Last updated: 2021-11-04

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Knit directory: bgc_argo_r_argodata/

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Task

Map the location of oxygen, pH, and nitrate observations recorded by BGC-Argo floats

Load data

Read the metadata file created in loading_data.html:

path_argo_preprocessed <- paste0(path_argo, "/preprocessed_bgc_data")

bgc_metadata <-
  read_rds(file = paste0(path_argo_preprocessed, "/bgc_metadata.rds"))
basinmask <-
  read_csv(paste(path_emlr_utilities,
                 "basin_mask_WOA18.csv",
                 sep = ""),
           col_types = cols("MLR_basins" = col_character()))

basinmask <- basinmask %>% 
  filter(MLR_basins == unique(basinmask$MLR_basins)[1]) %>% 
  select(lon, lat, basin_AIP)

map <-
  read_rds(paste(path_emlr_utilities,
                 "map_landmask_WOA18.rds",
                 sep = ""))

Spatial data coverage

Count profiles

bgc_metadata <- inner_join(
  bgc_metadata,
  basinmask
)
Joining, by = c("lat", "lon")
bgc_profile_counts_year <- bgc_metadata %>% 
  select(platform_number, cycle_number, date, lon, lat,
         profile_doxy_qc, profile_ph_in_situ_total_qc, profile_nitrate_qc) %>% 
  pivot_longer(profile_doxy_qc:profile_nitrate_qc,
               names_to = "parameter",
               values_to = "profile_flag",
               names_prefix = "profile_") %>% 
  mutate(year = year(date)) %>% 
  filter(!is.na(profile_flag),
         profile_flag != "") %>% 
  count(lat, lon, year, parameter) # count the number of profiles per year in each lon/lat grid for each parameter 


bgc_profile_counts_flag <- bgc_metadata %>% 
  select(platform_number, cycle_number, date, lon, lat,
         profile_doxy_qc, profile_ph_in_situ_total_qc, profile_nitrate_qc) %>% 
  pivot_longer(profile_doxy_qc:profile_nitrate_qc,
               names_to = "parameter",
               values_to = "profile_flag",
               names_prefix = "profile_") %>% 
  mutate(year = year(date)) %>% 
  filter(!is.na(profile_flag),
         profile_flag != "") %>% 
  count(lat, lon, parameter, profile_flag)  # count the number of profiles for each profile QC flag in each lon/lat area and for each parameter 

by year

Map of profile locations for each parameter, per year

map +
  geom_tile(data = bgc_profile_counts_year,
              aes(lon, lat, fill = n)) +
  scale_fill_gradient(low = "blue", high = "red",
                      trans = "log10") +
  facet_grid(year ~ parameter)


# bgc_profile_counts_year %>%
#   ggplot() +
#   geom_sf(data = ne_countries(returnclass = "sf"),
#           fill = "gray90",
#           color = NA) +
#   geom_sf(data = ne_coastline(returnclass = "sf")) +
#   geom_tile(aes(x = lon, y = lat, fill = n)) +
#   scale_fill_gradient(low="blue", high="red",
#                       trans = "log10") +
#   theme_bw() +
#   facet_grid(year ~ parameter)
# map the location of profiles for each parameter in each year 
bgc_profile_counts_year %>%
  group_split(parameter) %>%
  map(
    ~ map +
      geom_tile(data = .x, aes(
        x = lon, y = lat, fill = n
      )) +
      scale_fill_gradient(low = "blue", high = "red",
                          trans = "log10") +
      labs(
        x = 'lon',
        y = 'lat',
        fill = 'number of\nprofiles',
        title = paste('Parameter:', unique(.x$parameter))
      ) +
      theme(
        legend.position = "bottom",
        axis.text = element_blank(),
        axis.ticks = element_blank()
      ) +
      facet_wrap(~year, ncol = 3)
  )
[[1]]
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

Version Author Date
bba33bf pasqualina-vonlanthendinenna 2021-10-26
f7ef44f jens-daniel-mueller 2021-10-22
aa7280d jens-daniel-mueller 2021-10-22
701fffa pasqualina-vonlanthendinenna 2021-10-20

[[2]]
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

Version Author Date
bba33bf pasqualina-vonlanthendinenna 2021-10-26
f7ef44f jens-daniel-mueller 2021-10-22
aa7280d jens-daniel-mueller 2021-10-22
701fffa pasqualina-vonlanthendinenna 2021-10-20

[[3]]
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

Version Author Date
bba33bf pasqualina-vonlanthendinenna 2021-10-26
f7ef44f jens-daniel-mueller 2021-10-22
aa7280d jens-daniel-mueller 2021-10-22
701fffa pasqualina-vonlanthendinenna 2021-10-20
ggsave("output/figures/maps_per_year.png",
       width = 7,
       height = 4)
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.
# bgc_profile_counts_year %>%
#   group_split(parameter) %>% 
#   map( 
#   ~ ggplot() +
#   geom_sf(data = ne_countries(returnclass = "sf"),
#           fill = "gray90",
#           color = NA) +
#   geom_sf(data = ne_coastline(returnclass = "sf")) +
#   geom_tile(data = .x, aes(x = lon, y = lat, fill = n)) +
#   scale_fill_gradient(low="blue", high="red",
#                       trans = "log10") +
#   theme_bw() +
#   labs(x = 'lon', y = 'lat', fill = 'number of profiles', 
#        title = paste('Parameter:', unique(.x$parameter)))+
#   facet_grid(. ~ year)
#   )

by qc flag

Map the profile locations for each profile QC flag of each parameter

bgc_profile_counts_flag %>%
  ggplot() +
  geom_sf(data = ne_countries(returnclass = "sf"),
          fill = "gray90",
          color = NA) +
  geom_sf(data = ne_coastline(returnclass = "sf")) +
  geom_tile(aes(x = lon, y = lat, fill = n)) +
  scale_fill_gradient(low="blue", high="red",
                      trans = "log10") +
  theme_bw() +
  facet_grid(profile_flag ~ parameter)
# create a separate plot for each QC flag (instead of multiple panels in one plot) 

bgc_profile_counts_flag %>%
  group_split(profile_flag) %>%
  map(
    ~ map +
      geom_tile(data = .x, aes(
        x = lon, y = lat, fill = n
      )) +
      scale_fill_gradient(low = "blue", high = "red",
                          trans = "log10") +
      labs(
        x = 'lon',
        y = 'lat',
        fill = 'number of\nprofiles',
        title = paste('Profile QC flag', unique(.x$profile_flag))
      ) +
      theme(
        legend.position = "bottom",
        axis.text = element_blank(),
        axis.ticks = element_blank()
      ) +
      facet_grid(parameter ~ .)
  )
[[1]]
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

Version Author Date
bba33bf pasqualina-vonlanthendinenna 2021-10-26
f7ef44f jens-daniel-mueller 2021-10-22
aa7280d jens-daniel-mueller 2021-10-22
701fffa pasqualina-vonlanthendinenna 2021-10-20

[[2]]
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

Version Author Date
bba33bf pasqualina-vonlanthendinenna 2021-10-26
f7ef44f jens-daniel-mueller 2021-10-22
aa7280d jens-daniel-mueller 2021-10-22
701fffa pasqualina-vonlanthendinenna 2021-10-20

[[3]]
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

Version Author Date
bba33bf pasqualina-vonlanthendinenna 2021-10-26
f7ef44f jens-daniel-mueller 2021-10-22
aa7280d jens-daniel-mueller 2021-10-22
701fffa pasqualina-vonlanthendinenna 2021-10-20

[[4]]
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

Version Author Date
bba33bf pasqualina-vonlanthendinenna 2021-10-26
f7ef44f jens-daniel-mueller 2021-10-22
aa7280d jens-daniel-mueller 2021-10-22
701fffa pasqualina-vonlanthendinenna 2021-10-20

[[5]]
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

Version Author Date
bba33bf pasqualina-vonlanthendinenna 2021-10-26
f7ef44f jens-daniel-mueller 2021-10-22
aa7280d jens-daniel-mueller 2021-10-22
701fffa pasqualina-vonlanthendinenna 2021-10-20

[[6]]
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

Version Author Date
bba33bf pasqualina-vonlanthendinenna 2021-10-26
f7ef44f jens-daniel-mueller 2021-10-22
aa7280d jens-daniel-mueller 2021-10-22
701fffa pasqualina-vonlanthendinenna 2021-10-20
ggsave("output/figures/maps_per_flag.png",
       width = 7,
       height = 4)
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.
ph_profile_counts_year <- bgc_metadata %>%      # count the number of A-flag pH profiles 
  select(platform_number, cycle_number, date, lon, lat,
        profile_ph_in_situ_total_qc) %>% 
  pivot_longer(profile_ph_in_situ_total_qc,
               names_to = "parameter",
               values_to = "profile_flag",
               names_prefix = "profile_") %>% 
  mutate(year = year(date)) %>% 
  filter(profile_flag == "A") %>% 
  count(lat, lon, year, parameter)

# map the location of pH profiles with QC flag A each year
ph_profile_counts_year %>%
  group_split(parameter) %>%
  map(
    ~ map +
      geom_tile(data = .x, aes(
        x = lon, y = lat, fill = n
      )) +
      scale_fill_gradient(low = "blue", high = "red",
                          trans = "log10") +
      labs(
        x = 'lon',
        y = 'lat',
        fill = 'number of\nprofiles',
        title = paste('Parameter:', unique(.x$parameter), 'flag A')
      ) +
      theme(
        legend.position = "bottom",
        axis.text = element_blank(),
        axis.ticks = element_blank()
      ) +
      facet_wrap(~year, ncol = 3)
  )
[[1]]
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

Version Author Date
bba33bf pasqualina-vonlanthendinenna 2021-10-26
ggsave("output/figures/map_pH_flag_A_per_year.png",
       width = 7,
       height = 4)
Warning: Raster pixels are placed at uneven vertical intervals and will be
shifted. Consider using geom_tile() instead.

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] lubridate_1.7.9     argodata_0.0.0.9000 forcats_0.5.0      
 [4] stringr_1.4.0       dplyr_1.0.5         purrr_0.3.4        
 [7] readr_1.4.0         tidyr_1.1.3         tibble_3.1.3       
[10] ggplot2_3.3.5       tidyverse_1.3.0     workflowr_1.6.2    

loaded via a namespace (and not attached):
 [1] Rcpp_1.0.7        assertthat_0.2.1  rprojroot_2.0.2   digest_0.6.27    
 [5] utf8_1.2.2        R6_2.5.1          cellranger_1.1.0  backports_1.1.10 
 [9] reprex_0.3.0      evaluate_0.14     highr_0.8         httr_1.4.2       
[13] pillar_1.6.2      rlang_0.4.11      readxl_1.3.1      rstudioapi_0.13  
[17] whisker_0.4       jquerylib_0.1.4   blob_1.2.1        rmarkdown_2.10   
[21] labeling_0.4.2    munsell_0.5.0     broom_0.7.9       compiler_4.0.3   
[25] httpuv_1.6.2      modelr_0.1.8      xfun_0.25         pkgconfig_2.0.3  
[29] htmltools_0.5.1.1 tidyselect_1.1.0  fansi_0.5.0       crayon_1.4.1     
[33] dbplyr_1.4.4      withr_2.4.2       later_1.3.0       grid_4.0.3       
[37] jsonlite_1.7.2    gtable_0.3.0      lifecycle_1.0.0   DBI_1.1.1        
[41] git2r_0.27.1      magrittr_2.0.1    scales_1.1.1      cli_3.0.1        
[45] stringi_1.5.3     farver_2.1.0      fs_1.5.0          promises_1.2.0.1 
[49] xml2_1.3.2        bslib_0.2.5.1     ellipsis_0.3.2    generics_0.1.0   
[53] vctrs_0.3.8       tools_4.0.3       glue_1.4.2        RNetCDF_2.4-2    
[57] hms_0.5.3         yaml_2.2.1        colorspace_2.0-2  rvest_0.3.6      
[61] knitr_1.33        haven_2.3.1       sass_0.4.0