Introduction

This R Markdown document is designed to transform data that is not in CWP format into CWP format. Initially, it changes the format of the data; subsequently, it maps the data to adhere to CWP standards. This markdown is automatically created from the function: https://raw.githubusercontent.com/firms-gta/geoflow-tunaatlas/refs/heads/master/R/tunaatlas_scripts/pre-harmonization/west_pacific_ocean_effort_5deg_1m_tunaatlaswcpfc_level0__driftnet.R, the documentation keeps the format of roxygen2 skeleton.

A summary of the mapping process is provided. The path to the dataset is specified. You will find on this same repository on GitHub the first line of each dataset. The datasets are named after the historical name provided by tRFMOs while exporting and may change. The information provided in the Rmd allows understanding correctly which dataset should be used in this markdown.

Additional operations are performed next to verify other aspects of the data, such as the consistency of the geolocation, the values, and the reported catches in numbers and tons.

If you are interested in further details, the results and codes are available for review.

Each .Rmd script requires the user to knit the dataset at the beginning of the script in order to execute the harmonization process correctly. It is also possible to run the code chunk by chunk but be sure to be in the correct working directory (i.e., the one of the .Rmd).

path_to_raw_dataset <- here::here('R/tunaatlas_scripts/pre-harmonization', 'wcpfc', 'effort', 'data', 'WCPFC_G_PUBLIC_BY_YR_MON.csv')

Harmonize WCPFC Driftnet Effort Datasets

This function harmonizes the WCPFC Driftnet effort datasets, preparing them for integration into the Tuna Atlas database according to specified format requirements.

@return None; the function outputs files directly, including harmonized datasets, optional metadata, and code lists for integration within the Tuna Atlas database.

@details This function modifies the dataset to ensure compliance with the standardized format, including renaming, reordering, and recalculating specific fields as necessary. Metadata integration is contingent on the intended use within the Tuna Atlas database.

@import dplyr @import tidyr @import readr @importFrom stringr str_replace @seealso for converting WCPFC Driftnet data structure, @export @keywords data harmonization, fisheries, WCPFC, driftnet, tuna @author Paul Taconet, IRD @author Bastien Grasset, IRD This script works with any dataset that has the first 5 columns named and ordered as follow: {YY|MM|LAT5|LON5|DAYS} followed by a list of columns specifing the species codes with “_N” for catches expressed in number and “_T” for catches expressed in tons

  #packages 
  
    
      
  
  if(!require(reshape)){
    install.packages("reshape")
    require(reshape)
  }
  
  if(!require(tidyr)){
    install.packages("tidyr")
    require(tidyr)
  }
  
  if(!require(dplyr)){
    install.packages("dplyr")
    require(dplyr)
  }

Input data sample: YY MM LAT5 LON5 DAYS ALB_N ALB_C 1983 11 30S 170W 0 0 0.000 1983 11 35S 170W 133 886 4.960 1983 12 35S 165W 0 0 0.000 1983 12 35S 170W 133 870 4.872 1983 12 40S 165W 0 0 0.000 1983 12 40S 170W 248 3822 21.402 Effort: final data sample: Flag Gear time_start time_end AreaName School EffortUnits Effort ALL D 1983-11-01 1983-12-01 6330165 ALL DAYS 133 ALL D 1983-12-01 1984-01-01 6330165 ALL DAYS 133 ALL D 1983-12-01 1984-01-01 6335165 ALL DAYS 248 ALL D 1984-01-01 1984-02-01 6230165 ALL DAYS 85 ALL D 1984-01-01 1984-02-01 6240160 ALL DAYS 59 ALL D 1984-01-01 1984-02-01 6335165 ALL DAYS 704 Historical name for the dataset at source WCPFC_G_PUBLIC_BY_YR_MON.csv

opts <- options()
options(encoding = "UTF-8")



colToKeep_efforts <- c("FishingFleet","Gear","time_start","time_end","AreaName","School","EffortUnits","Effort")

Efforts

DF <- read.csv(path_to_raw_dataset)
colnames(DF) <- toupper(colnames(DF))

DF <- melt(DF, id = c(colnames(DF[1:5]))) #@juldebar error with melt function from reshape package DF <- melt(as.data.table(DF), id=c(colnames(DF[1:5])))

DF <- DF %>% tidyr::gather(variable, value, -c(colnames(DF[1:5])))

DF <- DF %>% dplyr::filter(!value %in% 0) %>% dplyr::filter(!is.na(value))
DF$variable <- as.character(DF$variable)
colnames(DF)[which(colnames(DF) == "variable")] <- "Species"
DF$CatchUnits <- substr(DF$Species, nchar(DF$Species), nchar(DF$Species))
DF$Species <- toupper(DF$Species) 
DF$Species <- sub("_C", "", DF$Species)
DF$Species <- sub("_N", "", DF$Species)
DF$School <- "OTH"
DF$EffortUnits <- colnames(DF[5])
colnames(DF)[5] <- "Effort"
efforts_pivot_WCPFC <- DF; rm(DF)

Gear

efforts_pivot_WCPFC$Gear<-"D"

Catchunits

index.kg <- which( efforts_pivot_WCPFC[,"CatchUnits"] == "C" )
efforts_pivot_WCPFC[index.kg,"CatchUnits"]<- "t"

index.nr <- which( efforts_pivot_WCPFC[,"CatchUnits"] == "N" )
efforts_pivot_WCPFC[index.nr,"CatchUnits"]<- "no" 

School

efforts_pivot_WCPFC$School<-"OTH"

source("https://raw.githubusercontent.com/firms-gta/geoflow-tunaatlas/master/R/sardara_functions/WCPFC_CE_efforts_pivotDSD_to_harmonizedDSD.R")
efforts<-WCPFC_CE_efforts_pivotDSD_to_harmonizedDSD(efforts_pivot_WCPFC,colToKeep_efforts)

colnames(efforts)<-c("fishing_fleet","gear_type","time_start","time_end","geographic_identifier","fishing_mode","measurement_unit","measurement_value")
efforts$source_authority<-"WCPFC"
efforts$measurement <- "effort" 
efforts$measurement_processing_level <- "unknown" 
efforts$time_start <- as.Date(efforts$time_start)
efforts$time_end <- as.Date(efforts$time_end)
dataset_temporal_extent <- paste(
  paste0(format(min(efforts$time_start), "%Y"), "-01-01"),
  paste0(format(max(efforts$time_end), "%Y"), "-12-31"),
  sep = "/"
)

output in same folder as path_to_raw_dataset

output_name_dataset <- here::here('R/tunaatlas_scripts/pre-harmonization', 'wcpfc', 'effort', 'data', 'WCPFC_G_PUBLIC_BY_YR_MON_harmonized.csv')

write.csv(efforts, output_name_dataset, row.names = FALSE)
georef_dataset <- efforts

@ Load pre-harmonization scripts and apply mappings

download.file('https://raw.githubusercontent.com/firms-gta/geoflow-tunaatlas/master/R/tunaatlas_scripts/pre-harmonization/map_codelists_no_DB.R', destfile = 'local_map_codelists_no_DB.R')
source('local_map_codelists_no_DB.R')
fact <- "effort"
mapping_codelist <- map_codelists_no_DB(fact, mapping_dataset = "https://raw.githubusercontent.com/fdiwg/fdi-mappings/main/global/firms/gta/codelist_mapping_rfmos_to_global.csv", dataset_to_map = georef_dataset, mapping_keep_src_code = FALSE, summary_mapping = TRUE, source_authority_to_map = c("IATTC", "CCSBT", "WCPFC", "ICCAT", "IOTC"))
## 
##  mapping dimension gear_type with code list mapping
## 
##  mapping dimension fishing_fleet with code list mapping
## 
##  mapping dimension fishing_mode with code list mapping
## 
##  mapping dimension measurement_unit with code list mapping

@ Handle unmapped values and save the results

georef_dataset <- mapping_codelist$dataset_mapped %>% dplyr::mutate(fishing_fleet = ifelse(fishing_fleet == 'UNK', 'NEI', fishing_fleet), gear_type = ifelse(gear_type == 'UNK', '99.9', gear_type))
data.table::fwrite(mapping_codelist$recap_mapping, here::here('R/tunaatlas_scripts/pre-harmonization', 'wcpfc', 'effort', 'data', 'WCPFC_G_PUBLIC_BY_YR_MON_recap_mapping.csv'))
data.table::fwrite(mapping_codelist$not_mapped_total, here::here('R/tunaatlas_scripts/pre-harmonization', 'wcpfc', 'effort', 'data', 'WCPFC_G_PUBLIC_BY_YR_MON_not_mapped_total.csv'))
data.table::fwrite(georef_dataset, here::here('R/tunaatlas_scripts/pre-harmonization', 'wcpfc', 'effort', 'data', 'WCPFC_G_PUBLIC_BY_YR_MON_CWP_dataset.csv'))

Display the first few rows of the mapping summaries

print(head(mapping_codelist$recap_mapping))
## # A tibble: 4 × 5
##   src_code trg_code src_codingsystem trg_codingsystem   source_authority
##   <chr>    <chr>    <chr>            <chr>              <chr>           
## 1 DAYS     FDAYS    effortunit_wcpfc effortunit_rfmos   WCPFC           
## 2 OTH      OTH      schooltype_wcpfc schooltype_rfmos   WCPFC           
## 3 ALL      NEI      flag_wcpfc       fishingfleet_firms WCPFC           
## 4 D        07.2     gear_wcpfc       isscfg_revision_1  WCPFC