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02_CouplingAER2VMSOnVMEs.r
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02_CouplingAER2VMSOnVMEs.r
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##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
# MERGE STECF AER WITH VMS
# AND DISPACH AER LANDINGS, EFFORT AND COSTS
# ON VMS C-SQUARE CELLS PER YEAR, COUNTRY AND METIER LEVEL6
# Author: Francois Bastardie (May 2023)
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
setwd(file.path("D:","FBA", "FishSpatOverlayTool"))
RinputPath <- file.path(getwd(), "INPUT_DATASETS")
ROutputPathToDatasets <- file.path(getwd(), "OUTCOME_DATASETS")
RoutputPath4LargeFiles <- file.path("E:", "SeaWise")
library(data.table)
library(plyr)
library(dplyr)
library(vmstools)
#-----------------------------------
#-----------------------------------
#-----------------------------------
# READ STECF AER DATA
#filename <- file.path(RinputPath, "STECF_DATA", "STECF 22-06 AER 2022 - data",
# "2022_STECF_22-06_EU_Fleet_Economic_and_Transversal data_fleet segment_landings_2017_2021.csv")
filename <- file.path(RinputPath, "STECF_DATA", "2023_AER_data",
"2018_2021_landings_per_fs.csv")
stecf_fleetdata <- read.csv(file=filename, sep = ";", dec = ",")
stecf_fleetdata$gear_type <- NA
stecf_fleetdata <- stecf_fleetdata[,c("country_code","year","supra_reg","fishing_tech","vessel_length","cluster_name","fs_name","variable_group","variable_name","variable_code",
"value","species_name","species_code",
"sub_reg","gear_type")]
# check numbers
dd <- stecf_fleetdata[stecf_fleetdata$supra_reg=="NAO",]
ddd <- dd[dd$country_code=="ESP" & dd$vessel_length=="VL2440" & dd$fishing_tech=="DTS" & dd$year=="2018" & dd$variable_code=="totwghtlandg",]
sum(an(ddd$value)) # weight kg
str(stecf_fleetdata)
stecf_fleetdata$year <- as.character(stecf_fleetdata$year)
stecf_fleetdata$year <- as.factor(stecf_fleetdata$year)
# setting -1 values to 0
stecf_fleetdata$value[stecf_fleetdata$value < 0] <- 0
# filtering for NAO, calculating value of landings ####
stecf_fleetdata_value <- filter(stecf_fleetdata, variable_name=="Value of landings")
stecf_fleetdata_value <- stecf_fleetdata_value[, c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name","value","species_name","species_code","sub_reg","gear_type")]
# filtering for NAO, calculating kilo of landings ####
stecf_fleetdata_kilo <- filter(stecf_fleetdata, variable_name=="Live weight of landings")
colnames(stecf_fleetdata_kilo)[names(stecf_fleetdata_kilo)=="value"] <-"weight"
stecf_fleetdata_kilo <- stecf_fleetdata_kilo[,c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name","weight","species_name","species_code","sub_reg","gear_type")]
# joining AER value and weight data
stecf_fleetdata_with_kilo <- left_join(stecf_fleetdata_value, stecf_fleetdata_kilo, by=c("year","supra_reg","fishing_tech","vessel_length","fs_name","sub_reg","gear_type","country_code","species_name","species_code"))
# removing rows containing weight NAs
stecf_fleetdata_with_kilo <- stecf_fleetdata_with_kilo[!is.na(stecf_fleetdata_with_kilo$weight),]
# Refine dataframe to all variables necessary
stecf_fleetdata_with_kilo <- stecf_fleetdata_with_kilo[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","sub_reg","gear_type","species_code","value","weight")]
#-----------------------------------
#-----------------------------------
#-----------------------------------
# AGGREGATE STECF AER to REMOVE THE AER SPECIES INFO
stecf_fleetdata_with_kilo <- data.table(stecf_fleetdata_with_kilo)
# filter out non-deep sea species for adding an extra effort column
deepseaspp <- c("CFB","CYO","CYP","SCK","ETR","APQ","HXC","DCA","SHO","GAM","SBL","ETX","OXN","SYR","GSK",
"PZC","ALC","PHO","BSF","ARU","ALF","KEF","CMO","CYH","RCT","RNG","EPI","BRF","ORY","RHG",
"BLI","RIB","ANT","SBR","WRF","GHL","TVY","HPR","RTX","NEN","NNN","RIW","RJG","JAD","TJX","SFS","LXK","SFV") # with Annex I of Reg https://eur-lex.europa.eu/legal-content/EN/TXT/PDF/?uri=CELEX:32016R2336?
stecf_fleetdata_with_kilo$value_deepsea <- stecf_fleetdata_with_kilo$value # init
stecf_fleetdata_with_kilo$weight_deepsea <- stecf_fleetdata_with_kilo$weight # init
stecf_fleetdata_with_kilo[!stecf_fleetdata_with_kilo$species_code %in% deepseaspp, "weight_deepsea"] <- 0
stecf_fleetdata_with_kilo[!stecf_fleetdata_with_kilo$species_code %in% deepseaspp, "value_deepsea"] <- 0
stecf_fleetdata_with_kilo <- stecf_fleetdata_with_kilo[, .(
value = sum(an(value), na.rm=T),
weight = sum(an(weight), na.rm=T),
value_deepsea = sum(an(value_deepsea), na.rm=T),
weight_deepsea = sum(an(weight_deepsea), na.rm=T)),
by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name","sub_reg","gear_type")]
# check numbers
dd <- stecf_fleetdata_with_kilo[stecf_fleetdata_with_kilo$supra_reg=="NAO",]
ddd <- dd[dd$country_code=="ESP" & dd$vessel_length=="VL2440" & dd$fishing_tech=="DTS" & dd$year=="2018",]
sum(ddd$weight)
##-------
##-------
#### ### Reading and exploring STECF effort Data ####
#filename <- file.path(RinputPath, "STECF_DATA", "STECF 22-06 AER 2022 - data",
# "2022_STECF_22-06_EU_Fleet_Economic_and_Transversal data_fleet segment_effort.csv")
filename <- file.path(RinputPath, "STECF_DATA", "2023_AER_data",
"2018_2021_effort_per_fs.csv")
stecf_fleetdata_effort <- read.csv(file=file.path(filename), sep = ";", dec = ",")
stecf_fleetdata_effort_aerdaysatsea <- filter(stecf_fleetdata_effort, variable_name=="Days at sea")
stecf_fleetdata_effort_aerfishingdays <- filter(stecf_fleetdata_effort, variable_name=="Fishing days")
stecf_fleetdata_effort_aerkwFishingdays <- filter(stecf_fleetdata_effort, variable_name=="kW fishing days")
stecf_fleetdata_effort_daysatsea <- stecf_fleetdata_effort_aerdaysatsea[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value","sub_reg")]
stecf_fleetdata_effort_fishingdays <- stecf_fleetdata_effort_aerfishingdays[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value","sub_reg")]
stecf_fleetdata_effort_kwFishingdays <- stecf_fleetdata_effort_aerkwFishingdays[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value","sub_reg")]
names(stecf_fleetdata_effort_daysatsea)[7] <- "aerdaysatsea"
names(stecf_fleetdata_effort_fishingdays)[7] <- "aerfishingdays"
names(stecf_fleetdata_effort_kwFishingdays)[7] <- "aerkwFishingdays"
# Joining...
stecf_fleetdata_effort_kwFishingdays <- left_join(stecf_fleetdata_effort_kwFishingdays, stecf_fleetdata_effort_fishingdays,
by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name","sub_reg"))
stecf_fleetdata_effort_kwFishingdays <- left_join(stecf_fleetdata_effort_kwFishingdays, stecf_fleetdata_effort_daysatsea,
by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name","sub_reg"))
table(is.na(stecf_fleetdata_effort_kwFishingdays$kwFishingdays))
stecf_fleetdata_effort_kwFishingdays$year <- as.factor(stecf_fleetdata_effort_kwFishingdays$year)
# joining dataframe with value and weight with the effort-dataframe
stecf_fleetdata_with_kiloandeffort <- left_join(stecf_fleetdata_with_kilo, stecf_fleetdata_effort_kwFishingdays,
by=c("country_code","year","fishing_tech","vessel_length","sub_reg", "fs_name", "supra_reg"))
stecf_fleetdata_with_kiloandeffort$aerkwFishingdays <- an(stecf_fleetdata_with_kiloandeffort$aerkwFishingdays)
stecf_fleetdata_with_kiloandeffort$aerfishingdays <- an(stecf_fleetdata_with_kiloandeffort$aerfishingdays)
stecf_fleetdata_with_kiloandeffort$aerdaysatsea <- an(stecf_fleetdata_with_kiloandeffort$aerdaysatsea)
# check
dd <- stecf_fleetdata_with_kiloandeffort
ddd <- dd[dd$country_code=="BEL" & dd$fishing_tech=="TBB" & dd$vessel_length=="VL2440" & dd$year=="2019",]
sum(ddd$aerkwFishingdays)
dd <- stecf_fleetdata_with_kiloandeffort
ddd <- dd[dd$country_code=="ESP" & dd$fishing_tech=="DTS" & dd$vessel_length=="VL2440" & dd$year=="2021",]
sum(ddd$aerkwFishingdays, na.rm=TRUE)
#-----------------------------------
#-----------------------------------
# AGGREGATE STECF AER to REMOVE THE AER FS_NAME DIMENSION
#caution: some combination of coutry-fishtech-vesselsize has several fs_name....
# input
dat <- stecf_fleetdata_with_kiloandeffort
# check
dat[dat$year=="2020" & dat$country_code=="ESP" & dat$fishing_tech=="HOK" & dat$vessel_length=="VL2440" ,]
# so aggregate
dat <- as.data.frame(dat)
dat <- dat[!duplicated(dat [,c("country_code", "year", "fishing_tech", "vessel_length", "fs_name", "sub_reg")]),]
dat <- data.table(dat)
dat <- dat[,lapply(.SD, sum, na.rm=TRUE),
.SDcols=c("value", "weight", "aerkwFishingdays", "aerfishingdays", "aerdaysatsea"),
by=c("year", "supra_reg", "country_code", "fishing_tech", "vessel_length", "sub_reg")
]
#caution: some combination of coutry-fishtech-vesselsize has several fs_name....
dat[dat$year=="2020" & dat$country_code=="ESP" & dat$fishing_tech=="HOK" & dat$vessel_length=="VL2440" ,]
# output
agg_stecf_fleetdata_with_kiloeffort_nofs <- dat
# check numbers
dd <- agg_stecf_fleetdata_with_kiloeffort_nofs[agg_stecf_fleetdata_with_kiloeffort_nofs$supra_reg=="NAO",]
ddd <- dd[dd$country_code=="ESP" & dd$vessel_length=="VL2440" & dd$fishing_tech=="DTS" & dd$year=="2018",]
sum(ddd$weight)
#-----------------------------------
#-----------------------------------
#-----------------------------------
##-------
####### formatting a AER costratios ####
#filename <- file.path(RinputPath, "STECF_DATA", "STECF 22-06 AER 2022 - data",
# "2022_STECF_22-06_EU_Fleet_Economic_and_Transversal data_fleet segment_economic_variables.csv")
filename <- file.path(RinputPath, "STECF_DATA", "STECF 22-06 AER 2022 - data",
"2022_STECF_22-06_EU_Fleet_Economic_and_Transversal data_fleet segment_economic_variables.csv")
AER2022_eco <- read.csv(file=file.path(filename),sep = ";",dec = ",")
filename <- file.path(RinputPath, "STECF_DATA", "2023_AER_data",
"2018_2021_economic_variables_per_fs.csv")
AER_eco <- read.csv(file=file.path(filename),sep = ";",dec = ",") ##MISSING 2018!!
cols <- colnames(AER_eco)[colnames(AER_eco) %in% colnames(AER2022_eco)]
AER_eco <- rbind.data.frame(AER2022_eco[AER2022_eco$year==2018,cols], AER_eco[cols])
stecf_fleetdata_energy_costs <- filter(AER_eco, variable_name=="Energy costs") # EUR
stecf_fleetdata_personnel_costs <- filter(AER_eco, variable_name=="Personnel costs") # EUR
stecf_fleetdata_repair_costs <- filter(AER_eco, variable_name=="Repair & maintenance costs") # EUR
stecf_fleetdata_oth_variable_costs <- filter(AER_eco, variable_name=="Other variable costs") # EUR
stecf_fleetdata_other_income <- filter(AER_eco, variable_name=="Other income") # EUR
stecf_fleetdata_unpaid_labour <- filter(AER_eco, variable_name=="Unpaid labour") # EUR
stecf_fleetdata_oth_non_var_costs <- filter(AER_eco, variable_name=="Other non-variable costs") # EUR
stecf_fleetdata_kwFishingdays <- filter(AER_eco, variable_name=="kW fishing days") # kWday
stecf_fleetdata_fishingdays <- filter(AER_eco, variable_name=="Fishing days") # day
stecf_fleetdata_kwDaysAtSea <- filter(AER_eco, variable_name=="kW days at sea") # kWday
stecf_fleetdata_engagedCrew <- filter(AER_eco, variable_name=="Engaged crew") # number
stecf_fleetdata_cons_of_fixed_capital <- filter(AER_eco, variable_name=="Consumption of fixed capital") # EUR
stecf_fleetdata_value_of_physical_capital <- filter(AER_eco, variable_name=="Value of physical capital") # EUR
stecf_fleetdata_energy_costs <- stecf_fleetdata_energy_costs[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_personnel_costs <- stecf_fleetdata_personnel_costs[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_repair_costs <- stecf_fleetdata_repair_costs[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_oth_variable_costs <- stecf_fleetdata_oth_variable_costs[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_other_income <- stecf_fleetdata_other_income[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_unpaid_labour <- stecf_fleetdata_unpaid_labour[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_oth_non_var_costs <- stecf_fleetdata_oth_non_var_costs[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_aerECOkwFishingdays <- stecf_fleetdata_kwFishingdays[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_fishingdays <- stecf_fleetdata_fishingdays[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_kwDaysAtSea <- stecf_fleetdata_kwDaysAtSea [,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_engagedCrew <- stecf_fleetdata_engagedCrew [,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_cons_of_fixed_capital <- stecf_fleetdata_cons_of_fixed_capital[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
stecf_fleetdata_value_of_physical_capital <- stecf_fleetdata_value_of_physical_capital[,c("country_code", "year","supra_reg","fishing_tech","vessel_length","fs_name","value")]
names(stecf_fleetdata_energy_costs)[7] <- "energycosts"
names(stecf_fleetdata_personnel_costs)[7] <- "personnelcosts"
names(stecf_fleetdata_repair_costs)[7] <- "repaircosts"
names(stecf_fleetdata_oth_variable_costs)[7] <- "othvarcosts"
names(stecf_fleetdata_aerECOkwFishingdays)[7] <- "aerECOkwFishingdays"
names(stecf_fleetdata_fishingdays)[7] <- "fishingdays"
names(stecf_fleetdata_kwDaysAtSea)[7] <- "kwDaysAtSea"
names(stecf_fleetdata_other_income)[7] <- "other_income"
names(stecf_fleetdata_unpaid_labour)[7] <- "unpaid_labour"
names(stecf_fleetdata_oth_non_var_costs)[7] <- "oth_non_var_costs"
names(stecf_fleetdata_engagedCrew)[7] <- "engagedCrew"
names(stecf_fleetdata_cons_of_fixed_capital)[7] <- "cons_of_fixed_capital"
names(stecf_fleetdata_value_of_physical_capital)[7] <- "value_of_physical_capital"
# the equations for the Economic Evaluation we target are:
# GVA <- (landings_kg * average_price_EUR_per_kg) + other_income - unpaid_labour - energycosts - othvarcosts - oth_non_var_costs - repaircosts
# GrossProfit <- GVA - personnelcosts
# OperatingProfit <- GrossProfit - cons_of_fixed_capital
# CapitalOpportunityCosts <- value_of_physical_capital * opportunity_interest_rate/100.0
# NetProfit <- OperatingProfit - CapitalOpportunityCosts - value_of_physical_capital * ((100.0-annual_depreciation_rate)/100.0)
#=> to be computed on the final merged dataset, then to be recomputed after applying displacement scenarios (e.g. based on LPUEs-costs...) changing the income from landings and the costs
#=> would need to compute a price from landing_eur/landing_kg...
# Joining...
AERcosts <- left_join(stecf_fleetdata_energy_costs, stecf_fleetdata_personnel_costs, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
AERcosts <- left_join(AERcosts, stecf_fleetdata_repair_costs, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
AERcosts <- left_join(AERcosts, stecf_fleetdata_oth_variable_costs, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
AERcosts <- left_join(AERcosts, stecf_fleetdata_aerECOkwFishingdays, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
AERcosts <- left_join(AERcosts, stecf_fleetdata_fishingdays, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
AERcosts <- left_join(AERcosts, stecf_fleetdata_kwDaysAtSea, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
dd <- AERcosts
dd[dd$country_code=="ESP" & dd$year=="2021" & dd$vessel_length=="VL2440" & dd$supra_reg=="NAO" & dd$fishing_tech=="DTS",]
dd <- AERcosts[AERcosts$country_code=="BEL" & AERcosts$fishing_tech=="TBB" & AERcosts$vessel_length=="VL2440" & AERcosts$year=="2019",]
(dd$aerECOkwFishingdays) #=> 6864051 # really different than the AER fs effort one...
# aggregate to remove the fs_name dimension
AERcosts <- as.data.frame(AERcosts)
AERcosts <- AERcosts[!duplicated(AERcosts [,c("country_code", "year", "fishing_tech", "vessel_length", "fs_name", "supra_reg")]),]
AERcosts <- data.table(AERcosts)
AERcosts$energycosts <- as.numeric(AERcosts$energycosts)
AERcosts$personnelcosts <- as.numeric(AERcosts$personnelcosts)
AERcosts$repaircosts <- as.numeric(AERcosts$repaircosts)
AERcosts$othvarcosts <- as.numeric(AERcosts$othvarcosts)
AERcosts$aerECOkwFishingdays <- as.numeric(AERcosts$aerECOkwFishingdays)
AERcosts$fishingdays <- as.numeric(AERcosts$fishingdays)
AERcosts$kwDaysAtSea <- as.numeric(AERcosts$kwDaysAtSea)
AERcosts <- AERcosts[,lapply(.SD, sum, na.rm=TRUE),
.SDcols=c("energycosts", "personnelcosts", "repaircosts", "othvarcosts", "aerECOkwFishingdays", "fishingdays", "kwDaysAtSea"),
by=c("year", "country_code", "fishing_tech", "vessel_length", "supra_reg")
]
AERcosts[AERcosts$year=="2020" & AERcosts$country_code=="ESP" & AERcosts$fishing_tech=="HOK" & AERcosts$vessel_length=="VL2440" ,]
AERothvars <- left_join(stecf_fleetdata_engagedCrew, stecf_fleetdata_cons_of_fixed_capital, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
AERothvars <- left_join(AERothvars, stecf_fleetdata_value_of_physical_capital, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
AERothvars <- left_join(AERothvars, stecf_fleetdata_other_income, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
AERothvars <- left_join(AERothvars, stecf_fleetdata_unpaid_labour, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
AERothvars <- left_join(AERothvars, stecf_fleetdata_oth_non_var_costs, by=c("country_code","year","supra_reg","fishing_tech","vessel_length","fs_name"))
# aggregate to remove the fs_name dimension
AERothvars <- as.data.frame(AERothvars)
AERothvars <- AERothvars[!duplicated(AERothvars [,c("country_code", "supra_reg", "year", "fishing_tech", "vessel_length", "fs_name")]),]
AERothvars <- data.table(AERothvars)
AERothvars$engagedCrew <- as.numeric(AERothvars$engagedCrew)
AERothvars$other_income <- as.numeric(AERothvars$other_income)
AERothvars$unpaid_labour <- as.numeric(AERothvars$unpaid_labour)
AERothvars$oth_non_var_costs <- as.numeric(AERothvars$oth_non_var_costs)
AERothvars$cons_of_fixed_capital <- as.numeric(AERothvars$cons_of_fixed_capital)
AERothvars$value_of_physical_capital <- as.numeric(AERothvars$value_of_physical_capital)
AERothvars <- AERothvars[,lapply(.SD, sum, na.rm=TRUE),
.SDcols=c("engagedCrew", "other_income", "unpaid_labour", "oth_non_var_costs", "cons_of_fixed_capital", "value_of_physical_capital"),
by=c("year", "supra_reg", "country_code", "fishing_tech", "vessel_length")
]
AERothvars[AERothvars$year=="2021" & AERothvars$country_code=="ESP" & AERothvars$fishing_tech=="DTS" & AERothvars$vessel_length=="VL2440" ,]
# save for later use
#filename <- file.path(RinputPath, "STECF_DATA", "STECF 22-06 AER 2022 - data",
# "AERothvars_fromAER2022.RData")
filename <- file.path(RinputPath, "STECF_DATA", "2023_AER_Data",
"AERothvars_fromAER2023.RData")
save(AERothvars, file=file.path(filename))
# side note: a change in nb of jobs could be expressed as: nb job change = (variation in revenue before-after) / (revenue/crew)
# or: In terms of the short term and long-term effect my suggestion, and given that there is not a dynamic model,
# would be to calculate gross profits as short term indicator and net profit as a long term indicator.
# When assessing the likely risk on unemployment you can refer to these two indicators, by saying that the quantity x of employees are at a risk
# in the short and/or long term if any of these indicators shifts from positive to negative.
uan <- function(x) unlist(c(x)) # caution with data.table
AER_costratios <- cbind.data.frame(
AERcosts[, c("country_code","year","supra_reg","fishing_tech","vessel_length")],
aerECOkwFishingdays=uan(AERcosts[, "aerECOkwFishingdays"]),
enerbykwfishdy= uan(AERcosts[, "energycosts"]) / uan(AERcosts[, "aerECOkwFishingdays"]), # because variable
wagebyinc= uan(AERcosts[, "personnelcosts"]) / uan(AERcosts[, "aerECOkwFishingdays"]), # because variable
repbykwfishday= uan(AERcosts[, "repaircosts"]) / uan(AERcosts[, "aerECOkwFishingdays"]), # because variable
varbykwfishday= uan(AERcosts[, "othvarcosts"]) / uan(AERcosts[, "aerECOkwFishingdays"]) # because variable
)
AER_costratios$year <- as.character(AER_costratios$year)
AER_costratios <- AER_costratios[,c("country_code", "year", "supra_reg", "fishing_tech", "vessel_length", "aerECOkwFishingdays", "enerbykwfishdy", "wagebyinc", "repbykwfishday", "varbykwfishday")]
AER_nonvariablevars <- cbind.data.frame(
AERothvars[, c("country_code","year","supra_reg","fishing_tech","vessel_length")],
engagedCrew= AERothvars[, "engagedCrew"], # not variable
other_income= AERothvars[, "other_income"], # not variable
unpaid_labour= AERothvars[, "unpaid_labour"], # not variable
oth_non_var_costs= AERothvars[, "oth_non_var_costs"], # not variable
cons_of_fixed_capital= AERothvars[, "cons_of_fixed_capital"], # not variable
value_of_physical_capital= AERothvars[, "value_of_physical_capital"] # not variable
)
AER_nonvariablevars$year <- as.character(AER_nonvariablevars$year)
AER_nonvariablevars <- AER_nonvariablevars[,c("country_code", "year", "supra_reg", "fishing_tech", "vessel_length", "engagedCrew",
"other_income", "unpaid_labour", "oth_non_var_costs", "cons_of_fixed_capital", "value_of_physical_capital")]
AER_nonvariablevars[AER_nonvariablevars$year=="2021" & AER_nonvariablevars$country_code=="ESP" & AER_nonvariablevars$fishing_tech=="DTS" & AER_nonvariablevars$vessel_length=="VL2440" ,]
### CAUTION: NO COST INFORMED IN 2019 FROM DATABASE "STECF 20-06 - AER 2020 - data"
### CAUTION: LIKELY NO COST INFORMED IN 2021 FROM DATABASE "STECF xx-xx - AER 2022 - data"
aa<- AER_costratios[AER_costratios$year=="2019", "fs_name"]
bb<- AER_costratios[AER_costratios$year=="2020", "fs_name"]
unique(bb[!bb %in% aa])
##-------
# formatting a AER costratios
#joining AER dataframe with value, weight and effort with costratio-dataframe
stecf_fleetdata_with_kiloandeffort_andcostratios <- left_join(agg_stecf_fleetdata_with_kiloeffort_nofs, AER_costratios,
by= c("country_code", "year","supra_reg", "fishing_tech","vessel_length"))
dd <- stecf_fleetdata_with_kiloandeffort_andcostratios
dd[dd$year=="2021" & dd$country_code=="ESP" & dd$fishing_tech=="DTS" & dd$vessel_length=="VL2440" ,]
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!""
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!""
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!""
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!""
# input
dat <- stecf_fleetdata_with_kiloandeffort_andcostratios
# dispatch the aerECOkwFishingdays variable over region. This var (as all AER_eco variables) is not regionalised
tot <- dat[,.(tot_aerECOkwFishingdays=sum(an(aerECOkwFishingdays)/1e6)), by=c("year", "supra_reg", "country_code", "fishing_tech", "vessel_length")]
dd <- left_join(dat, tot)
dd$share_aerECOkwFishingdays <- (an(dd$aerECOkwFishingdays)/1e6) / an(dd$tot_aerECOkwFishingdays) # caution: a 1e6 rescaling used to avoid the too large numbers overflow
dd$aerECOkwFishingdays_perregion <- dd$share_aerECOkwFishingdays * dd$aerECOkwFishingdays
AER_nonvariablevars[AER_nonvariablevars$year=="2020" & AER_nonvariablevars$country_code=="ESP" & AER_nonvariablevars$fishing_tech=="HOK" & AER_nonvariablevars$vessel_length=="VL2440" ,]
dd <- left_join (dd, AER_nonvariablevars, by=c("year", "supra_reg", "country_code", "fishing_tech", "vessel_length"))
dd$varcosts <- dd$share_aerECOkwFishingdays * dd$aerECOkwFishingdays * (dd$enerbykwfishdy + dd$repbykwfishday + dd$varbykwfishday)
#dd$fs_name <- dd$fs_name.x # a fix
# check numbers...
ddd <- dd[dd$year=="2019" & dd$country_code=="BEL" & dd$fishing_tech=="TBB" & dd$vessel_length=="VL2440",]
ddd$GVA <- (an(ddd$weight) * # landing kg * price
(an(ddd$value)/an(ddd$weight))) +
an(ddd$other_income) - # plus other income
an(ddd$unpaid_labour) - an(ddd$varcosts) # minus var costs
dd[dd$year=="2019" & dd$country_code=="ESP" & dd$fishing_tech=="HOK" & dd$vessel_length=="VL2440" ,]
# output
stecf_fleetdata_with_kiloandeffort_andcostratios_kwdispatched <- dd [, .SD, .SDcols=c(colnames(stecf_fleetdata_with_kiloandeffort_andcostratios), "aerECOkwFishingdays_perregion")]
# check numbers
dd <- stecf_fleetdata_with_kiloandeffort_andcostratios_kwdispatched[stecf_fleetdata_with_kiloandeffort_andcostratios_kwdispatched$supra_reg=="NAO",]
ddd <- dd[dd$country_code=="ESP" & dd$vessel_length=="VL2440" & dd$fishing_tech=="DTS" & dd$year=="2018",]
sum(ddd$weight)
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!""
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!""
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!""
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!""
#-----------------------------------
#-----------------------------------
#-----------------------------------
# READ SOME VMS DATA
#vms <- read.csv(file=file.path(RinputPath, "VMS_DATA", "ICES_adhoc_VMEs", "vms_2018_21.csv"), sep = ",", dec = ".") # ICES
#save(vms, file=file.path(RinputPath, "VMS_DATA", "ICES_adhoc_VMEs", "vms_2018_21.RData"))
load(file=file.path(RinputPath, "VMS_DATA", "ICES_adhoc_VMEs", "vms_2018_21.RData"))
head(vms)
# get rid of interesting but useless info for now
vms <- vms[, c("country", "year", "month", "c_square", "vessel_length_category", "LE_MET_level6", "fishingHours", "kwFishinghours", "totweight", "totvalue", "stat_rec", "lat", "lon", "ices_area")]
colnames(vms)[colnames(vms)=="vessel_length_category"] <- "vessel_length"
# merge vessel_length cat to be consistent with AER STECF data
vms$vessel_length <- factor(vms$vessel_length)
levels(vms$vessel_length) <- c("VL1218", "VL1218", "VL1218", "VL1824", "VL2440", "VL40XX")
vms$vessel_length <- as.character(vms$vessel_length)
# rename a bit for consistency
colnames(vms)[colnames(vms) %in% "year"] <- "Year"
colnames(vms)[colnames(vms) %in% "month"] <- "Month"
colnames(vms)[colnames(vms) %in% "c_square"] <- "Csquare"
colnames(vms)[colnames(vms) %in% "lat"] <- "SI_LATI"
colnames(vms)[colnames(vms) %in% "lon"] <- "SI_LONG"
colnames(vms)[colnames(vms) %in% "fishingHours"] <- "FishingHour"
colnames(vms)[colnames(vms) %in% "kwFishinghours"] <- "kWFishingHour"
colnames(vms)[colnames(vms) %in% "stat_rec"] <- "icesname"
colnames(vms)[colnames(vms) %in% "LE_MET_level6"] <- "MetierL6"
colnames(vms)[colnames(vms) %in% "ices_area"] <- "subreg"
vms$country <- factor(vms$country)
levels(vms$country)
#[1] "BE" "ES" "FR" "GB" "IE" "NL" "PT"
levels(vms$country) <- c("BEL", "ESP", "FRA", "GBR", "IRL", "NLD", "PRT")
library(vmstools)
#-----------------------------------
#-----------------------------------
#-----------------------------------
# make a compatible fleet seg names with STECF AER coding
# splitting the metier data using a temp dataframe
library(stringr)
temp <- as.data.frame(str_split_fixed(vms$MetierL6,"_",3))
vms$gear <- temp[,1]
vms$assemblage <- temp[,2]
vms$meshsize <- temp[,3]
# checking gear table (VMS Data - DCF Data gears) to retrieve the AER compatible fishing_tech coding
dcf_gears <- read.csv(file=file.path(getwd(),"INPUT_DATASETS", "DCF_DATA", "codetransl_fish_tech08xx.csv"), sep = ";")
names(dcf_gears)[1]<- "gear"
names(dcf_gears)[2]<- "fishing_tech"
# joining gear table with VMS rawdata
vms <- left_join(vms, dcf_gears, by="gear")
# Retrieve the sub_reg?
data(ICESareas) # in vmstools
sq <- cbind.data.frame(unique(vms$Csquare), vmstools::CSquare2LonLat(unique(vms$Csquare), 0.05))
sq$idx <- an(ICESarea(sq, ICESareas, fast=TRUE))
sq <- sq[!is.na(sq$idx),]
dd <- as.data.frame(ICESareas)
sq$sub_reg <- dd[match(sq$idx+1,dd$OBJECTID),"Area_Full"] # caution: +1
colnames(sq) <- c("Csquare", "lat_csq", "long_csq", "idx", "sub_reg")
sq <- sq[,c("Csquare", "sub_reg")]
# Faster (but only for NS and BS): retrieve the sub_reg corresponding to the c-squares
#csquare_region_data <- read.csv(file=file.path(getwd(),"SEAWise","WP5","T 5.5 Fishable areas", "Software", "C_SQS.csv"))
#csquare_region_data <- csquare_region_data[!is.na(csquare_region_data$EcoRegion),]
#names(csquare_region_data)[1] <- "Csquare"
#names(csquare_region_data)[2] <- "ecoregion"
#names(csquare_region_data)[4] <- "sub_reg"
# joining geo information to vms data
#prodT53all_agg <- left_join(prodT53all_agg, csquare_region_data, by=c("Csquare"))
vms <- left_join(vms, sq, by=c("Csquare"))
vms <- data.table(vms)
# aggregate VMS at Level5 (caution: all y here)
vms$fs_name <- paste(vms$fishing_tech, vms$vessel_length, vms$sub_reg, sep="_") # vms
# a tentative to fix
unique(vms[is.na(vms$sub_reg), "subreg"])
# [1] "2a2" "4c" "1b" "7j2" "2b2" "9a" "7d" "8b" "8a" "7b" "12b" "7e" "6a" "4a" "7a" "4b" "6b1" "7g" "6b2" "8c" "12c" "12a1" "3a" "7f" "12a4" "1a" "5b1b" "5b2" "14b2" "2a1" "8d2" "7k2"
# [33] "7c2" "5a2" "7h"
vms[is.na(vms$sub_reg) & vms$"subreg"=="2a2", "sub_reg"] <- "27.2.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="4c", "sub_reg"] <- "27.4.c"
vms[is.na(vms$sub_reg) & vms$"subreg"=="1b", "sub_reg"] <- "27.1.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="7j2", "sub_reg"] <- "27.7.j"
vms[is.na(vms$sub_reg) & vms$"subreg"=="2b2", "sub_reg"] <- "27.2.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="9a", "sub_reg"] <- "27.9.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="7d", "sub_reg"] <- "27.7.d"
vms[is.na(vms$sub_reg) & vms$"subreg"=="8b", "sub_reg"] <- "27.8.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="8a", "sub_reg"] <- "27.8.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="7b", "sub_reg"] <- "27.7.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="12b", "sub_reg"] <- "27.12.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="7e", "sub_reg"] <- "27.7.e"
vms[is.na(vms$sub_reg) & vms$"subreg"=="6a", "sub_reg"] <- "27.6.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="4a", "sub_reg"] <- "27.4.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="7a", "sub_reg"] <- "27.7.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="4b", "sub_reg"] <- "27.4.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="6b1", "sub_reg"] <- "27.6.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="7g", "sub_reg"] <- "27.7.g"
vms[is.na(vms$sub_reg) & vms$"subreg"=="6b2", "sub_reg"] <- "27.6.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="8c", "sub_reg"] <- "27.8.c"
vms[is.na(vms$sub_reg) & vms$"subreg"=="12c", "sub_reg"] <- "27.12.c"
vms[is.na(vms$sub_reg) & vms$"subreg"=="12a1", "sub_reg"] <- "27.12.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="3a", "sub_reg"] <- "27.3.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="7f", "sub_reg"] <- "27.7.f"
vms[is.na(vms$sub_reg) & vms$"subreg"=="12a4", "sub_reg"] <- "27.12.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="1a", "sub_reg"] <- "27.1.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="5b1b", "sub_reg"] <- "27.5.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="5b2", "sub_reg"] <- "27.5.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="14b2", "sub_reg"] <- "27.14.b"
vms[is.na(vms$sub_reg) & vms$"subreg"=="2a1", "sub_reg"] <- "27.2.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="7c2", "sub_reg"] <- "27.7.c"
vms[is.na(vms$sub_reg) & vms$"subreg"=="5a2", "sub_reg"] <- "27.5.a"
vms[is.na(vms$sub_reg) & vms$"subreg"=="7h", "sub_reg"] <- "27.7.h"
vms[is.na(vms$sub_reg) & vms$"subreg"=="8d2", "sub_reg"] <- "27.8.d"
vms[is.na(vms$sub_reg) & vms$"subreg"=="7k2", "sub_reg"] <- "27.7.k"
vms <- vms[, .(FishingHour = sum(FishingHour, na.rm=T),
kWFishingHour = sum(kWFishingHour, na.rm=T)),
by=c("country", "Year", "Csquare", "icesname", "SI_LATI", "SI_LONG", "MetierL6", "vessel_length", "fishing_tech", "sub_reg")] # here the month dim is lost
vms$year <- vms$Year
vms <- vms[, colnames(vms)[!colnames(vms) %in% "Year"], with=FALSE]
gc(full=TRUE)
#-----------------------------------
#-----------------------------------
#-----------------------------------
# forsee the merging consistency and fix
dd <- stecf_fleetdata_with_kiloandeffort_andcostratios_kwdispatched # 2017-2021
dd2 <- vms[vms$year %in% c("2018", "2019", "2020", "2021"),]
# inconsistent sub_reg definition found with
unique(dd$sub_reg[!dd$sub_reg %in% dd2$sub_reg])
unique(dd2$sub_reg[!dd2$sub_reg %in% dd$sub_reg])
# and a close match searched by hand with e.g.:
# unique(dd$sub_reg)[grep("27.3", unique(dd$sub_reg))]
# unique(dd2$sub_reg)[grep("34.1", unique(dd2$sub_reg))]
# fix on the AER side
# 1. fix for GSA coding in AER not compatible with vms
idx <- grepl("sa ", dd$sub_reg)
dd[idx,"sub_reg"] <- paste0("g", as.character(unlist(dd[idx,"sub_reg"])))
idx <- grepl("gsa ", dd$sub_reg)
library(stringr)
temp <- as.data.frame(stringr::str_split_fixed(as.character(unlist(dd[idx,"sub_reg"]))," ",2))
dd[idx,"sub_reg"] <-paste0(temp[,1], temp[,2])
# 2. fix for too refined coding:
dd[dd$sub_reg %in% c("34.1.1.1"), "sub_reg"] <- "34.1.1"
dd[dd$sub_reg %in% c("34.1.3.1"), "sub_reg"] <- "34.1.3"
dd[dd$sub_reg %in% c("41.1.1"), "sub_reg"] <- "41.1"
dd[dd$sub_reg %in% c("41.2.4"), "sub_reg"] <- "41.2"
dd[dd$sub_reg %in% c("47.1.3"), "sub_reg"] <- "47.1.1"
dd[dd$sub_reg %in% c("34.3.1.2"), "sub_reg"] <- "34.3.1"
dd[dd$sub_reg %in% c("27.7.j.2"), "sub_reg"] <- "27.7.j"
dd[dd$sub_reg %in% c("34.3.1.3"), "sub_reg"] <- "34.3.1"
dd[dd$sub_reg %in% c("41.2.2"), "sub_reg"] <- "41.2.1"
dd[dd$sub_reg %in% c("27.12.c"), "sub_reg"] <- "27.12"
dd[dd$sub_reg %in% c("27.7.c.2"), "sub_reg"] <- "27.7.c"
dd[dd$sub_reg %in% c("34.1.1.2"), "sub_reg"] <- "34.1.1"
dd[dd$sub_reg %in% c("27.10.a.2"), "sub_reg"] <- "27.10.a"
dd[dd$sub_reg %in% c("34.2"), "sub_reg"] <- "34.2.0"
dd[dd$sub_reg %in% c("27.6.b.2"), "sub_reg"] <- "27.6.b"
dd[dd$sub_reg %in% c("41.1.4"), "sub_reg"] <- "41.1"
dd[dd$sub_reg %in% c("27.9.b.1"), "sub_reg"] <- "27.9.b"
dd[dd$sub_reg %in% c("34.1.3.2"), "sub_reg"] <- "34.1.3"
dd[dd$sub_reg %in% c("34.3.1.1"), "sub_reg"] <- "34.3.1"
dd[dd$sub_reg %in% c("27.2.b.2"), "sub_reg"] <- "27.2.b"
dd[dd$sub_reg %in% c("41.3.2"), "sub_reg"] <- "41.3.1"
dd[dd$sub_reg %in% c("47.1.2"), "sub_reg"] <- "47.1.1"
dd[dd$sub_reg %in% c("47.1.5"), "sub_reg"] <- "47.1.1"
dd[dd$sub_reg %in% c("21.3.m"), "sub_reg"] <- "41.3.n"
dd[dd$sub_reg %in% c("27.8.e.1"), "sub_reg"] <- "27.8.e"
dd[dd$sub_reg %in% c("27.7.k.2"), "sub_reg"] <- "27.7.k"
dd[dd$sub_reg %in% c("27.8"), "sub_reg"] <- "27.8.a"
dd[dd$sub_reg %in% c("27.10.a.1"), "sub_reg"] <- "27.10.a"
dd[dd$sub_reg %in% c("27.6.b.1"), "sub_reg"] <- "27.6.b"
dd[dd$sub_reg %in% c("47.b.1"), "sub_reg"] <- "47.b.0"
dd[dd$sub_reg %in% c("27.3.d.28"), "sub_reg"] <- "27.3.d.28.1"
dd[dd$sub_reg %in% c("27.12.b"), "sub_reg"] <- "27.12"
dd[dd$sub_reg %in% c("47.1.4"), "sub_reg"] <- "47.1.1"
dd[dd$sub_reg %in% c("47.c.1"), "sub_reg"] <- "47.c.0"
dd[dd$sub_reg %in% c("27.8.e.2"), "sub_reg"] <- "27.8.e"
dd[dd$sub_reg %in% c("27.2.a.2"), "sub_reg"] <- "27.2.a"
dd[dd$sub_reg %in% c("27.12.a.1"), "sub_reg"] <- "27.12.a"
dd[dd$sub_reg %in% c("27.14.b.1"), "sub_reg"] <- "27.14.b"
dd[dd$sub_reg %in% c("27.1"), "sub_reg"] <- "27.1.a"
dd[dd$sub_reg %in% c("21.4.v.s"), "sub_reg"] <- "21.4.v"
dd[dd$sub_reg %in% c( "27.9.b.2"), "sub_reg"] <- "27.9.b"
dd[dd$sub_reg %in% c("27.12.a"), "sub_reg"] <- "27.12"
dd[dd$sub_reg %in% c("34.1.1.3"), "sub_reg"] <- "34.1.1"
dd[dd$sub_reg %in% c("41.2.3"), "sub_reg"] <- "41.2.1"
dd[dd$sub_reg %in% c("27.7.j.1"), "sub_reg"] <- "27.7.j"
dd[dd$sub_reg %in% c("21.1.f"), "sub_reg"] <- "21.1.d"
dd[dd$sub_reg %in% c("41.3.3"), "sub_reg"] <- "41.3.1"
dd[dd$sub_reg %in% c("27.7.k.1"), "sub_reg"] <- "27.7.k"
dd[dd$sub_reg %in% c("27.3.b"), "sub_reg"] <- "27.3.b.23"
dd[dd$sub_reg %in% c("27.5.b.2"), "sub_reg"] <- "27.5.b"
dd[dd$sub_reg %in% c("27.8.d.1"), "sub_reg"] <- "27.8.d"
dd[dd$sub_reg %in% c( "27.7.c.1"), "sub_reg"] <- "27.7.c"
dd[dd$sub_reg %in% c("58"), "sub_reg"] <- "58.4.1"
dd[dd$sub_reg %in% c("87.3.3"), "sub_reg"] <- "87"
dd[dd$sub_reg %in% c("37.1.3"), "sub_reg"] <- "gsa6"
dd[dd$sub_reg %in% c("27.9"), "sub_reg"] <- "27.9.a"
dd[dd$sub_reg %in% c("27.12.a.4"), "sub_reg"] <- "27.12"
dd[dd$sub_reg %in% c("27.5.b.1.b"), "sub_reg"] <- "27.5.b"
dd[dd$sub_reg %in% c("37.2.2"), "sub_reg"] <- "gsa19"
dd[dd$sub_reg %in% c("27.2.a.1"), "sub_reg"] <- "27.2.a"
dd[dd$sub_reg %in% c("37.3.1"), "sub_reg"] <- "gsa24"
dd[dd$sub_reg %in% c("37.1.1"), "sub_reg"] <- "gsa1"
dd[dd$sub_reg %in% c("27.5.b.1"), "sub_reg"] <- "27.5.b"
# fix on the VMS side
dd2[dd2$sub_reg %in% c("27.3.a.20", "27.3.a.21"), "sub_reg"] <- "27.3.a"
aer_key_met <- paste(dd$year, dd$fishing_tech, dd$vessel_length, dd$sub_reg, sep="_") # aer
vms_key_met <- paste(dd2$year, dd2$fishing_tech, dd2$vessel_length, dd2$sub_reg, sep="_") # vms
not_in_aer_keys <- vms_key_met[!vms_key_met %in% aer_key_met]
not_in_aer <- unique(not_in_aer_keys)
not_in_vms_keys <- aer_key_met[!aer_key_met %in% vms_key_met]
not_in_vms <- unique(not_in_vms_keys)
# one example of unmatched seg?
dd[dd$year=="2019" & dd$fishing_tech=="DFN" & dd$vessel_length=="VL0612" & dd$sub_reg=="gsa5",] # aer
dd2[dd2$year=="2019" & dd2$fishing_tech=="DFN" & dd2$vessel_length=="VL0612" & dd2$sub_reg=="gsa5",] # vms
dd2[dd2$year=="2019" & dd2$fishing_tech=="DFN" & dd2$vessel_length=="VL0612",]
# output
stecf_fleetdata_with_kiloandeffort_andcostratios <- data.table(dd) # 2017-2021
vms_effort <- data.table(dd2) # 2018-2021
# check
dd <- stecf_fleetdata_with_kiloandeffort_andcostratios
#"2019_VL0010_DFN_27.10.a"
head(dd[year=="2019" & vessel_length=="VL0010" & fishing_tech=="DFN" & sub_reg=="27.10.a",])
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
# subset for the region of interest....
# HERE THE NAO:
stecf_fleetdata_with_kiloandeffort_andcostratios_nao <-
stecf_fleetdata_with_kiloandeffort_andcostratios[stecf_fleetdata_with_kiloandeffort_andcostratios$supra_reg=="NAO",]
vms_effort_nao <- vms_effort#[supra_region=="NAO",]
rm(vms_effort)
gc()
# an overall check
dd <- stecf_fleetdata_with_kiloandeffort_andcostratios_nao[,lapply(.SD, sum, na.rm=TRUE),
.SDcols=c("value","weight","aerkwFishingdays", "aerfishingdays", "aerdaysatsea"),
keyby=c("year")]
dd <- knitr::kable(as.data.frame(dd), format = "html")
library(readr)
readr::write_file(dd, file.path(ROutputPathToDatasets, "an_overall_check0.html"))
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
##!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!##
years <- as.character(2018:2021)
# caution: merging for 2021 is leaking, likely because incomplete AER data (if AER 2022 is used)
# add primary keys before merging - adapt the key on the fly to avoid loosing effort or landings....
# ROBUST MERGING: catch for leaks and adapt the key on the fly
aer_all_y <- NULL
vms_all_y <- NULL
aer_y_leftover <- NULL
aer_y_leftover2 <- NULL
aer_y_leftover3 <- NULL
vms_y_leftover <- NULL
vms_y_leftover2 <- NULL
vms_y_leftover3 <- NULL
tracked_leaks <- NULL
for(y in years)
{
# Add a default key (i.e. year-country-vessellength-Level5-icesrect)
vms_y <- vms_effort_nao[year==y,]
vms_y$key <- paste(vms_y$year, vms_y$country, vms_y$vessel_length, vms_y$fishing_tech, vms_y$sub_reg, sep="_") # full key on vms
aer_y <- stecf_fleetdata_with_kiloandeffort_andcostratios_nao[year==y,]
aer_y$key <- paste(aer_y$year, aer_y$country_code, aer_y$vessel_length, aer_y$fishing_tech, aer_y$sub_reg, sep="_") # full key on aer
aer_y$chunk <- 0
vms_y$chunk <- 0
m1 <- unique(vms_y$key)
m2 <- unique(aer_y$key)
vms_y_met_not_in_aer <- m1[!m1 %in% m2]
vms_y_met_in_aer <- m1[m1 %in% m2]
aer_y_leftover <- aer_y[!aer_y$key %in% vms_y_met_in_aer,]
vms_y_leftover <- vms_y[!vms_y$key %in% vms_y_met_in_aer,]
aer_y_main <- aer_y[aer_y$key %in% vms_y_met_in_aer,]
vms_y_main <- vms_y[vms_y$key %in% vms_y_met_in_aer,]
aer_y_main$chunk <- 1 # coding
vms_y_main$chunk <- 1 # coding
# repeat with a less constraining key to catch the left-over records:
if(nrow(aer_y_leftover)!=0 && nrow(vms_y_leftover)!=0)
{
aer_y_leftover$key <- paste(aer_y_leftover$year, aer_y_leftover$country_code, aer_y_leftover$vessel_length, aer_y_leftover$fishing_tech, sep="_") # aer
vms_y_leftover$key <- paste(vms_y_leftover$year, vms_y_leftover$country, vms_y_leftover$vessel_length, vms_y_leftover$fishing_tech, sep="_") # vms
m1 <- unique(vms_y_leftover$key)
m2 <- unique(aer_y_leftover$key)
vms_y_met_not_in_aer <- m1[!m1 %in% m2]
vms_y_met_in_aer <- m1[m1 %in% m2]
aer_y_leftover2 <- aer_y_leftover[!aer_y_leftover$key %in% vms_y_met_in_aer,]
vms_y_leftover2 <- vms_y_leftover[!vms_y_leftover$key %in% vms_y_met_in_aer,]
aer_y_leftover <- aer_y_leftover[aer_y_leftover$key %in% vms_y_met_in_aer,]
vms_y_leftover <- vms_y_leftover[vms_y_leftover$key %in% vms_y_met_in_aer,]
#destroy the sub_reg dim in aer
aer_y_leftover_agg1 <- aer_y_leftover[,lapply(.SD, sum, na.rm=TRUE),
.SDcols=c("value", "weight", "aerkwFishingdays", "aerfishingdays", "aerdaysatsea", "aerECOkwFishingdays", "aerECOkwFishingdays_perregion"),
by=c("year", "supra_reg", "country_code", "fishing_tech", "vessel_length", "key")]
aer_y_leftover_agg2 <- aer_y_leftover[,lapply(.SD, mean, na.rm=TRUE),
.SDcols=c("enerbykwfishdy","wagebyinc","repbykwfishday","varbykwfishday"),
by=c("year", "supra_reg", "country_code", "fishing_tech", "vessel_length", "key")]
aer_y_leftover <- cbind(aer_y_leftover_agg1, aer_y_leftover_agg2[,-c(1:6)])
aer_y_leftover$chunk <- 2 # coding
#destroy the sub_reg dim in vms
vms_y_leftover <- vms_y_leftover[,lapply(.SD, sum, na.rm=TRUE),
.SDcols=c("FishingHour", "kWFishingHour"),
by=c("Csquare", "icesname", "SI_LATI", "SI_LONG", "MetierL6", "vessel_length", "fishing_tech", "year", "country", "key")]
vms_y_leftover$chunk <- 2 # coding
if(nrow(aer_y_leftover2)) warning("First attempt: There aer records left here...")
if(nrow(vms_y_leftover2)) warning("First attempt: There vms records left here...")
# repeat with a less constraining key to catch the left-over records:
if(nrow(aer_y_leftover2)!=0 && nrow(vms_y_leftover2)!=0){
aer_y_leftover2$key <- paste(aer_y_leftover2$year, aer_y_leftover2$vessel_length, sep="_") # aer
vms_y_leftover2$key <- paste(vms_y_leftover2$year, vms_y_leftover2$vessel_length, sep="_") # vms
m1 <- unique(vms_y_leftover2$key)
m2 <- unique(aer_y_leftover2$key)
vms_y_met_not_in_aer <- m1[!m1 %in% m2]
vms_y_met_in_aer <- m1[m1 %in% m2]
aer_y_leftover3 <- aer_y_leftover2[!aer_y_leftover2$key %in% vms_y_met_in_aer,]
vms_y_leftover3 <- vms_y_leftover2[!vms_y_leftover2$key %in% vms_y_met_in_aer,]
aer_y_leftover2 <- aer_y_leftover2[aer_y_leftover2$key %in% vms_y_met_in_aer,]
vms_y_leftover2 <- vms_y_leftover2[vms_y_leftover2$key %in% vms_y_met_in_aer,]
#destroy the sub_reg and fishing_tech dims in aer
aer_y_leftover2_agg1 <- aer_y_leftover2[,lapply(.SD, sum, na.rm=TRUE),
.SDcols=c("value", "weight", "aerkwFishingdays", "aerfishingdays", "aerdaysatsea", "aerECOkwFishingdays", "aerECOkwFishingdays_perregion"),
by=c("year", "supra_reg", "country_code", "vessel_length", "key")]
aer_y_leftover2_agg2 <- aer_y_leftover2[,lapply(.SD, mean, na.rm=TRUE),
.SDcols=c("enerbykwfishdy","wagebyinc","repbykwfishday","varbykwfishday"),
by=c("year", "supra_reg", "country_code", "vessel_length", "key")]
aer_y_leftover2 <- cbind(aer_y_leftover2_agg1, aer_y_leftover2_agg2[,-c(1:6)])
aer_y_leftover2$chunk <- 3 # coding
#destroy the sub_reg and fishing_tech dims in vms
vms_y_leftover2 <- vms_y_leftover2[,lapply(.SD, sum, na.rm=TRUE),
.SDcols=c("FishingHour", "kWFishingHour"),
by=c("Csquare", "icesname", "SI_LATI", "SI_LONG", "MetierL6", "vessel_length", "year", "key")]
vms_y_leftover2$chunk <- 3 # coding
if(nrow(aer_y_leftover3)) warning("Second attempt: There aer records left here...") # lost
if(nrow(vms_y_leftover3)) warning("Second attempt: There vms records left here...") # lost
}
}
# bind # fill=TRUE to add missing columns and fill out with NAs
aer_left <- rbind(aer_y_main, aer_y_leftover, aer_y_leftover2, fill=TRUE)
vms_left <- rbind(vms_y_main, vms_y_leftover, vms_y_leftover2, fill=TRUE)
# document effort leak this y
d <- function(x) as.data.frame(x)
dd1 <-rbind.data.frame(
"init"=d(vms_y[ ,.(vmstotfishhours=sum(FishingHour )),]), # initial tot eff vms met in vms
"year, country, vessel_length, fishing_tech, sub_reg"=d(vms_y_main[ ,.(vmstotfishhours =sum(FishingHour )),]), # year, vessel_length, fishing_tech, sub_reg # full key
"year, country, vessel_length, fishing_tech"=d(vms_y_leftover[ ,.(vmstotfishhours =sum(FishingHour )),]), # year, vessel_length, fishing_tech
"year, vessel_length"=d(vms_y_leftover2[ ,.(vmstotfishhours =sum(FishingHour )),]), # year, vessel_length
"unfortunate lost"=d(vms_y_leftover3[ ,.(vmstotfishhours =sum(FishingHour )),]), # the remaining: not matched...
"finally left"=d(vms_left[ ,.(vmstotfishhours =sum(FishingHour )),]) # tot eff vms left
)
# document landings leak this y
d <- function(x) as.data.frame(x)
dd2 <-rbind.data.frame(
"init"=d(vms_y[ ,.(vmstotKwfishhours=sum(an(kWFishingHour))),]), # initial tot in vms
"year, country, vessel_length, fishing_tech, sub_reg"=d(vms_y_main[ ,.(vmstotKwfishhours=sum(an(kWFishingHour))),]), # year, vessel_length, fishing_tech, sub_reg # full key
"year, country, vessel_length, fishing_tech"=d(vms_y_leftover[ ,.(vmstotKwfishhours=sum(an(kWFishingHour))),]), # year, vessel_length, fishing_tech
"year, vessel_length"=d(vms_y_leftover2[ ,.(vmstotKwfishhours=sum(an(kWFishingHour))),]), # year, vessel_length
"unfortunate lost"=d(vms_y_leftover3[ ,.(vmstotKwfishhours=sum(an(kWFishingHour))),]), # the remaining: not matched...
"finally left"=d(vms_left[ ,.(vmstotKwfishhours=sum(an(kWFishingHour))),]) # tot in vms left
)
tracked_leaks <- rbind.data.frame (tracked_leaks, cbind.data.frame(y, dd1, dd2))
aer_all_y <- rbind(aer_all_y, aer_left)
vms_all_y <- rbind(vms_all_y, vms_left)
} # end y
# check what is left, what is lost...
print(tracked_leaks)
dd <- knitr::kable(as.data.frame(tracked_leaks), format = "html")
library(readr)
readr::write_file(dd, file.path(ROutputPathToDatasets, "tracked_leaks_AER_to_VMS.html"))
# check
vms_all_y[, .(vmstotKwfishhours = sum(an(kWFishingHour), na.rm=T),
vmstotfishhours = sum(an(FishingHour), na.rm=T)),
by=c("year", "chunk")]
aer_all_y[, .(weight = sum(an(weight), na.rm=T),
value = sum(an(value), na.rm=T)),
by=c("year", "chunk")]
#-----------------------------------
#-----------------------------------
#-----------------------------------
# calculate share of countries on effort
# aa <- data.table(aer_all_y)
# agg_kwfdays <- aa[,.(tot_kwFishingdays=sum(aerECOkwFishingdays_perregion)),by=c("year", "key")]
# aer_all_y <- merge(aer_all_y, agg_kwfdays,
# by= c("year", "key"))
# aer_all_y$country_share_effort <-
# aer_all_y$aerECOkwFishingdays_perregion/aer_all_y$tot_kwFishingdays
#-----------------------------------
#-----------------------------------
#-----------------------------------
# MERGE vms WITH AER, AND DISPACH vms EFFORT AND AER kwfishingdays and COSTS ON vms C-SQUARE CELLS PER YEAR, COUNTRY AND METIER LEVEL6
save(vms_effort_nao, file=file.path(ROutputPathToDatasets, "vms_2018_2021_in_NAO_before_merging.RData"))
head(vms_effort_nao)
dispatched_aer <- list()
for (y in as.character(years))
{
cat(paste("y", y, "\n"))
# landings
aer_y <- aer_all_y[aer_all_y$year==y,]
aer_y[,.(tot_kg=sum(an(weight))),] # check
# effort
vms_y <- vms_all_y[vms_all_y$year==y,]
vms_y[,.(tot_totfishhours=sum(FishingHour)),] # check
# get a share_effort for dispatching data (caution, vms data are species explicit data)
sum_effort_y_per_key <- vms_y[, .(tot_totfishhours = sum(FishingHour, na.rm=T)), by=c("key")] # removing the c-square dimension here...
sum_effort_y_per_key_level6 <- vms_y[, .(tot_totfishhours_met = sum(FishingHour, na.rm=T)), by=c("MetierL6", "key")] # removing the c-square dimension here...
#sum_effort_y_per_key_level6_inzone[,.(tot_effort=sum(tot_totfishhours_met_csquare)),] # check
vms_y_e <- merge(vms_y, sum_effort_y_per_key, by=c("key"))
vms_y_e <- merge(vms_y_e, sum_effort_y_per_key_level6, by=c("MetierL6", "key"))
vms_y_e$share_effort_level6 <- vms_y_e$tot_totfishhours_met / vms_y_e$tot_totfishhours # for dispatching depending on the contribution of that metier to the total effort in this key
vms_y_e$share_effort_level6_csquare <- vms_y_e$FishingHour / vms_y_e$tot_totfishhours_met # for dispatching depending on the contribution of that cell to the total effort in that key-metier-zone
vms_y_e$year <- as.character(vms_y_e$year)
# a check column: "md5" should be equal to the sum at the key level i.e. "vmstotfishhours"
vms_y_e$md5 <- vms_y_e$tot_totfishhours * vms_y_e$share_effort_level6 * vms_y_e$share_effort_level6_csquare
vms_y_e[,.(tot_totfishhours=sum(FishingHour)),] # check
# clean a bit the data.table to save memory!
rm_col <- c("md5", "tot_totfishhours", "tot_totfishhours_met", "SI_LATI", "SI_LONG")
vms_y_e <- vms_y_e[, (rm_col):=NULL]
rm_col <- c("fishing_tech", "supra_reg", "vessel_length")
aer_y <- aer_y[, (rm_col):=NULL]
# check for unexpected duplicates?
#a_df <- as.data.frame(vms_y_e)
#a_tab <- table(paste0(a_df$key, a_df$Csquare, a_df$MetierL6))
#a_tab[a_tab>1]
# a check before the merging as such
if(FALSE){
nonvariablevars <- AER_nonvariablevars[AER_nonvariablevars$supra_reg=="NAO",]
temp <- as.data.frame(stringr::str_split_fixed(as.character(unlist(aer_y [,"key"])),"_",5))
aer_y[, "vessel_length"] <- temp[,3]
aer_y[, "fishing_tech"] <- temp[,4]
dd <- left_join (aer_y, nonvariablevars, by=c("year", "country_code", "fishing_tech", "vessel_length"))
dd$varcosts <- dd$aerECOkwFishingdays_perregion * (dd$enerbykwfishdy + dd$repbykwfishday + dd$varbykwfishday)
# check numbers...
ddd <- dd[dd$year=="2019" & dd$country_code=="BEL" & dd$fishing_tech=="TBB" & dd$vessel_length=="VL2440",]
ddd$GVA <- (an(ddd$weight) * # landing kg * price
(an(ddd$value)/an(ddd$weight))) +
an(ddd$other_income) - # plus other income
an(ddd$unpaid_labour) - an(ddd$varcosts) # minus var costs
ddd[ddd$sub_reg=="27.4.b","weight"] #=> 4204869
sum(ddd[,"weight"]) #=> 13386476
} # end FALSE
# merge (by chunk, to avoid memory issue)
gc(full=TRUE); rm(merged)
keys <- unlist(c(unique(aer_y[aer_y$chunk==1, "key"]))) # needed for the trick to chunk...
idx <- c(floor(seq(1,length(keys),by=length(keys)/10)),length(keys))
chunk1_1 <- merge(aer_y[aer_y$chunk==1 & aer_y$key %in% keys[1:idx[2]] ,], vms_y_e[vms_y_e$chunk==1,], by.x="key", by.y="key", allow.cartesian=TRUE)
chunk1_2 <- merge(aer_y[aer_y$chunk==1 & aer_y$key %in% keys[(idx[2]+1):idx[3]], ], vms_y_e[vms_y_e$chunk==1,], by.x="key", by.y="key", allow.cartesian=TRUE)
chunk1_3 <- merge(aer_y[aer_y$chunk==1 & aer_y$key %in% keys[(idx[3]+1):idx[4]], ], vms_y_e[vms_y_e$chunk==1,], by.x="key", by.y="key", allow.cartesian=TRUE)
chunk1_4 <- merge(aer_y[aer_y$chunk==1 & aer_y$key %in% keys[(idx[4]+1):idx[5]], ], vms_y_e[vms_y_e$chunk==1,], by.x="key", by.y="key", allow.cartesian=TRUE)
chunk1_5 <- merge(aer_y[aer_y$chunk==1 & aer_y$key %in% keys[(idx[5]+1):idx[6]], ], vms_y_e[vms_y_e$chunk==1,], by.x="key", by.y="key", allow.cartesian=TRUE)
chunk1_6 <- merge(aer_y[aer_y$chunk==1 & aer_y$key %in% keys[(idx[6]+1):idx[7]], ], vms_y_e[vms_y_e$chunk==1,], by.x="key", by.y="key", allow.cartesian=TRUE)
chunk1_7 <- merge(aer_y[aer_y$chunk==1 & aer_y$key %in% keys[(idx[7]+1):idx[8]], ], vms_y_e[vms_y_e$chunk==1,], by.x="key", by.y="key", allow.cartesian=TRUE)
chunk1_8 <- merge(aer_y[aer_y$chunk==1 & aer_y$key %in% keys[(idx[8]+1):idx[9]], ], vms_y_e[vms_y_e$chunk==1,], by.x="key", by.y="key", allow.cartesian=TRUE)
chunk1_9 <- merge(aer_y[aer_y$chunk==1 & aer_y$key %in% keys[(idx[9]+1):idx[10]], ], vms_y_e[vms_y_e$chunk==1,], by.x="key", by.y="key", allow.cartesian=TRUE)
chunk1_10 <- merge(aer_y[aer_y$chunk==1 & aer_y$key %in% keys[(idx[10]+1):idx[11]], ], vms_y_e[vms_y_e$chunk==1,], by.x="key", by.y="key", allow.cartesian=TRUE)
keys <- unlist(c(unique(aer_y[aer_y$chunk==2, "key"]))) # needed for the trick to chunk...
if(length(keys)>0) idx <- c(floor(seq(1,length(keys),by=length(keys)/5)),length(keys))