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Knit directory: bgc_argo_r_argodata/
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Explore BGC-Argo temperature data through timeseries and monthly climatological maps
path_argo <- '/nfs/kryo/work/updata/bgc_argo_r_argodata'
path_emlr_utilities <- "/nfs/kryo/work/jenmueller/emlr_cant/utilities/files/"
path_basin_mask <- "/nfs/kryo/work/updata/reccap2/"
path_argo_preprocessed <- paste0(path_argo, "/preprocessed_bgc_data")
Using only temperature data from flag A profiles which have an associated flag A pH profile
# flag A temperature data in the top 20 m
sst <-
read_rds(file = paste0(path_argo_preprocessed, "/bgc_merge_flag_AB.rds")) %>%
filter(between(depth, 0, 20)) %>%
mutate(year = year(date),
month = month(date)) %>%
select(
-c(
ph_in_situ_total_adjusted,
ph_in_situ_total_adjusted_error,
ph_in_situ_total_adjusted_qc,
profile_ph_in_situ_total_qc
)
)
# load in biome separations
nm_biomes <- read_rds(file = paste0(path_argo_preprocessed, "/nm_biomes.rds"))
sst_SO <- sst %>%
filter(lat <= -30)
Difference between the in-situ measured sst (20 m) and the profile-mean 20m temperature
# calculate the mean sst for each surface profile
mean_profile_sst <- sst_SO %>%
group_by(platform_number, cycle_number) %>%
mutate(mean_prof_sst = mean(temp_adjusted, na.rm = TRUE),
.before = depth) %>%
ungroup() %>%
mutate(offset = temp_adjusted-mean_prof_sst,
.after = mean_prof_sst) # subtract the mean profile sst from the measured in situ sst
mean_profile_sst %>%
ggplot()+
geom_point(aes(x = offset, y = depth, col = as.character(year)), size = 0.3, pch = 19) +
scale_y_reverse()+
geom_vline(xintercept = 0, col = 'red', size = 0.6)+
labs(x = 'offset (ºC)',
y = 'depth (m)',
col = 'year',
title = 'in situ sst - mean profile sst')
Version | Author | Date |
---|---|---|
710edd4 | jens-daniel-mueller | 2022-05-11 |
Bin the sst data into 2m-depth intervals and calculate the offset for each sst observation in each depth interval relative to the profile-mean sst
# bin the sst values into 2m bins and calculate the offset for each 2m bin
mean_profile_sst_binned <- sst_SO %>%
mutate(depth = cut(depth, seq(0, 20, 2), seq(1, 19, 2)),
depth = as.numeric(as.character(depth))) %>%
group_by(platform_number, cycle_number) %>%
mutate(mean_prof_sst = mean(temp_adjusted, na.rm = TRUE),
.before = depth) %>%
ungroup() %>%
mutate(offset = temp_adjusted-mean_prof_sst,
.after = mean_prof_sst)
# plot the offset of the depth-binned values
mean_profile_sst_binned %>%
ggplot()+
geom_point(aes(x = offset, y = depth, col = as.character(year)), size = 0.3, pch = 19) +
scale_y_reverse()+
geom_vline(xintercept = 0, col = 'red', size = 0.6)+
labs(x = 'offset (ºC)',
y = 'depth (m)',
col = 'year',
title = 'in situ sst - mean profile sst (2m depth bins)')
Version | Author | Date |
---|---|---|
710edd4 | jens-daniel-mueller | 2022-05-11 |
Mean binned offset
# bin the ph values into 2m bins and calculate the offset for each 2m bin
profile_sst_binned_ave <- sst_SO %>%
mutate(depth = cut(depth, seq(0, 20, 2), seq(1, 19, 2)),
depth = as.numeric(as.character(depth))) %>%
group_by(platform_number, cycle_number) %>%
mutate(mean_prof_sst = mean(temp_adjusted, na.rm = TRUE),
.before = depth) %>%
ungroup() %>%
mutate(offset = temp_adjusted-mean_prof_sst,
.after = mean_prof_sst) %>%
group_by(depth) %>%
summarise(mean_offset = mean(offset))
# plot the offset of the depth-binned values
profile_sst_binned_ave %>%
ggplot()+
geom_point(aes(x = mean_offset, y = depth), size = 1, pch = 19) +
geom_line(aes(x = mean_offset, y = depth))+
scale_y_reverse()+
geom_vline(xintercept = 0, col = 'red', size = 1)+
labs(x = 'mean offset (ºC)',
y = 'depth (m)',
col = 'year',
title = 'in situ sst - mean profile sst (2m depth bins)')
Version | Author | Date |
---|---|---|
710edd4 | jens-daniel-mueller | 2022-05-11 |
Map of monthly climatological Argo temperature (BGC floats, flag A pH profiles only), April 2014-December 2021
# average pH values in the top 20 m for each month in each 2 x 2º longitude/latitude grid
sst_clim_SO <- sst_SO %>%
group_by(lat, lon, month) %>%
summarise(sst_clim_month = mean(temp_adjusted))
# read in the map from updata
map <-
read_rds(paste(path_emlr_utilities,
"map_landmask_WOA18.rds",
sep = ""))
# map a monthly climatology of pH (April 2014 - August 2021)
map +
geom_tile(data = sst_clim_SO,
aes(lon, lat, fill = sst_clim_month)) +
lims(y = c(-85, -25)) +
scale_fill_viridis_c() +
labs(x = 'lon',
y = 'lat',
fill = 'SST',
title = 'Monthly climatological \nArgo SST (Apr 2014 - Dec 2021)') +
theme(legend.position = 'right') +
facet_wrap(~month, ncol = 2)
Version | Author | Date |
---|---|---|
710edd4 | jens-daniel-mueller | 2022-05-11 |
basemap(limits = -32, data = sst_clim_SO) + # change to polar projection
geom_spatial_tile(data = sst_clim_SO,
aes(x = lon,
y = lat,
fill = sst_clim_month),
linejoin = 'mitre',
col = 'transparent',
detail = 60)+
scale_fill_viridis_c()+
theme(legend.position = 'bottom')+
labs(x = 'lon',
y = 'lat',
fill = 'SST',
title = 'monthly climatological \nArgo SST (Apr 2014 - Dec 2021)')+
facet_wrap(~month, ncol = 2)
Timeseries of monthly SST values, for each Mayot biome
# plot the region separations on a map
map +
geom_raster(data = nm_biomes,
aes(x = lon,
y = lat,
fill = biome_name)) +
labs(title = 'Southern Ocean Mayot biomes',
fill = 'biome')
Version | Author | Date |
---|---|---|
710edd4 | jens-daniel-mueller | 2022-05-11 |
# plot a timeseries of monthly values over the whole southern ocean south of 30ºS
sst_SO <- inner_join(sst_SO, nm_biomes)
sst_month_SO <- sst_SO %>%
group_by(year, month, biome_name) %>%
summarise(sst_ave = mean(temp_adjusted, na.rm = TRUE))
# timeseries of monthly pH values over 2014-2021 (separate panels for each month)
sst_month_SO %>%
ggplot(aes(x = year,
y = sst_ave,
group = biome_name,
col = biome_name)) +
facet_wrap(~month) +
geom_line() +
geom_point() +
labs(x = 'year',
y = 'SST (ºC)',
title = 'monthly mean Argo SST (Apr 2014-Dec 2021, Southern Ocean)',
col = 'region')
Version | Author | Date |
---|---|---|
710edd4 | jens-daniel-mueller | 2022-05-11 |
Monthly average Southern Ocean SST, for each biome
# timeseries of monthly sst values for each year (separate years on the same plot)
sst_month_SO %>%
# filter(year != 2014) %>% # remove the year that is missing data
ggplot(aes(x = month,
y = sst_ave,
group = year,
col = as.character(year)))+
geom_line()+
geom_point()+
scale_x_continuous(breaks = seq(1, 12, 2))+
facet_wrap(~biome_name)+
labs(x = 'month',
y = 'SST (ºC)',
title = 'monthly mean Argo SST (Apr 2014-Dec 2021, Southern Ocean regions)',
col = 'year')
Version | Author | Date |
---|---|---|
710edd4 | jens-daniel-mueller | 2022-05-11 |
# calculate a yearly average SST (one SST value per year, for the whole biome)
sst_year_SO <- sst_SO %>%
group_by(year, biome_name) %>%
summarise(sst_ave = mean(temp_adjusted, na.rm = TRUE))
# plot a timeseries of the yearly average SST value (one value per year)
sst_year_SO %>%
ggplot(aes(x = year, y = sst_ave, group = biome_name, col = biome_name))+
geom_line()+
geom_point()+
labs(x = 'year',
y = 'SST (ºC)',
title = 'yearly mean Argo SST (Apr 2014-Dec 2021, south of 30ºS)',
col = 'region')
sessionInfo()
R version 4.1.2 (2021-11-01)
Platform: x86_64-pc-linux-gnu (64-bit)
Running under: openSUSE Leap 15.3
Matrix products: default
BLAS: /usr/local/R-4.1.2/lib64/R/lib/libRblas.so
LAPACK: /usr/local/R-4.1.2/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] ggOceanMaps_1.2.6 ggspatial_1.1.5 oce_1.5-0 gsw_1.0-6
[5] lubridate_1.8.0 forcats_0.5.1 stringr_1.4.0 dplyr_1.0.7
[9] purrr_0.3.4 readr_2.1.1 tidyr_1.1.4 tibble_3.1.6
[13] ggplot2_3.3.5 tidyverse_1.3.1 workflowr_1.7.0
loaded via a namespace (and not attached):
[1] fs_1.5.2 sf_1.0-5 httr_1.4.2 rprojroot_2.0.2
[5] tools_4.1.2 backports_1.4.1 bslib_0.3.1 rgdal_1.5-28
[9] utf8_1.2.2 R6_2.5.1 KernSmooth_2.23-20 rgeos_0.5-9
[13] DBI_1.1.2 colorspace_2.0-2 raster_3.5-11 withr_2.4.3
[17] sp_1.4-6 tidyselect_1.1.1 processx_3.5.2 compiler_4.1.2
[21] git2r_0.29.0 cli_3.1.1 rvest_1.0.2 xml2_1.3.3
[25] labeling_0.4.2 sass_0.4.0 scales_1.1.1 classInt_0.4-3
[29] callr_3.7.0 proxy_0.4-26 digest_0.6.29 rmarkdown_2.11
[33] pkgconfig_2.0.3 htmltools_0.5.2 highr_0.9 dbplyr_2.1.1
[37] fastmap_1.1.0 rlang_1.0.2 readxl_1.3.1 rstudioapi_0.13
[41] farver_2.1.0 jquerylib_0.1.4 generics_0.1.1 jsonlite_1.7.3
[45] magrittr_2.0.1 Rcpp_1.0.8 munsell_0.5.0 fansi_1.0.2
[49] lifecycle_1.0.1 terra_1.5-12 stringi_1.7.6 whisker_0.4
[53] yaml_2.2.1 grid_4.1.2 parallel_4.1.2 promises_1.2.0.1
[57] crayon_1.4.2 lattice_0.20-45 haven_2.4.3 hms_1.1.1
[61] knitr_1.37 ps_1.6.0 pillar_1.6.4 codetools_0.2-18
[65] reprex_2.0.1 glue_1.6.0 evaluate_0.14 getPass_0.2-2
[69] modelr_0.1.8 vctrs_0.3.8 tzdb_0.2.0 httpuv_1.6.5
[73] cellranger_1.1.0 gtable_0.3.0 assertthat_0.2.1 xfun_0.29
[77] broom_0.7.11 e1071_1.7-9 later_1.3.0 viridisLite_0.4.0
[81] class_7.3-20 units_0.7-2 ellipsis_0.3.2