        name = paste("Month of\n", 2023)) +
  scale_y_continuous(trans = trans_reverser("sqrt"),
                     breaks = c(50, 100, 200, 400)) +
  coord_cartesian(expand = 0) +
  facet_grid2(
    biome ~ name,
    scales = "free_x",
    independent = "x",
    labeller = labeller(name = x_axis_labels),
    switch = "x"
  ) +
  theme(
    strip.text.x.bottom = element_markdown(),
    strip.placement = "outside",
    strip.background.x = element_blank(),
    axis.title.x = element_blank()
  ) +
  labs(y = "Depth (m)",
       title = "Anomalies from monthly baseline (deseasonalized)")

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
ba4aaac jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
8cdfed7 jens-daniel-mueller 2024-06-21
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
e83b65a jens-daniel-mueller 2024-05-31
6fc213f jens-daniel-mueller 2024-05-31
fc1b92d jens-daniel-mueller 2024-05-30
4d3ccb2 jens-daniel-mueller 2024-05-29
acaac5f jens-daniel-mueller 2024-05-28
# ggsave(width = 10,
#        height = 8,
#        dpi = 600,
#        filename = "../output/CESM_2023_anomaly_profiles.jpg")

pco2_product_profiles_monthly %>%
  filter(year == 2023,
         biome %in% key_biomes,
         product == "ETHZ-CESM",
         name %in% name_core) %>%
  arrange(month) %>% 
  group_by(biome, name, depth) %>% 
  mutate(resid = resid - first(resid)) %>% 
  ungroup() %>% 
  ggplot() +
  geom_vline(xintercept = 0) +
  geom_path(aes(resid, depth, col = as.factor(month)),
            linewidth = 1) +
  scale_color_viridis_d(option = "magma", end = .8,
                        name = paste("Month of\n", 2023)) +
  scale_y_continuous(trans = trans_reverser("sqrt"),
                     breaks = c(50, 100, 200, 400)) +
  coord_cartesian(expand = 0) +
  facet_grid2(
    biome ~ name,
    scales = "free_x",
    independent = "x",
    labeller = labeller(name = x_axis_labels),
    switch = "x"
  ) +
  theme(
    strip.text.x.bottom = element_markdown(),
    strip.placement = "outside",
    strip.background.x = element_blank(),
    axis.title.x = element_blank()
  ) +
  labs(y = "Depth (m)",
       title = "Monthly anomaly evolution relative to January 2023")

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
2a28b07 jens-daniel-mueller 2024-07-22
ba4aaac jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
6fc213f jens-daniel-mueller 2024-05-31
fc1b92d jens-daniel-mueller 2024-05-30
pco2_product_profiles_monthly %>%
  filter(year == 2023,
         biome %in% key_biomes,
         product == "FESOM-REcoM",
         name %in% name_core) %>% 
  ggplot() +
  geom_vline(xintercept = 0) +
  geom_path(aes(resid, depth, col = as.factor(month)),
            linewidth = 1) +
  scale_color_viridis_d(option = "magma", end = .8,
                        name = paste("Month of\n", 2023)) +
  scale_y_continuous(trans = trans_reverser("sqrt"),
                     breaks = c(50, 100, 200, 400)) +
  coord_cartesian(expand = 0) +
  facet_grid2(
    biome ~ name,
    scales = "free_x",
    independent = "x",
    labeller = labeller(name = x_axis_labels),
    switch = "x"
  ) +
  theme(
    strip.text.x.bottom = element_markdown(),
    strip.placement = "outside",
    strip.background.x = element_blank(),
    axis.title.x = element_blank()
  ) +
  labs(y = "Depth (m)",
       title = "Anomalies from monthly baseline (deseasonalized)")

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
ba4aaac jens-daniel-mueller 2024-07-08
197dac4 jens-daniel-mueller 2024-06-27
f03b1d8 jens-daniel-mueller 2024-06-12
de65385 jens-daniel-mueller 2024-06-12
34b4fe2 jens-daniel-mueller 2024-06-12
0a7394b jens-daniel-mueller 2024-06-11
54af933 jens-daniel-mueller 2024-06-03
# ggsave(width = 10,
#        height = 8,
#        dpi = 600,
#        filename = "../output/FESOM_2023_anomaly_profiles.jpg")

Hovmoeller

plot_list <-
  full_join(
    pco2_product_profiles_monthly %>%
      filter(
        year == 2023,
        biome %in% key_biomes,
        name %in% c("sdissic_stalk", "thetao")
      ),
    pco2_product_biome_monthly_detrended %>%
      filter(
        biome %in% key_biomes,
        name %in% "mld",
        year == 2023,
        product %in% gobm_product_list
      ) %>%
      select(product, month, biome, mld = value)
  ) %>%
  group_split(name, biome) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x) +
      geom_contour_filled(aes(month, depth, z = resid)) +
      geom_line(aes(month, mld))+
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        super = ScaleDiscretised,
        name = labels_breaks(.x %>% distinct(name))$i_legend_title
      )+
      scale_y_continuous(trans = trans_reverser("sqrt"), breaks = c(20, 50, 100, 200, 400)) +
      coord_cartesian(expand = 0,
                      ylim = c(300,NA)) +
      facet_grid(product ~ biome) +
      guides(
        fill = guide_colorsteps(
          barheight = unit(0.3, "cm"),
          barwidth = unit(10, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(
        legend.position = "top",
        legend.title.align = 1,
        legend.box.spacing = unit(0.1, "cm"),
        legend.title = element_markdown(halign = 1,
                                        lineheight = 1.5)
      )
  )

plot_list
[[1]]

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[[2]]

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ba4aaac jens-daniel-mueller 2024-07-08

[[3]]

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[[4]]

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[[5]]

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ba4aaac jens-daniel-mueller 2024-07-08

[[6]]

Version Author Date
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ba4aaac jens-daniel-mueller 2024-07-08
ggsave(plot = wrap_plots(plot_list,
                         ncol = 3),
       width = 18,
       height = 12,
       dpi = 600,
       filename = "../output/profiles_hovmoeller_all_gobm.jpg")

plot_list <-
  full_join(
    pco2_product_profiles_monthly %>%
      filter(
        year == 2023,
        biome %in% key_biomes,
        name %in% c("sdissic_stalk", "thetao")
      ) %>% 
      arrange(month) %>% 
      group_by(product, name, biome, depth) %>% 
      mutate(resid = if_else(name == "sdissic_stalk",
                             resid - first(resid),
                             resid)) %>% 
      ungroup(),
    pco2_product_biome_monthly_detrended %>%
      filter(
        biome %in% key_biomes,
        name %in% "mld",
        year == 2023,
        product %in% gobm_product_list
      ) %>%
      select(product, month, biome, mld = value)
  ) %>%
  group_split(name, biome) %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x) +
      geom_contour_filled(aes(month, depth, z = resid)) +
      geom_line(aes(month, mld))+
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        super = ScaleDiscretised,
        name = labels_breaks(.x %>% distinct(name))$i_legend_title
      )+
      scale_y_continuous(trans = trans_reverser("sqrt"), breaks = c(20, 50, 100, 200, 400)) +
      coord_cartesian(expand = 0,
                      ylim = c(300,NA)) +
      facet_grid(product ~ biome) +
      guides(
        fill = guide_colorsteps(
          barheight = unit(0.3, "cm"),
          barwidth = unit(10, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(
        legend.position = "top",
        legend.title.align = 1,
        legend.box.spacing = unit(0.1, "cm"),
        legend.title = element_markdown(halign = 1,
                                        lineheight = 1.5)
      )
  )

ggsave(plot = wrap_plots(plot_list,
                         ncol = 3),
       width = 18,
       height = 12,
       dpi = 600,
       filename = "../output/profiles_hovmoeller_all_gobm_evolution.jpg")
CESM_depth_grid <- pco2_product_profiles_monthly %>%
  filter(year == 2023, 
         product == "ETHZ-CESM",
         biome %in% key_biomes,
         name %in% c("sdissic_stalk", "thetao")) %>%
  distinct(name, biome, month, depth)

pco2_product_profiles_monthly_FESOM_regrid <-
full_join(
  pco2_product_profiles_monthly %>%
    filter(
      year == 2023,
      product == "FESOM-REcoM",
      biome %in% key_biomes,
      name %in% c("sdissic_stalk", "thetao")
    ),
  CESM_depth_grid %>% mutate(product = "FESOM-REcoM")
)

pco2_product_profiles_monthly_FESOM_regrid <-
pco2_product_profiles_monthly_FESOM_regrid %>%
  arrange(product, name, biome, month, depth)
  
  
pco2_product_profiles_monthly_FESOM_regrid <-
pco2_product_profiles_monthly_FESOM_regrid %>%
  arrange(depth) %>%
  group_by(product, name, biome, month) %>%
  mutate(resid = spline(
    depth,
    resid,
    method = "natural",
    xout = depth
  )$y) %>%
  ungroup()

CESM_depth <- 
  CESM_depth_grid %>% distinct(depth) %>% pull()

pco2_product_profiles_monthly_FESOM_regrid <-
  pco2_product_profiles_monthly_FESOM_regrid %>%
  filter(depth %in% CESM_depth)


pco2_product_profiles_monthly_merged <-
  bind_rows(
    pco2_product_profiles_monthly_FESOM_regrid,
    pco2_product_profiles_monthly %>%
      filter(
        year == 2023,
        product == "ETHZ-CESM",
        biome %in% key_biomes,
        name %in% c("sdissic_stalk", "thetao")
      )
  )


pco2_product_profiles_monthly_ensemble <-
  pco2_product_profiles_monthly_merged %>%
  group_by(name, biome, month, depth) %>%
  summarise(resid = mean(resid)) %>%
  ungroup()


pco2_product_profiles_monthly_ensemble <-
  full_join(
    pco2_product_profiles_monthly_ensemble %>%
      filter(
        biome %in% key_biomes,
        name %in% c("sdissic_stalk", "thetao")
      ),
    pco2_product_biome_monthly_detrended %>%
      filter(
        biome %in% key_biomes,
        name %in% "mld",
        year == 2023,
        product %in% gobm_product_list
      ) %>%
      group_by(month, biome) %>% 
      summarise(mld = mean(value)) %>% 
      ungroup()
  ) 



# plot_list <-
  pco2_product_profiles_monthly_ensemble %>%
  group_split(name, biome) %>% 
  head(1) %>% 
  map(
    ~ ggplot(data = .x) +
      geom_contour_filled(aes(month, depth, z = resid)) +
      geom_line(aes(month, mld)) +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        rescaler = ~ scales::rescale_mid(.x, mid = 0),
        super = ScaleDiscretised,
        name = labels_breaks(.x %>% distinct(name))$i_legend_title
      ) +
      scale_y_continuous(trans = trans_reverser("sqrt"), breaks = c(50, 100, 200, 400)) +
      coord_cartesian(expand = 0, ylim = c(300, NA)) +
      facet_wrap(~ biome) +
      guides(
        fill = guide_colorsteps(
          barheight = unit(0.3, "cm"),
          barwidth = unit(10, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(
        legend.position = "top",
        legend.title.align = 1,
        legend.box.spacing = unit(0.1, "cm"),
        legend.title = element_markdown(halign = 1, lineheight = 1.5)
      )
  )
[[1]]

Version Author Date
945d8f7 jens-daniel-mueller 2025-02-23
c50054d jens-daniel-mueller 2024-08-29
ggsave(plot = wrap_plots(plot_list,
                         ncol = 3),
       width = 18,
       height = 8,
       dpi = 600,
       filename = "../output/profiles_hovmoeller_ensemble_mean_gobm.jpg")
labels_breaks_hov <- function(i_name, i_biome) {
  
  if (i_name == "sdissic_stalk") {
    i_legend_title <- "sDIC - sTA<br>anom.<br>(μmol kg<sup>-1</sup>)"
  }
  
  if (i_name == "thetao") {
    i_legend_title <- "Temp.<br>anom.<br>(°C)"
  }
  
  if (i_name == "sdissic_stalk" & i_biome == "NA-SPSS") {
    i_breaks <- c(-Inf, seq(-2, 2, 0.5), Inf)
  }
  
  if (i_name == "thetao" & i_biome == "NA-SPSS") {
    i_breaks <- c(-Inf, seq(-0.4, 0.4, 0.1), Inf)
  }
  
  if (i_name == "sdissic_stalk" & i_biome == "NA-STPS") {
    i_breaks <- c(-Inf, seq(-2.4, 2.4, 0.6), Inf)
  }
  
  if (i_name == "thetao" & i_biome == "NA-STPS") {
    i_breaks <- c(-Inf, seq(-0.6, 0.6, 0.15), Inf)
  }
  
  if (i_name == "sdissic_stalk" & i_biome == "PEQU-E") {
    i_breaks <- c(-Inf, seq(-32, 32, 8), Inf)
  }
  
  if (i_name == "thetao" & i_biome == "PEQU-E") {
    i_breaks <- c(-Inf, seq(-2, 2, 0.5), Inf)
  }
  
  i_breaks_labels <- i_breaks[!i_breaks == Inf]
  i_breaks_labels <- i_breaks_labels[!i_breaks_labels == -Inf]
  i_breaks_labels[seq_along(i_breaks_labels) %% 2 == 0] <- ""
  
  all_labels_breaks <- lst(i_legend_title, i_breaks, i_breaks_labels)
  
  return(all_labels_breaks)
  
}

labels_breaks_hov("sdissic_stalk", "NA-SPSS")
$i_legend_title
[1] "sDIC - sTA<br>anom.<br>(μmol kg<sup>-1</sup>)"

$i_breaks
 [1] -Inf -2.0 -1.5 -1.0 -0.5  0.0  0.5  1.0  1.5  2.0  Inf

$i_breaks_labels
[1] "-2" ""   "-1" ""   "0"  ""   "1"  ""   "2" 
plot_list_left <-
  pco2_product_profiles_monthly_ensemble %>%
  arrange(month) %>%
  group_by(name, biome, depth) %>%
  mutate(resid = if_else(name == "sdissic_stalk", resid - first(resid), resid)) %>%
  ungroup() %>%
  group_split(biome, name) %>%
  head(2) %>%
  map(
    ~ ggplot(data = .x) +
      geom_contour_filled(aes(month, depth, z = resid),
                          breaks = labels_breaks_hov(.x %>% distinct(name),
                                                     .x %>% distinct(biome))$i_breaks) +
      geom_line(aes(month, mld)) +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        super = ScaleDiscretised,
        name = labels_breaks_hov(.x %>% distinct(name),
                                   .x %>% distinct(biome))$i_legend_title,
        labels = labels_breaks_hov(.x %>% distinct(name),
                                   .x %>% distinct(biome))$i_breaks_labels
      ) +
      # scale_fill_gradientn(
      #   colours = warm_cool_gradient,
      #   rescaler = ~ scales::rescale_mid(.x, mid = 0),
      #   super = ScaleDiscretised,
      #   name = labels_breaks(.x %>% distinct(name))$i_legend_title
      # ) +
      scale_y_continuous(
        trans = trans_reverser("sqrt"),
        breaks = c(20, 50, 100, 200, 400)
      ) +
      coord_cartesian(expand = 0, ylim = c(300, NA)) +
      labs(y = "Depth (m)",
           x = "Month") +
      facet_wrap(~ biome) +
      guides(
        fill = guide_colorsteps(
          barheight = unit(0.3, "cm"),
          barwidth = unit(5, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(
        legend.position = "top",
        legend.box.spacing = unit(0.1, "cm"),
        legend.title = element_markdown(hjust = 1,
                                        lineheight = 1.5)
      )
  )

plot_list_right <-
  pco2_product_profiles_monthly_ensemble %>%
  arrange(month) %>%
  group_by(name, biome, depth) %>%
  mutate(resid = if_else(name == "sdissic_stalk", resid - first(resid), resid)) %>%
  ungroup() %>%
  group_split(biome, name) %>%
  tail(4) %>%
  map(
    ~ ggplot(data = .x) +
      geom_contour_filled(aes(month, depth, z = resid),
                          breaks = labels_breaks_hov(.x %>% distinct(name),
                                                     .x %>% distinct(biome))$i_breaks) +
      geom_line(aes(month, mld)) +
      scale_fill_gradientn(
        colours = warm_cool_gradient,
        super = ScaleDiscretised,
        name = labels_breaks_hov(.x %>% distinct(name),
                                   .x %>% distinct(biome))$i_legend_title,
        labels = labels_breaks_hov(.x %>% distinct(name),
                                   .x %>% distinct(biome))$i_breaks_labels
      ) +
      scale_y_continuous(
        trans = trans_reverser("sqrt"),
        breaks = c(20, 50, 100, 200, 400)
      ) +
      coord_cartesian(expand = 0, ylim = c(300, NA)) +
      labs(y = "Depth (m)", x = "Month")+
      facet_wrap(~ biome) +
      guides(
        fill = guide_colorsteps(
          barheight = unit(0.3, "cm"),
          barwidth = unit(5, "cm"),
          ticks = TRUE,
          ticks.colour = "grey20",
          frame.colour = "grey20",
          label.position = "top",
          direction = "horizontal"
        )
      ) +
      theme(
        legend.position = "top",
        # legend.margin = margin(0, 0, 0, 0),
        # legend.justification = "left",
        axis.title.y = element_blank(),
        axis.text.y = element_blank(),
        legend.title.align = 1,
        legend.box.spacing = unit(0.1, "cm"),
        legend.title = element_blank()
      )
  )

plot_list <- c(plot_list_left, plot_list_right)

ggsave(plot = wrap_plots(plot_list,
                         ncol = 3,
                         byrow = FALSE),
       width = 10,
       height = 6,
       dpi = 600,
       filename = "../output/profiles_hovmoeller_ensemble_mean_gobm_evolution.jpg")

sessionInfo()
R version 4.4.2 (2024-10-31)
Platform: x86_64-pc-linux-gnu
Running under: openSUSE Leap 15.6

Matrix products: default
BLAS/LAPACK: /usr/local/OpenBLAS-0.3.28/lib/libopenblas_haswellp-r0.3.28.so;  LAPACK version 3.12.0

locale:
 [1] LC_CTYPE=en_US.UTF-8       LC_NUMERIC=C              
 [3] LC_TIME=en_US.UTF-8        LC_COLLATE=en_US.UTF-8    
 [5] LC_MONETARY=en_US.UTF-8    LC_MESSAGES=en_US.UTF-8   
 [7] LC_PAPER=en_US.UTF-8       LC_NAME=C                 
 [9] LC_ADDRESS=C               LC_TELEPHONE=C            
[11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C       

time zone: Europe/Zurich
tzcode source: system (glibc)

attached base packages:
[1] stats     graphics  grDevices utils     datasets  methods   base     

other attached packages:
 [1] kableExtra_1.4.0    cmocean_0.3-2       ggh4x_0.3.0        
 [4] scales_1.3.0        biscale_1.0.0       ggtext_0.1.2       
 [7] khroma_1.14.0       ggnewscale_0.5.0    terra_1.8-5        
[10] sf_1.0-19           rnaturalearth_1.0.1 geomtextpath_0.1.4 
[13] colorspace_2.1-1    marelac_2.1.11      shape_1.4.6.1      
[16] ggforce_0.4.2       metR_0.16.0         scico_1.5.0        
[19] patchwork_1.3.0     collapse_2.0.18     lubridate_1.9.3    
[22] forcats_1.0.0       stringr_1.5.1       dplyr_1.1.4        
[25] purrr_1.0.2         readr_2.1.5         tidyr_1.3.1        
[28] tibble_3.2.1        ggplot2_3.5.1       tidyverse_2.0.0    
[31] workflowr_1.7.1    

loaded via a namespace (and not attached):
 [1] DBI_1.2.3               rlang_1.1.4             magrittr_2.0.3         
 [4] git2r_0.35.0            e1071_1.7-16            compiler_4.4.2         
 [7] mgcv_1.9-1              getPass_0.2-4           systemfonts_1.1.0      
[10] callr_3.7.6             vctrs_0.6.5             pkgconfig_2.0.3        
[13] crayon_1.5.3            fastmap_1.2.0           backports_1.5.0        
[16] labeling_0.4.3          utf8_1.2.4              promises_1.3.2         
[19] rmarkdown_2.29          markdown_1.13           tzdb_0.4.0             
[22] ps_1.8.1                oce_1.8-3               ragg_1.3.3             
[25] gsw_1.2-0               bit_4.5.0               xfun_0.49              
[28] cachem_1.1.0            jsonlite_1.8.9          later_1.4.1            
[31] tweenr_2.0.3            parallel_4.4.2          R6_2.5.1               
[34] RColorBrewer_1.1-3      bslib_0.8.0             stringi_1.8.4          
[37] jquerylib_0.1.4         Rcpp_1.0.13-1           knitr_1.49             
[40] seacarb_3.3.3           Matrix_1.7-1            splines_4.4.2          
[43] httpuv_1.6.15           timechange_0.3.0        tidyselect_1.2.1       
[46] rstudioapi_0.17.1       yaml_2.3.10             codetools_0.2-20       
[49] processx_3.8.4          lattice_0.22-6          withr_3.0.2            
[52] evaluate_1.0.1          isoband_0.2.7           rnaturalearthdata_1.0.0
[55] units_0.8-5             proxy_0.4-27            polyclip_1.10-7        
[58] xml2_1.3.6              pillar_1.9.0            whisker_0.4.1          
[61] KernSmooth_2.23-24      checkmate_2.3.2         generics_0.1.3         
[64] vroom_1.6.5             rprojroot_2.0.4         hms_1.1.3              
[67] commonmark_1.9.2        munsell_0.5.1           class_7.3-22           
[70] glue_1.8.0              tools_4.4.2             data.table_1.16.2      
[73] fs_1.6.5                cowplot_1.1.3           grid_4.4.2             
[76] nlme_3.1-166            cli_3.6.3               SolveSAPHE_2.1.0       
[79] textshaping_0.4.0       fansi_1.0.6             viridisLite_0.4.2      
[82] svglite_2.1.3           gtable_0.3.6            sass_0.4.9             
[85] digest_0.6.37           classInt_0.4-10         farver_2.1.2           
[88] memoise_2.0.1           htmltools_0.5.8.1       lifecycle_1.0.4        
[91] httr_1.4.7              here_1.0.1              gridtext_0.1.5         
[94] bit64_4.5.2             MASS_7.3-61