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Knit directory: RECCAP2_CESM_ETHZ_submission/

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1 File names

overview <-
  read_csv("data/overview/overview_files.csv")

variables <-
  overview %>%
  filter(shape %in% c("T", "iT")) %>%
  distinct(variable_id) %>%
  pull()

# set name of model to be subsetted
experiment_IDs <- c("A", "B", "C", "D")

2 Plots

Below, please find plots of the variables in the following order:

  • fgco2_glob, fgco2_reg

Plots for all variables are shown one after the other for the model runs:

  • A, B, C, D

2.1 fgco2_glob

for (i_experiment_ID in experiment_IDs) {

    # read list of all files
    file <- paste("fgco2_glob",
                  "_CESM-ETHZ_",
                  i_experiment_ID,
                  "_1_gr_1980-2018.nc",
                  sep = "")
    print(file)
    
    # read in data
    variable_data <-
      tidync(paste(path_cmorized_annual,
                   file,
                   sep = ""))
    
    # convert to tibble
    variable_data_tibble <- variable_data %>%
      hyper_tibble()
    
    # remove open link to nc file
    rm(variable_data)
    
    print(variable_data_tibble %>%
            ggplot(aes(time_mon,
                       fgco2_glob)) +
            geom_path() +
            labs(title = paste("experiment_ID:", i_experiment_ID)))

}
[1] "fgco2_glob_CESM-ETHZ_A_1_gr_1980-2018.nc"

Version Author Date
fbb65a7 jens-daniel-mueller 2021-03-12
[1] "fgco2_glob_CESM-ETHZ_B_1_gr_1980-2018.nc"

Version Author Date
fbb65a7 jens-daniel-mueller 2021-03-12
[1] "fgco2_glob_CESM-ETHZ_C_1_gr_1980-2018.nc"

Version Author Date
fbb65a7 jens-daniel-mueller 2021-03-12
[1] "fgco2_glob_CESM-ETHZ_D_1_gr_1980-2018.nc"

Version Author Date
fbb65a7 jens-daniel-mueller 2021-03-12

2.2 fgco2_reg

for (i_experiment_ID in experiment_IDs) {
  # read list of all files
  file <- paste("fgco2_reg",
                "_CESM-ETHZ_",
                i_experiment_ID,
                "_1_gr_1980-2018.nc",
                sep = "")
  print(file)
  
  # read in data
  variable_data <-
    read_ncdf(paste(path_cmorized_annual,
                    file,
                    sep = ""))
  
  # convert to tibble
  variable_data_tibble <- variable_data %>%
    as_tibble()
  
  # drop units for plotting
  variable_data_tibble <- variable_data_tibble %>%
    drop_units() %>%
    mutate(regions = as.factor(regions))
  
  # remove open link to nc file
  rm(variable_data)
  
  print(
    variable_data_tibble %>%
      ggplot(aes(time_mon,
                 fgco2_reg)) +
      geom_hline(yintercept = 0, col = "red") +
      geom_path() +
      labs(title = paste("experiment_ID:", i_experiment_ID)) +
      facet_grid(regions ~ .)
  )
  
}
[1] "fgco2_reg_CESM-ETHZ_A_1_gr_1980-2018.nc"

Version Author Date
144e422 jens-daniel-mueller 2021-03-12
fbb65a7 jens-daniel-mueller 2021-03-12
5b0bf4f jens-daniel-mueller 2021-03-12
063851d jens-daniel-mueller 2021-03-02
[1] "fgco2_reg_CESM-ETHZ_B_1_gr_1980-2018.nc"

Version Author Date
144e422 jens-daniel-mueller 2021-03-12
fbb65a7 jens-daniel-mueller 2021-03-12
5b0bf4f jens-daniel-mueller 2021-03-12
fe6bd41 jens-daniel-mueller 2021-03-03
063851d jens-daniel-mueller 2021-03-02
[1] "fgco2_reg_CESM-ETHZ_C_1_gr_1980-2018.nc"

Version Author Date
144e422 jens-daniel-mueller 2021-03-12
fbb65a7 jens-daniel-mueller 2021-03-12
5b0bf4f jens-daniel-mueller 2021-03-12
fe6bd41 jens-daniel-mueller 2021-03-03
063851d jens-daniel-mueller 2021-03-02
[1] "fgco2_reg_CESM-ETHZ_D_1_gr_1980-2018.nc"

Version Author Date
144e422 jens-daniel-mueller 2021-03-12
fbb65a7 jens-daniel-mueller 2021-03-12
5b0bf4f jens-daniel-mueller 2021-03-12
fe6bd41 jens-daniel-mueller 2021-03-03
063851d jens-daniel-mueller 2021-03-02

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] units_0.6-7     tidync_0.2.4    stars_0.4-3     sf_0.9-6       
 [5] abind_1.4-5     metR_0.9.0      scico_1.2.0     patchwork_1.1.1
 [9] collapse_1.5.0  forcats_0.5.0   stringr_1.4.0   dplyr_1.0.2    
[13] purrr_0.3.4     readr_1.4.0     tidyr_1.1.2     tibble_3.0.4   
[17] ggplot2_3.3.2   tidyverse_1.3.0 workflowr_1.6.2

loaded via a namespace (and not attached):
 [1] httr_1.4.2               jsonlite_1.7.1           modelr_0.1.8            
 [4] assertthat_0.2.1         blob_1.2.1               cellranger_1.1.0        
 [7] yaml_2.2.1               pillar_1.4.7             backports_1.1.10        
[10] lattice_0.20-41          glue_1.4.2               RcppEigen_0.3.3.7.0     
[13] digest_0.6.27            promises_1.1.1           checkmate_2.0.0         
[16] rvest_0.3.6              colorspace_1.4-1         htmltools_0.5.0         
[19] httpuv_1.5.4             Matrix_1.2-18            pkgconfig_2.0.3         
[22] broom_0.7.2              haven_2.3.1              scales_1.1.1            
[25] whisker_0.4              later_1.1.0.1            git2r_0.27.1            
[28] farver_2.0.3             generics_0.0.2           ellipsis_0.3.1          
[31] withr_2.3.0              cli_2.1.0                magrittr_1.5            
[34] crayon_1.3.4             readxl_1.3.1             evaluate_0.14           
[37] ncdf4_1.17               fs_1.5.0                 fansi_0.4.1             
[40] lwgeom_0.2-5             xml2_1.3.2               RcppArmadillo_0.10.1.2.0
[43] class_7.3-17             tools_4.0.3              data.table_1.13.2       
[46] hms_0.5.3                lifecycle_0.2.0          munsell_0.5.0           
[49] reprex_0.3.0             compiler_4.0.3           e1071_1.7-4             
[52] RNetCDF_2.4-2            rlang_0.4.9              classInt_0.4-3          
[55] grid_4.0.3               rstudioapi_0.13          labeling_0.4.2          
[58] rmarkdown_2.5            gtable_0.3.0             DBI_1.1.0               
[61] R6_2.5.0                 ncmeta_0.3.0             lubridate_1.7.9         
[64] knitr_1.30               rprojroot_2.0.2          KernSmooth_2.23-17      
[67] stringi_1.5.3            parallel_4.0.3           Rcpp_1.0.5              
[70] vctrs_0.3.5              dbplyr_1.4.4             tidyselect_1.1.0        
[73] xfun_0.18