SmartCane/r_app/ci_extraction.R

242 lines
8.9 KiB
R

library(here)
library(sf)
library(terra)
library(tidyverse)
library(lubridate)
library(exactextractr)
library(readxl)
# Vang alle command line argumenten op
args <- commandArgs(trailingOnly = TRUE)
# Controleer of er ten minste één argument is doorgegeven
if (length(args) == 0) {
stop("Geen argumenten doorgegeven aan het script")
}
# Converteer het eerste argument naar een numerieke waarde
end_date <- as.Date(args[1])
offset <- as.numeric(args[2])
# Controleer of weeks_ago een geldig getal is
if (is.na(offset)) {
# stop("Het argument is geen geldig getal")
offset <- 7
}
# Converteer het tweede argument naar een string waarde
project_dir <- as.character(args[3])
# Controleer of data_dir een geldige waarde is
if (!is.character(project_dir)) {
project_dir <- "chemba"
}
laravel_storage_dir <- here("laravel_app/storage/app", project_dir)
#preparing directories
planet_tif_folder <- here(laravel_storage_dir, "merged_tif")
merged_final <- here(laravel_storage_dir, "merged_final_tif")
new_project_question = FALSE
planet_tif_folder <- here(laravel_storage_dir, "merged_tif")
merged_final <- here(laravel_storage_dir, "merged_final_tif")
data_dir <- here(laravel_storage_dir, "Data")
extracted_CI_dir <- here(data_dir, "extracted_ci")
daily_CI_vals_dir <- here(extracted_CI_dir, "daily_vals")
cumulative_CI_vals_dir <- here(extracted_CI_dir, "cumulative_vals")
weekly_CI_mosaic <- here(laravel_storage_dir, "weekly_mosaic")
daily_vrt <- here(data_dir, "vrt")
harvest_dir <- here(data_dir, "HarvestData")
source("parameters_project.R")
source("utils_2.R")
dir.create(here(laravel_storage_dir))
dir.create(here(data_dir))
dir.create(here(extracted_CI_dir))
dir.create(here(daily_CI_vals_dir))
dir.create(here(cumulative_CI_vals_dir))
dir.create(here(weekly_CI_mosaic))
dir.create(here(daily_vrt))
dir.create(merged_final)
dir.create(harvest_dir)
# end_date <- lubridate::dmy("20-6-2024")
week <- week(end_date)
#weeks_ago = 0
# Creating weekly mosaic
#dates <- date_list(weeks_ago)
dates <- date_list(end_date, offset)
print(dates)
#load pivot geojson
# pivot_sf_q <- st_read(here(data_dir, "pivot.geojson")) %>% dplyr::select(pivot, pivot_quadrant) %>% vect()
# raster_files <- list.files(planet_tif_folder,full.names = T, pattern = ".tif")
# filtered_files <- map(dates$days_filter, ~ raster_files[grepl(pattern = .x, x = raster_files)]) %>%
# compact() %>%
# flatten_chr()
# head(filtered_files)
# Extracting CI
# pivot_sf_q <- st_read(here("..", "Data", "pivot_20210625.geojson")) %>% dplyr::select(pivot, pivot_quadrant) %>% vect()
# pivot_sf <- st_read(here(data_dir, "pivot.geojson")) %>% dplyr::select(pivot, pivot_quadrant) %>% group_by(pivot) %>% summarise() %>% vect()
# message("pivot loaded")
raster_files_NEW <- list.files(merged_final,full.names = T, pattern = ".tif")
# pivots_dates0 <- readRDS(here(harvest_dir, "harvest_data_new")) %>% filter(
# pivot %in% c("1.1", "1.2", "1.3", "1.4", "1.6", "1.7", "1.8", "1.9", "1.10", "1.11", "1.12", "1.13",
# "1.14" , "1.16" , "1.17" , "1.18" ,"2.1", "2.2", "2.3" , "2.4", "2.5", "3.1", "3.2", "3.3",
# "4.1", "4.2", "4.3", "4.4", "4.5", "4.6", "5.1" ,"5.2", "5.3", "5.4", "6.1", "6.2", "DL1.1", "DL1.3")
# )
# harvesting_data <- pivots_dates0 %>%
# select(c("pivot_quadrant", "season_start_2021", "season_end_2021", "season_start_2022", "season_end_2022", "season_start_2023", "season_end_2023", "season_start_2024", "season_end_2024")) %>%
# pivot_longer(cols = starts_with("season"), names_to = "Year", values_to = "value") %>%
# separate(Year, into = c("name", "Year"), sep = "(?<=season_start|season_end)\\_", remove = FALSE) %>%
# mutate(name = str_to_title(name)) %>%
# pivot_wider(names_from = name, values_from = value) %>%
# rename(field = pivot_quadrant)
#If run for the firsttime, it will extract all data since the start and put into a table.rds. otherwise it will only add on to the existing table.
# Define the path to the file
file_path <- here(cumulative_CI_vals_dir,"combined_CI_data.rds")
# Check if the file exists
if (!file.exists(file_path)) {
# Create the file with columns "column1" and "column2"
data <- data.frame(sub_field=NA, field=NA)
saveRDS(data, file_path)
}
print("combined_CI_data.rds exists, adding the latest image data to the table.")
filtered_files <- map(dates$days_filter, ~ raster_files_NEW[grepl(pattern = .x, x = raster_files_NEW)]) %>%
compact() %>%
flatten_chr()
walk(filtered_files, extract_rasters_daily, field_geojson= field_boundaries, quadrants = TRUE, daily_CI_vals_dir)
extracted_values <- list.files(daily_CI_vals_dir, full.names = TRUE)
extracted_values <- map(dates$days_filter, ~ extracted_values[grepl(pattern = .x, x = extracted_values)]) %>%
compact() %>%
flatten_chr()
pivot_stats <- extracted_values %>%
map(readRDS) %>% list_rbind() %>%
group_by(sub_field) %>%
summarise(across(everything(), ~ first(na.omit(.))))
combined_CI_data <- readRDS(here(cumulative_CI_vals_dir,"combined_CI_data.rds")) #%>% drop_na(pivot_quadrant)
pivot_stats2 <- bind_rows(pivot_stats, combined_CI_data)
# pivot_stats2 <- combined_CI_data
print("All CI values extracted from latest 7 images.")
saveRDS(combined_CI_data, here(cumulative_CI_vals_dir,"combined_CI_data.rds")) #used to save the rest of the data into one file
# gather data into long format for easier calculation and visualisation
pivot_stats_long <- pivot_stats2 %>%
tidyr::gather("Date", value, -field, -sub_field ) %>%
mutate(Date = right(Date, 8),
Date = lubridate::ymd(Date)
) %>%
drop_na(c("value","Date")) %>%
mutate(value = as.numeric(value))%>%
filter_all(all_vars(!is.infinite(.))) %>%
# rename(field = pivot_quadrant,
# sub_field = field) %>%
unique()
# #2021
# pivot_select_model_Data_2021 <- harvesting_data %>% filter(Year == 2021) %>% pull(field)
#
# pivot_select_model_Data_2022 <- harvesting_data %>% filter(Year == 2022) %>% pull(field)
# pivot_select_model_Data_2023 <- harvesting_data %>% filter(year == 2023) %>% filter(!is.na(season_start)) %>% pull(sub_field)
pivot_select_model_Data_2024 <- harvesting_data %>% filter(year == 2024)%>% filter(!is.na(season_start)) %>% pull(sub_field)
# pivots_dates_Data_2022 <- pivots_dates0 %>% filter(!is.na(season_end_2022))
# pivot_select_model_Data_2022 <- unique(pivots_dates_Data_2022$pivot_quadrant )
#
# pivots_dates_Data_2023 <- pivots_dates0 %>% filter(!is.na(season_start_2023))
# pivot_select_model_Data_2023 <- unique(pivots_dates_Data_2023$pivot_quadrant)
#
# pivots_dates_Data_2024 <- pivots_dates0 %>% filter(!is.na(season_start_2024))
# pivot_select_model_Data_2024 <- unique(pivots_dates_Data_2024$pivot_quadrant)
extract_CI_data <- function(field_names, harvesting_data, field_CI_data, season) {
# field_names = "AG1D06P"
# field_names = "1.13A"
# harvesting_data = harvesting_data
# field_CI_data = pivot_stats_long
# season= 2023
filtered_harvesting_data <- harvesting_data %>%
na.omit() %>%
filter(year == season, sub_field %in% field_names)
filtered_field_CI_data <- field_CI_data %>%
filter(sub_field %in% field_names)
# CI <- map_df(field_names, ~ {
ApproxFun <- approxfun(x = filtered_field_CI_data$Date, y = filtered_field_CI_data$value)
Dates <- seq.Date(ymd(min(filtered_field_CI_data$Date)), ymd(max(filtered_field_CI_data$Date)), by = 1)
LinearFit <- ApproxFun(Dates)
CI <- data.frame(Date = Dates, FitData = LinearFit) %>%
left_join(., filtered_field_CI_data, by = "Date") %>%
filter(Date > filtered_harvesting_data$season_start & Date < filtered_harvesting_data$season_end) %>%
mutate(DOY = seq(1, n(), 1),
model = paste0("Data", season, " : ", field_names),
season = season,
sub_field = field_names)
# }) #%>%
#{if (length(field_names) > 0) message("Done!")}
return(CI)
}
## Extracting the correct CI values
# Data_2021 <- map(pivot_select_model_Data_2021, ~ extract_CI_data(.x, harvesting_data = harvesting_data, field_CI_data = pivot_stats_long, season = 2021)) %>% list_rbind()
# message('2021')
# Data_2022 <- map(pivot_select_model_Data_2022, ~ extract_CI_data(.x, harvesting_data = harvesting_data, field_CI_data = pivot_stats_long, season = 2022)) %>% list_rbind()
# message('2022')
# Data_2023 <- map(pivot_select_model_Data_2023, ~ extract_CI_data(.x, harvesting_data = harvesting_data, field_CI_data = pivot_stats_long, season = 2023)) %>% list_rbind()
# message('2023')
Data_2024 <- map(pivot_select_model_Data_2024, ~ extract_CI_data(.x, harvesting_data = harvesting_data, field_CI_data = pivot_stats_long, season = 2024)) %>% list_rbind()
message('2024')
#CI_all <- rbind(Data_2023, Data_2024)
CI_all <- Data_2024
message('CI_all created')
#CI_all <- Data_2023
CI_all <- CI_all %>% group_by(model) %>% mutate(CI_per_day = FitData - lag(FitData),
cumulative_CI = cumsum(FitData))
message('CI_all cumulative')
head(CI_all)
message('show head')
saveRDS(CI_all, here(cumulative_CI_vals_dir,"All_pivots_Cumulative_CI_quadrant_year_v2.rds"))
message('rds saved')