Last updated: 2021-08-24

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1 Version ID

The results displayed on this site correspond to the Version_ID: v_XXX

2 Required data

2.1 Predictor fields

Currently, we use following combined predictor fields:

  • WOA18: S, T, and derived variables
  • GLODAP16: Oxygen, PO4, NO3, Silicate, and derived variables
predictors <-
  read_csv(paste(path_version_data,
                 "W18_st_G16_opsn.csv",
                 sep = ""))

predictors_surface <-
  read_csv(paste(path_version_data,
                 "W18_st_G16_opsn_surface.csv",
                 sep = ""))

# check if surface data exist
surface_data <- nrow(predictors_surface) > 0

tref  <-
  read_csv(paste(path_version_data,
                 "tref.csv",
                 sep = ""))


variables <-
  c("dissicos", "talkos", "po4os", "spco2", "tos", "sos")

for (i_variable in variables) {
  
  temp <- read_csv(paste0(
    path_root,
    "/model/preprocessing/surface_ocean_A/", i_variable, ".csv")
  )
  
  if (exists("surface_mod")) {
    surface_mod <- full_join(surface_mod, temp)
  }
  
  if (!exists("surface_mod")) {
    surface_mod <- temp
  }
}

rm(temp, i_variable, variables)

surface_obs <- read_csv(paste0(
    path_observations,
    "preprocessing/OceanSODA.csv")
  )

2.2 Atm. pCO2

Required only to estimate the change of dcant in surface water and assuming that the ocean pCO2 trend follows the atmospheric forcing.

co2_atm_tref <-
  read_csv(paste(path_version_data,
                 "co2_atm_tref.csv",
                 sep = ""))

disequi_pCO2_tref <-
  read_csv(paste(path_version_data,
                 "disequi_pCO2_tref.csv",
                 sep = ""))

2.3 MLR models

lm_best_dcant <-
  read_csv(paste(path_version_data,
                 "lm_best_dcant.csv",
                 sep = ""))

2.4 Model truth

tcant_tref_1 <-
  read_csv(
    paste(
      path_model_preprocessing,
      "cant_annual_field_AD",
      "/cant_",
      unique(tref$median_year[1]),
      ".csv",
      sep = ""
    )
  )

tcant_tref_1 <- tcant_tref_1 %>%
  rename(tcant_tref_1 = cant_total) %>%
  select(-year)

tcant_tref_2 <-
  read_csv(
    paste(
      path_model_preprocessing,
      "cant_annual_field_AD",
      "/cant_",
      unique(tref$median_year[2]),
      ".csv",
      sep = ""
    )
  )

tcant_tref_2 <- tcant_tref_2 %>%
  rename(tcant_tref_2 = cant_total) %>%
  select(-year)

dcant_3d <- left_join(tcant_tref_1, tcant_tref_2) %>%
  mutate(dcant = tcant_tref_2 - tcant_tref_1)

rm(tcant_tref_1, tcant_tref_2)

dcant_3d <- dcant_3d %>%
  mutate(dcant_pos = if_else(dcant <= 0, 0, dcant))

dcant_surface_mod_truth <- dcant_3d %>% 
  filter(depth == 5)

rm(dcant_3d)

3 Join MLRs + climatologies

# remove predictor variable from model
lm_best_dcant <- lm_best_dcant %>% 
  mutate(model = str_remove(model, paste(params_local$MLR_target, "~ ")))

# join predictors and MLR
dcant <- left_join(lm_best_dcant, predictors)

rm(predictors, lm_best_dcant)

4 Map dcant

4.1 Deep water

4.1.1 Apply MLRs to predictor

dcant <- b_dcant(dcant)

4.1.2 Sections by model

Zonal section plots are produced for every 20° longitude, each era and for all models individually. Plots can be accessed here:

  • /nfs/kryo/work/jenmueller/emlr_cant/observations/v_XXX/figures/Cant_model_sections/
if (params_local$plot_all_figures == "y") {
  for (i_eras in unique(cant$eras)) {
    # i_eras <- unique(cant$eras)[2]
    cant_eras <- cant %>%
      filter(eras == i_eras)
    
    for (i_lon in params_global$longitude_sections_regular) {
      # i_lon <- params_global$longitude_sections_regular[7]
      cant_eras_lon <- cant_eras %>%
        filter(lon == i_lon)
      
      limits = max(abs(cant_eras_lon$cant)) * c(-1, 1)
      
      cant_eras_lon %>%
        ggplot(aes(lat, depth, z = cant)) +
        stat_summary_2d(
          fun = "mean",
          na.rm = TRUE,
          bins = 20,
          col = "grey"
        ) +
        scale_fill_scico(name = "Cant",
                         palette = "vik",
                         limit = limits) +
        scale_y_reverse(limits = c(params_global$plotting_depth, NA)) +
        scale_x_continuous(limits = c(-85, 85)) +
        labs(title = paste(
          "eras:",
          i_eras,
          "| lon:",
          i_lon,
          "|",
          params_local$Version_ID
        )) +
        facet_wrap(~ model, ncol = 5)
      
      ggsave(
        paste(
          path_version_figures,
          "Cant_model_sections/",
          paste("Cant_model",
                i_eras,
                "lon",
                i_lon,
                "section.png",
                sep = "_"),
          sep = ""
        ),
        width = 17,
        height = 9
      )
      
    }
  }
}

4.2 Surface water

As outlined in Gruber et al. (2019), a transient equilibrium approach was applied to estimate dcant in surface waters, assuming that the CO2 system in these waters has followed the increase in atmospheric CO2 closely.

Using eq 10.2.16 from OBD, the change in anthropogenic CO2 in the upper ocean was computed as:

\(\Delta\)tCant,eq(t2 − t1) = 1∕\(\gamma\) ⋅ DIC/pCO2 ⋅ (pCO2,atm (t2)− pCO2,atm(t1))

, where DIC and pCO2 are the in situ values, where \(\gamma\) is the buffer (Revelle) factor and where we evaluated the right-hand side using seacarb employing the Luecker constants using the climatological values for temperature, salinity, DIC and Alk.

4.2.1 Layer depth

surface_layer <- predictors_surface %>% 
  group_by(lat, lon, data_source) %>% 
  summarise(depth_max = max(depth),
            n_layer = n()) %>% 
  ungroup()


map +
  geom_raster(data = surface_layer,
              aes(lon, lat, fill=depth_max)) +
  scale_fill_scico(palette = "nuuk", direction = -1) +
  facet_grid(data_source ~ .)

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
0b00a2b jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22
map +
  geom_raster(data = surface_layer,
              aes(lon, lat, fill=n_layer)) +
  scale_fill_scico(palette = "tokyo") +
  facet_grid(data_source ~ .)

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
0b00a2b jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22

4.2.2 Surface pCO2

predictors_surface_all_depth <- predictors_surface

predictors_surface <- predictors_surface %>%
  filter(depth %in% c(0, 5)) %>%
  mutate(
    pCO2 = carb(
      flag = 15,
      var1 = TAlk * 1e-6,
      var2 = TCO2 * 1e-6,
      S = sal,
      T = temp,
      P = depth / 10,
      Pt = phosphate * 1e-6,
      Sit = silicate * 1e-6,
      k1k2 = "l"
    )$pCO2
  )
predictors_surface %>%
  mutate(depth = 0) %>% 
  group_split(data_source) %>%
  # head(1) %>%
  map( ~
         p_map_climatology(
           df = .x,
           var = "pCO2",
           subtitle_text = paste("Data source: ", unique(.x$data_source))
         ))
[[1]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
0b00a2b jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
768ae83 jens-daniel-mueller 2021-07-22
78fe930 jens-daniel-mueller 2021-07-21
bef1b71 jens-daniel-mueller 2021-07-09

[[2]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
0b00a2b jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
768ae83 jens-daniel-mueller 2021-07-22
78fe930 jens-daniel-mueller 2021-07-21
bef1b71 jens-daniel-mueller 2021-07-09

4.2.3 Revelle factor

Plots below show the calculated climatological Revelle factor values.

predictors_surface <- predictors_surface %>%
  mutate(
    rev_fac = buffer(
      flag = 15,
      var1 = TAlk * 1e-6,
      var2 = TCO2 * 1e-6,
      S = sal,
      T = temp,
      P = depth / 10,
      Pt = phosphate * 1e-6,
      Sit = silicate * 1e-6,
      k1k2 = "l"
    )$BetaD
  )
predictors_surface %>%
  group_split(data_source) %>%
  # head(1) %>%
  map( ~
         p_map_climatology(
           df = .x,
           var = "rev_fac",
           subtitle_text = paste("Data source: ", unique(.x$data_source))
         ))
[[1]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
0b00a2b jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
768ae83 jens-daniel-mueller 2021-07-22
78fe930 jens-daniel-mueller 2021-07-21
bef1b71 jens-daniel-mueller 2021-07-09

[[2]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
0b00a2b jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
768ae83 jens-daniel-mueller 2021-07-22
78fe930 jens-daniel-mueller 2021-07-21
bef1b71 jens-daniel-mueller 2021-07-09
predictors_surface %>%
  group_split(data_source) %>%
  # head(1) %>%
  map( ~
         p_section_climatology_regular(
           df = .x,
           var = "rev_fac",
           surface = "y",
           subtitle_text = paste("Data source: ", unique(.x$data_source))
         ))

4.2.4 dcant calculation

# calculate increase in atm pCO2 between eras
co2_atm_tref <- co2_atm_tref %>%
  arrange(pCO2_tref) %>%
  mutate(d_pCO2_tref = pCO2_tref - lag(pCO2_tref)) %>%
  drop_na() %>%
  select(d_pCO2_tref)

dcant_surface <- full_join(predictors_surface, co2_atm_tref,
                           by = character())

# calculate cant
dcant_surface <- dcant_surface %>%
  mutate(dcant = (1 / rev_fac) *
           (TCO2 / pCO2) * d_pCO2_tref)

surface_rev_fac <- dcant_surface

# calculate positive cant
dcant_surface <- dcant_surface %>%
  mutate(dcant_pos = if_else(dcant < 0, 0, dcant)) %>% 
  select(lon, lat, data_source, dcant, dcant_pos)


dcant_surface <- full_join(
  dcant_surface,
  predictors_surface_all_depth
)
# extract disequilibrium change of pCO2
disequi_pCO2_tref <- disequi_pCO2_tref %>% 
  arrange(era) %>% 
  group_by(data_source) %>% 
  mutate(delta_disequi_pco2 = mean_delta_pCO2 - lag(mean_delta_pCO2)) %>% 
  ungroup() %>% 
  drop_na() %>% 
  select(data_source, delta_disequi_pco2)

# calculate increase in atm pCO2 between eras
co2_atm_tref <- expand_grid(
  co2_atm_tref,
  disequi_pCO2_tref
  )

co2_atm_tref <- co2_atm_tref %>% 
  mutate(d_pCO2_tref_disequi = d_pCO2_tref + delta_disequi_pco2) %>% 
  select(data_source, d_pCO2_tref_disequi)

dcant_surface_disequi <- full_join(predictors_surface, co2_atm_tref)

# calculate cant
dcant_surface_disequi <- dcant_surface_disequi %>%
  mutate(dcant = (1 / rev_fac) *
           (TCO2 / pCO2) * d_pCO2_tref_disequi)

surface_rev_fac_disequi <- dcant_surface_disequi

# calculate positive cant
dcant_surface_disequi <- dcant_surface_disequi %>%
  mutate(dcant_pos = if_else(dcant < 0, 0, dcant)) %>%
  select(lon, lat, data_source, dcant, dcant_pos)


dcant_surface_disequi <- full_join(dcant_surface_disequi,
                                   predictors_surface_all_depth)

4.2.5 Sea surface observations

# harmonize variable naming and formatting
surface_mod <- surface_mod %>% 
  rename(tco2 = dissicos,
         talk = talkos,
         phosphate = po4os,
         pco2 = spco2,
         temp = tos,
         sal = sos) %>% 
  mutate(tco2 = tco2 * 1e3,
         phosphate = phosphate * 1e3) %>% 
  mutate(cstar = b_cstar_phosphate(tco2 = tco2,
                                   phosphate = phosphate,
                                   talk = talk),
         cstar_phosphate = - params_local$rCP * phosphate,
         cstar_talk = - 0.5 * (talk - (params_local$rNP * phosphate)))


surface_obs <- surface_obs %>% 
  select(lon, lat, year, temp, tco2, talk, pco2 = pCO2)

# combine model and observation-based data
surface <- bind_rows(
  surface_mod %>% mutate(data_source = "mod"),
  surface_obs %>% mutate(data_source = "obs")
)

# combine with era definition
surface <- expand_grid(surface, tref)

# determine era averages
surface <- surface %>%
  filter(year >= start & year <= end) %>% 
  select(-c(start, end, year, era))

surface <- surface %>% 
  group_by(lon, lat, median_year, data_source) %>% 
  summarise(across(where(is.numeric), ~ mean(.x, na.rm = TRUE))) %>% 
  ungroup()

# produce wide format
surface_wide <- surface %>% 
  pivot_longer(tco2:cstar_talk,
               names_to = "parameter",
               values_to = "value") %>% 
  pivot_wider(names_from = median_year,
              values_from = value)

# calculate decadel changed
surface_wide <- surface_wide %>% 
  mutate(d = !!sym(as.character(sort(tref$median_year)[2])) -
           !!sym(as.character(sort(tref$median_year)[1])))


# plot decadel trends
surface_trend <- surface_wide %>% 
  select(lon, lat, parameter, data_source, d)

surface_trend %>%
  group_by(parameter) %>%
  group_split() %>%
  # head(1) %>%
  map(
    ~ map +
      geom_raster(data = .x,
                  aes(lon, lat, fill = d)) +
      scale_fill_divergent(name = unique(.x$parameter)) +
      facet_grid(data_source~.) +
      labs(title = paste("Decadel change:", tref$era[1], "to", tref$era[2]))
  )
[[1]]

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surface_pco2 <- surface_trend %>% 
  filter(parameter == "pco2") %>% 
  select(lat, lon, data_source, d_pco2_era = d)

surface_pco2 <- full_join(
  surface_pco2,
  surface_rev_fac %>% 
    select(lon, lat, data_source, rev_fac, TCO2, pCO2)
)

# calculate dcant
surface_pco2 <- surface_pco2 %>%
  mutate(dcant_pco2 = (1 / rev_fac) *
           (TCO2 / pCO2) * d_pco2_era) %>% 
  drop_na()

4.2.6 Control plots

dcant_surface %>%
  group_split(data_source) %>%
  # head(1) %>%
  map( ~
         p_map_climatology(
           df = .x,
           var = "dcant",
           subtitle_text = paste("Data source: ", unique(.x$data_source))
         ))
[[1]]

Version Author Date
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77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
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0b00a2b jens-daniel-mueller 2021-08-09
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127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
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dcant_surface %>%
  group_split(data_source) %>%
  # head(1) %>%
  map( ~
         p_section_climatology_regular(
           df = .x,
           var = "dcant",
           surface = "y",
           subtitle_text = paste("Data source: ", unique(.x$data_source))
         ))
[[1]]

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534854b jens-daniel-mueller 2021-08-19
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127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22
768ae83 jens-daniel-mueller 2021-07-22
78fe930 jens-daniel-mueller 2021-07-21
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c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22
768ae83 jens-daniel-mueller 2021-07-22
78fe930 jens-daniel-mueller 2021-07-21
bef1b71 jens-daniel-mueller 2021-07-09

4.2.7 Surf, equi, truth

surface_dcant_comparison <- bind_rows(
  surface_trend %>%
    filter(data_source == "mod",
           parameter == "cstar") %>%
    select(lon, lat, dcant = d) %>%
    mutate(data_source = "cstar"),
  # surface_trend %>%
  #   filter(data_source == "mod",
  #          parameter == "cstar_talk") %>%
  #   select(lon, lat, dcant = d) %>%
  #   mutate(data_source = "cstar_talk"),
  # surface_trend %>%
  #   filter(data_source == "mod",
  #          parameter == "cstar_phosphate") %>%
  #   select(lon, lat, dcant = d) %>%
  #   mutate(data_source = "cstar_phosphate"),
  surface_trend %>%
    filter(data_source == "mod",
           parameter == "tco2") %>%
    select(lon, lat, dcant = d) %>%
    mutate(data_source = "tco2"),
  dcant_surface %>%
    filter(data_source == "mod",
           depth == 5) %>%
    select(lon, lat, dcant) %>%
    mutate(data_source = "atm_equi"),
  dcant_surface_disequi %>%
    filter(data_source == "mod",
           depth == 5) %>%
    select(lon, lat, dcant) %>%
    mutate(data_source = "atm_disequi"),
  surface_pco2 %>%
    filter(data_source == "mod") %>%
    select(lon, lat, dcant = dcant_pco2) %>%
    mutate(data_source = "spco2"),
  dcant_surface_mod_truth %>%
    select(lon, lat, dcant) %>%
    mutate(data_source = "mod_truth")
)

p_map_dcant_slab(df = surface_dcant_comparison,
                  var = "dcant",
                 title_text = "Sea surface maps") +
  facet_grid(data_source ~ .)

Version Author Date
48c53fe jens-daniel-mueller 2021-08-23
dcc0633 jens-daniel-mueller 2021-08-20
74c2d89 jens-daniel-mueller 2021-08-20
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
0b00a2b jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
1010198 jens-daniel-mueller 2021-08-06
surface_dcant_comparison_bias <- surface_dcant_comparison %>% 
  pivot_wider(names_from = data_source,
              values_from = dcant) %>% 
  mutate(cstar_bias = cstar - mod_truth,
         tco2_bias = tco2 - mod_truth,
         atm_equi_bias = atm_equi - mod_truth,
         atm_disequi_bias = atm_disequi - mod_truth,
         spco2_bias = spco2 - mod_truth) %>% 
  select(lon, lat, cstar_bias:spco2_bias) %>% 
  pivot_longer(cstar_bias:spco2_bias,
               names_to = "data_source",
               values_to = "dcant_bias")

p_map_dcant_slab(df = surface_dcant_comparison_bias,
                  var = "dcant_bias",
                 col = "bias",
                 title_text = "Sea surface maps") +
  facet_grid(data_source ~ .)

Version Author Date
9705b9c jens-daniel-mueller 2021-08-23
48c53fe jens-daniel-mueller 2021-08-23
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
0b00a2b jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
1010198 jens-daniel-mueller 2021-08-06

4.3 Average model dcant

Mean and sd are calculated across 10 models for Cant in each grid cell (XYZ), basin and era combination. Calculations are performed for all cant values vs positive values only.

4.3.1 Deep water averaging

dcant_average <- m_dcant_3d_average(dcant)
dcant_average <- m_cut_gamma(dcant_average, "gamma")

# split data set for individual predictor contributions and total cant
dcant_predictor_3d <- dcant_average %>% 
  select(-c("dcant", "dcant_pos", ends_with("_sd")))

dcant_average <- dcant_average %>%
  select(
    lon,
    lat,
    depth,
    basin_AIP,
    data_source,
    dcant,
    dcant_pos,
    dcant_sd,
    dcant_pos_sd,
    gamma,
    gamma_sd,
    gamma_slab
  )
dcant_average %>%
  group_split(data_source) %>%
  # head(1) %>% 
  map(~ p_map_climatology(
    df = .x,
    var = "dcant_pos",
    subtitle_text = paste("data_source:", unique(.x$data_source))
  ))
[[1]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
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d759279 jens-daniel-mueller 2021-08-02
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2477316 jens-daniel-mueller 2021-07-23
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bef1b71 jens-daniel-mueller 2021-07-09
dcant_average %>%
  group_split(data_source) %>%
  # head(1) %>% 
  map(~ p_section_climatology_regular(
    df = .x,
    surface = "n",
    var = "dcant_pos",
    subtitle_text = paste("data_source:", unique(.x$data_source))
  ))
[[1]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
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0b00a2b jens-daniel-mueller 2021-08-09
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cd8e0d5 jens-daniel-mueller 2021-08-06
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0b00a2b jens-daniel-mueller 2021-08-09
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cd8e0d5 jens-daniel-mueller 2021-08-06
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48f6eed jens-daniel-mueller 2021-08-04
81a46a4 jens-daniel-mueller 2021-08-03
b88c61b jens-daniel-mueller 2021-08-03

4.3.2 Surface water averaging

The averaging function is also applied to the surface data, although only one value per grid cell was mapped, to ensure consistency with the deep water values.

dcant_surface_average <-
  m_dcant_3d_average(dcant_surface)

dcant_surface_average <- m_cut_gamma(dcant_surface_average, "gamma")
rm(dcant_surface)

4.4 Join surface and deep water

if (surface_data) {
  dcant_3d <-
  full_join(
    dcant_average %>% mutate(method = "eMLR"),
    dcant_surface_average %>%  mutate(method = "surface")
  )
} else {
  dcant_3d <- dcant_average %>% mutate(method = "eMLR")
}



rm(dcant_surface_average, dcant_average)

4.5 Zonal sections

For each basin and era combination, the zonal mean dcant is calculated, again for all vs positive only values. Likewise, sd is calculated for the averaging of the mean basin fields.

dcant_zonal <- dcant_3d %>%
  group_by(data_source) %>%
  nest() %>%
  mutate(zonal = map(.x = data, ~m_zonal_mean_sd(.x))) %>%
  select(-data) %>%
  unnest(zonal)

dcant_zonal <- m_cut_gamma(dcant_zonal,
                           "gamma_mean")

dcant_zonal_method <- dcant_3d %>%
  group_by(data_source, method) %>%
  nest() %>%
  mutate(zonal = map(.x = data, ~m_zonal_mean_sd(.x))) %>%
  select(-data) %>%
  unnest(zonal)

dcant_zonal_method <- m_cut_gamma(dcant_zonal_method,
                                   "gamma_mean")

dcant_zonal <- dcant_zonal %>% 
  rename(dcant = dcant_mean,
         dcant_pos = dcant_pos_mean) %>% 
  select(-c(dcant_sd_sd, dcant_pos_sd_sd,
            gamma_sd_mean, gamma_sd_sd))

dcant_zonal_method <- dcant_zonal_method %>% 
  rename(dcant = dcant_mean,
         dcant_pos = dcant_pos_mean) %>% 
  select(-c(dcant_sd_sd, dcant_pos_sd_sd,
            gamma_sd_mean, gamma_sd_sd))

4.6 Mean dcant sections by coefficient

For each basin and era combination, the zonal mean is calculated for the term of each predictor.

dcant_predictor_zonal <- dcant_predictor_3d %>%
  group_by(data_source) %>%
  nest() %>%
  mutate(zonal = map(.x = data, ~m_zonal_mean_sd(.x))) %>%
  select(-data) %>%
  unnest(zonal)

dcant_predictor_zonal <-
  m_cut_gamma(dcant_predictor_zonal, "gamma_mean")

4.7 Inventory calculation

To calculate dcant column inventories, we:

  1. Convert dcant concentrations to volumetric units
  2. Multiply layer thickness with volumetric dcant concentration to get a layer inventory
  3. For each horizontal grid cell and era, sum dcant layer inventories for different inventory depths (100, 500, 1000, 3000, 10^{4} m)

Step 2 is performed separately for all dcant and positive dcant values only.

4.7.1 Full water column

dcant_inv <- dcant_3d %>%
  group_by(data_source) %>%
  nest() %>%
  mutate(inv = map(.x = data, ~m_dcant_inv(.x))) %>%
  select(-data) %>%
  unnest(inv)

p_map_cant_inv(df = dcant_inv,
               var = "dcant_pos",
               subtitle_text = "for predefined integration depths") +
  facet_grid(inv_depth ~ data_source)

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
81a46a4 jens-daniel-mueller 2021-08-03
b88c61b jens-daniel-mueller 2021-08-03
a53656d jens-daniel-mueller 2021-08-03
88f7356 jens-daniel-mueller 2021-08-02
d759279 jens-daniel-mueller 2021-08-02
127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
768ae83 jens-daniel-mueller 2021-07-22
78fe930 jens-daniel-mueller 2021-07-21
971ce87 jens-daniel-mueller 2021-07-13
bef1b71 jens-daniel-mueller 2021-07-09
if (surface_data == FALSE){
  dcant_inv <- dcant_inv %>% 
    mutate(method = "total")
}

4.7.2 Surface layer

dcant_inv_surface <- dcant_3d %>%
  filter(method == "surface") %>% 
  group_by(data_source) %>%
  nest() %>%
  mutate(inv = map(.x = data, ~m_dcant_inv(.x))) %>%
  select(-data) %>%
  unnest(inv)

p_map_cant_inv(df = dcant_inv_surface %>% 
                 filter(inv_depth < 1000),
               var = "dcant_pos",
               subtitle_text = "for predefined integration depths",
               breaks = c(-Inf,seq(0,4,0.5), Inf)) +
  facet_grid(inv_depth ~ data_source)

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
0b00a2b jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
88f7356 jens-daniel-mueller 2021-08-02
127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22

4.7.3 eMLR only

dcant_inv <- full_join(
  dcant_inv %>% rename(dcant_total = dcant,
                       dcant_pos_total = dcant_pos),
  dcant_inv_surface %>% rename(dcant_surface = dcant,
                               dcant_pos_surface = dcant_pos)
)

dcant_inv <- dcant_inv %>%
  mutate(dcant_eMLR = dcant_total -
           replace(dcant_surface, is.na(dcant_surface), 0),
         dcant_pos_eMLR = dcant_pos_total -
           replace(dcant_pos_surface, is.na(dcant_pos_surface), 0))

dcant_inv_all <- dcant_inv %>% 
  select(-starts_with("dcant_pos")) %>% 
  pivot_longer(starts_with("dcant_"),
               names_to = "method",
               names_prefix = "dcant_",
               values_to = "dcant")

dcant_inv_pos <- dcant_inv %>% 
  select(data_source, lon, lat, basin_AIP, inv_depth,
         starts_with("dcant_pos_")) %>% 
  pivot_longer(starts_with("dcant_pos_"),
               names_to = "method",
               names_prefix = "dcant_pos_",
               values_to = "dcant_pos")

dcant_inv <- full_join(
  dcant_inv_all,
  dcant_inv_pos
)

rm(dcant_inv_all, dcant_inv_pos, dcant_inv_surface)

dcant_inv %>%
  group_by(inv_depth) %>%
  group_split() %>% 
  # tail(1) %>%
  map(
    ~ p_map_cant_inv(df = .x,
                     var = "dcant",
                     subtitle_text = paste("Integration depth",
                                           unique(.x$inv_depth))) +
      facet_grid(method ~ data_source)
  )
[[1]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
81a46a4 jens-daniel-mueller 2021-08-03
b88c61b jens-daniel-mueller 2021-08-03
a53656d jens-daniel-mueller 2021-08-03
88f7356 jens-daniel-mueller 2021-08-02
d759279 jens-daniel-mueller 2021-08-02
127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22

[[2]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
81a46a4 jens-daniel-mueller 2021-08-03
b88c61b jens-daniel-mueller 2021-08-03
a53656d jens-daniel-mueller 2021-08-03
88f7356 jens-daniel-mueller 2021-08-02
d759279 jens-daniel-mueller 2021-08-02
127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22

[[3]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
81a46a4 jens-daniel-mueller 2021-08-03
b88c61b jens-daniel-mueller 2021-08-03
a53656d jens-daniel-mueller 2021-08-03
88f7356 jens-daniel-mueller 2021-08-02
d759279 jens-daniel-mueller 2021-08-02
127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22

[[4]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
81a46a4 jens-daniel-mueller 2021-08-03
b88c61b jens-daniel-mueller 2021-08-03
a53656d jens-daniel-mueller 2021-08-03
88f7356 jens-daniel-mueller 2021-08-02
d759279 jens-daniel-mueller 2021-08-02
127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22

[[5]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
81a46a4 jens-daniel-mueller 2021-08-03
b88c61b jens-daniel-mueller 2021-08-03
a53656d jens-daniel-mueller 2021-08-03
88f7356 jens-daniel-mueller 2021-08-02
d759279 jens-daniel-mueller 2021-08-02
127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22

4.8 Budgets

Global dcant budgets were estimated in units of Pg C. Please note that here we added dcant (all vs postitive only) values and do not apply additional corrections for areas not covered.

dcant_budget_global <- m_dcant_budget(dcant_inv)

dcant_budget_global %>%
  filter(inv_depth == params_global$inventory_depth_standard,
         method == "total") %>%
  ggplot(aes(estimate, value)) +
  scale_fill_brewer(palette = "Dark2") +
  geom_col() +
  facet_grid(~data_source)

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
81a46a4 jens-daniel-mueller 2021-08-03
b88c61b jens-daniel-mueller 2021-08-03
a53656d jens-daniel-mueller 2021-08-03
88f7356 jens-daniel-mueller 2021-08-02
d759279 jens-daniel-mueller 2021-08-02
127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22
768ae83 jens-daniel-mueller 2021-07-22
78fe930 jens-daniel-mueller 2021-07-21
bef1b71 jens-daniel-mueller 2021-07-09
dcant_budget_global %>%
  filter(inv_depth == params_global$inventory_depth_standard,
         method %in% c("surface", "eMLR")) %>%
  ggplot(aes(estimate, value, fill=method)) +
  scale_fill_brewer(palette = "Dark2") +
  geom_col() +
  facet_grid(.~data_source)

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04
48f6eed jens-daniel-mueller 2021-08-04
81a46a4 jens-daniel-mueller 2021-08-03
b88c61b jens-daniel-mueller 2021-08-03
a53656d jens-daniel-mueller 2021-08-03
88f7356 jens-daniel-mueller 2021-08-02
d759279 jens-daniel-mueller 2021-08-02
127b801 jens-daniel-mueller 2021-07-24
912d90e jens-daniel-mueller 2021-07-23
2477316 jens-daniel-mueller 2021-07-23
c9ccc00 jens-daniel-mueller 2021-07-22
c75b2a0 jens-daniel-mueller 2021-07-22
dcant_budget_basin_AIP <- dcant_inv %>% 
  group_by(basin_AIP) %>%
  nest() %>% 
  mutate(budget = map(.x = data, ~m_dcant_budget(.x))) %>% 
  select(-data) %>%
  unnest(budget)
dcant_budget_basin_AIP %>%
  filter(inv_depth == params_global$inventory_depth_standard,
         method %in% c("surface", "eMLR")) %>%
  ggplot(aes(basin_AIP, value, fill=method)) +
  scale_fill_brewer(palette = "Dark2") +
  geom_col() +
  facet_grid(estimate~data_source)

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04
dcant_budget_basin_MLR <-
  full_join(dcant_inv, basinmask) %>%
  group_by(basin, MLR_basins) %>%
  nest() %>%
  mutate(budget = map(.x = data, ~ m_dcant_budget(.x))) %>%
  select(-data) %>%
  unnest(budget)
dcant_budget_basin_MLR %>%
  filter(inv_depth == params_global$inventory_depth_standard,
         method %in% c("surface", "eMLR")) %>%
  group_by(MLR_basins) %>%
  group_split() %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x,
             aes(basin, value, fill = method)) +
      scale_fill_brewer(palette = "Dark2") +
      geom_col() +
      facet_grid(estimate ~ data_source) +
      labs(title = paste("MLR_basins:", unique(.x$MLR_basins)))
  )
[[1]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04

[[2]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04

[[3]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04

[[4]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04

[[5]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04

[[6]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04

[[7]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
dcant_budget_lat_grid <- 
  dcant_inv %>% 
  m_grid_horizontal_coarse() %>%
  group_by(lat_grid, basin_AIP) %>% 
  nest() %>%
  mutate(budget = map(.x = data, ~ m_dcant_budget(.x))) %>%
  select(-data) %>%
  unnest(budget)
dcant_budget_lat_grid %>%
  filter(inv_depth == params_global$inventory_depth_standard,
         method %in% c("surface", "eMLR")) %>%
  group_by(basin_AIP) %>%
  group_split() %>%
  # head(1) %>%
  map(
    ~ ggplot(data = .x,
             aes(lat_grid, value, fill = method)) +
      scale_fill_brewer(palette = "Dark2") +
      geom_col() +
      coord_flip() +
      facet_grid(estimate ~ data_source) +
      labs(title = paste("MLR_basins:", unique(.x$basin_AIP)))
  )
[[1]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09
755c6b1 jens-daniel-mueller 2021-08-09
cd8e0d5 jens-daniel-mueller 2021-08-06
15773a0 jens-daniel-mueller 2021-08-06
da61d1a jens-daniel-mueller 2021-08-06
340d731 jens-daniel-mueller 2021-08-06
71546e4 jens-daniel-mueller 2021-08-06
29444a1 jens-daniel-mueller 2021-08-05
42e80c0 jens-daniel-mueller 2021-08-04

[[2]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09

[[3]]

Version Author Date
534854b jens-daniel-mueller 2021-08-19
77f4ba7 jens-daniel-mueller 2021-08-19
ece96df jens-daniel-mueller 2021-08-19
27c99b8 jens-daniel-mueller 2021-08-19
a03f2f0 jens-daniel-mueller 2021-08-18
9335b31 jens-daniel-mueller 2021-08-10
9943b45 jens-daniel-mueller 2021-08-10
0b00a2b jens-daniel-mueller 2021-08-09

5 Write csv

dcant_3d %>%
  write_csv(paste(path_version_data,
                  "dcant_3d.csv", sep = ""))

dcant_predictor_3d %>%
  write_csv(paste(path_version_data,
                  "dcant_predictor_3d.csv", sep = ""))

dcant_zonal %>%
  write_csv(paste(path_version_data,
                  "dcant_zonal.csv", sep = ""))

dcant_zonal_method %>%
  write_csv(paste(path_version_data,
                  "dcant_zonal_method.csv", sep = ""))

dcant_predictor_zonal %>%
  write_csv(paste(path_version_data,
                  "dcant_predictor_zonal.csv", sep = ""))

dcant_inv %>%
  filter(method == "total") %>% 
  select(-method) %>% 
  write_csv(paste(path_version_data,
                  "dcant_inv.csv", sep = ""))

dcant_inv %>%
  filter(method != "total") %>% 
  write_csv(paste(path_version_data,
                  "dcant_inv_method.csv", sep = ""))

dcant_budget_global %>%
  write_csv(paste(path_version_data,
                  "dcant_budget_global.csv", sep = ""))

dcant_budget_basin_AIP %>%
  write_csv(paste(path_version_data,
                  "dcant_budget_basin_AIP.csv", sep = ""))

dcant_budget_basin_MLR %>%
  write_csv(paste(path_version_data,
                  "dcant_budget_basin_MLR.csv", sep = ""))

dcant_budget_lat_grid %>%
  write_csv(paste(path_version_data,
                  "dcant_budget_lat_grid.csv", sep = ""))

sessionInfo()
R version 4.0.3 (2020-10-10)
Platform: x86_64-pc-linux-gnu (64-bit)
Running under: openSUSE Leap 15.2

Matrix products: default
BLAS:   /usr/local/R-4.0.3/lib64/R/lib/libRblas.so
LAPACK: /usr/local/R-4.0.3/lib64/R/lib/libRlapack.so

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       

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

other attached packages:
 [1] marelac_2.1.10  shape_1.4.5     seacarb_3.2.14  oce_1.2-0      
 [5] gsw_1.0-5       testthat_2.3.2  ggforce_0.3.3   metR_0.9.0     
 [9] scico_1.2.0     patchwork_1.1.1 collapse_1.5.0  forcats_0.5.0  
[13] stringr_1.4.0   dplyr_1.0.5     purrr_0.3.4     readr_1.4.0    
[17] tidyr_1.1.3     tibble_3.1.3    ggplot2_3.3.5   tidyverse_1.3.0
[21] workflowr_1.6.2

loaded via a namespace (and not attached):
 [1] fs_1.5.0                 lubridate_1.7.9          RColorBrewer_1.1-2      
 [4] httr_1.4.2               rprojroot_2.0.2          tools_4.0.3             
 [7] backports_1.1.10         bslib_0.2.5.1            utf8_1.1.4              
[10] R6_2.5.0                 DBI_1.1.0                colorspace_2.0-2        
[13] withr_2.3.0              tidyselect_1.1.0         compiler_4.0.3          
[16] git2r_0.27.1             cli_3.0.1                rvest_0.3.6             
[19] xml2_1.3.2               isoband_0.2.2            labeling_0.4.2          
[22] sass_0.4.0               scales_1.1.1             checkmate_2.0.0         
[25] digest_0.6.27            rmarkdown_2.10           pkgconfig_2.0.3         
[28] htmltools_0.5.1.1        highr_0.8                dbplyr_1.4.4            
[31] rlang_0.4.11             readxl_1.3.1             rstudioapi_0.13         
[34] jquerylib_0.1.4          generics_0.1.0           farver_2.0.3            
[37] jsonlite_1.7.1           magrittr_1.5             Matrix_1.2-18           
[40] Rcpp_1.0.5               munsell_0.5.0            fansi_0.4.1             
[43] lifecycle_1.0.0          stringi_1.5.3            whisker_0.4             
[46] yaml_2.2.1               MASS_7.3-53              grid_4.0.3              
[49] blob_1.2.1               parallel_4.0.3           promises_1.1.1          
[52] crayon_1.3.4             lattice_0.20-41          haven_2.3.1             
[55] hms_0.5.3                knitr_1.33               pillar_1.6.2            
[58] reprex_0.3.0             glue_1.4.2               evaluate_0.14           
[61] RcppArmadillo_0.10.1.2.0 data.table_1.14.0        modelr_0.1.8            
[64] vctrs_0.3.8              tweenr_1.0.2             httpuv_1.5.4            
[67] cellranger_1.1.0         gtable_0.3.0             polyclip_1.10-0         
[70] assertthat_0.2.1         xfun_0.25                broom_0.7.9             
[73] RcppEigen_0.3.3.7.0      later_1.2.0              viridisLite_0.3.0       
[76] ellipsis_0.3.2           here_0.1