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#R code for creating ggplots of time series with smooth (GAM) and linear term
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######################
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#Import Libraries and set working directory
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######################
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library(zoo)
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library(hydroTSM) #you need to install these packages first before you can load them here
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library(lubridate)
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library(mgcv)
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library(ggplot2)
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library(gridExtra)
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library(scales)
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options(scipen=999)
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setwd("C:/Users/z5025317/OneDrive - UNSW/WRL_Postdoc_Manual_Backup/WRL_Postdoc/Projects/Paper#1/")
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######################
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######################
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#Set inputs
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######################
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Case.Study <- "CASESTUDY2"
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Estuary <- "RICHMOND"
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Riv.Gauge.loc <- "OAKLANDROAD" #GRETA
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Est.Gauge.loc <- "CORAKI" #"RAYMONDTERRACE" # "HEXHAMBRIDGE"
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logtransformFlow <- TRUE
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ggplotGAM.k <- 15
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rivTempGAM.k <- 20
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Version <- 'V2'
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######################
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######################
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Output.Directory <- paste('./Output/', Case.Study, '/', Estuary,'/Recent_Trends/Riv_', Riv.Gauge.loc,'_Est_',Est.Gauge.loc,'_GAMk', ggplotGAM.k, '/', sep="")
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if (file.exists(Output.Directory)){
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print('output folder already existed and was not created again')
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} else {
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dir.create(file.path(Output.Directory))
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print('output folder did not exist and was created')
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}
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######################
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######################
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#Set input file paths
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######################
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pattern = paste('SILO_climdata_', Estuary,'*', sep="")
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AirT_CSV_Path <- list.files(paste("./Data/SILO/",Case.Study, '/',sep=""), pattern, full.names=T, recursive=T)
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pattern = paste(Estuary,'@', Riv.Gauge.loc, '.*.ALL.csv', sep="")
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RivT_CSV_Path <- list.files("./Data/River_Gauge_Data/", pattern, full.names=T)
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pattern = paste(Estuary,'@', Est.Gauge.loc, '.*.ALL.csv', sep="")
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EstT_CSV_Path <- list.files("./Data/River_Gauge_Data/", pattern, full.names=T)
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pattern = paste('sstmean_NNRP_', Estuary,'*', sep="")
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SST_CSV_Path <- list.files(paste("./Data/NARCLIM_Site_CSVs/",Case.Study, '/', sep=""), pattern, full.names=T, recursive=T)
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######################
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######################
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#Analyse
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######################
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############tasmean
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#Load a daily (no gaps) time series as a time serie baseline for other time series used here
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AirT.df <- data.frame(read.csv(AirT_CSV_Path))
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AirT.full.TS <- zoo((AirT.df$max_temp_Celsius + AirT.df$max_temp_Celsius)/2, order.by= as.Date(AirT.df[,"date"], format = "%Y-%m-%d")) #=daily time series of rainfall for creation of clean, daily TS of ET and Q
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AirT.TS <- window(AirT.full.TS, start=as.Date("1990-01-01"), end=as.Date("2018-01-01"))
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AirT.full.df <- data.frame(AirT.full.TS)
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AirT.df <- data.frame(AirT.TS)
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colnames(AirT.df) <- 'tasmean'
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colnames(AirT.full.df) <- 'tasmean'
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############
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AirT.df$Julday1 <- seq(1,length(AirT.df[,1]),1)
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linear.trend.model_EC_all <- lm(tasmean ~ Julday1, AirT.df)
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AirT.pvalNCV_ECall <- summary(linear.trend.model_EC_all )$coefficients[2,4]
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AirT.lintrend <- summary(linear.trend.model_EC_all )$coefficients[2,1] * 356
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############
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AirT.full.df$Julday1 <- seq(1,length(AirT.full.df[,1]),1)
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linear.trend.model_EC_all <- lm(tasmean ~ Julday1, AirT.full.df)
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AirT.full.pvalNCV_ECall <- summary(linear.trend.model_EC_all )$coefficients[2,4]
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AirT.full.lintrend <- summary(linear.trend.model_EC_all )$coefficients[2,1] * 356
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############tasmean
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############River temp
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#Load a daily (no gaps) time series as a time serie baseline for other time series used here
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#Here we use the raw DPI CSV format that comes with a bunch of metadata
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RivT.df <- data.frame(read.csv(RivT_CSV_Path))
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char.df <- data.frame(lapply(RivT.df[2,], as.character), stringsAsFactors=FALSE)
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#dat <- data.frame(lapply(RivT.df[(4:nrow(RivT.df)),(2:ncol(RivT.df))], as.numeric), stringsAsFactors=FALSE)
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#dat <- RivT.df.num[!is.na(as.numeric(as.character(RivT.df.num))),]
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dat <- RivT.df[(4:nrow(RivT.df)),]
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colnames(dat) <- lapply(RivT.df[2,], as.character)
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dat$Date <- gsub(x=dat$Date,pattern="00:00:00",replacement="",fixed=T)
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colnames(dat) <- gsub(x=colnames(dat),pattern="Water Temp(C)",replacement="Temp",fixed=T)
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RivT.df <- dat
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rm(dat,char.df)
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RivT.full.TS <- zoo(as.numeric(as.character(RivT.df$Temp)), order.by= as.Date(RivT.df[,"Date"], format = "%d/%m/%Y")) #=daily time series of rainfall for creation of clean, daily TS of ET and Q
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RivT.full.TS <- window(RivT.full.TS, start=as.Date("1995-07-01"), end=as.Date("2018-01-01"))
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RivT.full.TS <- na.approx(RivT.full.TS)
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RivT.TS <- RivT.full.TS
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RivT.full.df <- data.frame(RivT.TS) ### This is only done because
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RivT.df <- data.frame(RivT.TS)
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colnames(RivT.df) <- 'rivTmean'
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colnames(RivT.full.df) <- 'rivTmean'
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############
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RivT.df$Julday1 <- seq(1,length(RivT.df[,1]),1)
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linear.trend.model_EC_all <- lm(rivTmean ~ Julday1, RivT.df)
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RivT.pvalNCV_ECall <- summary(linear.trend.model_EC_all )$coefficients[2,4]
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RivT.lintrend <- summary(linear.trend.model_EC_all )$coefficients[2,1] * 356
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RivT.full.df$Julday1 <- seq(1,length(RivT.full.df[,1]),1)
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linear.trend.model_EC_all <- lm(rivTmean ~ Julday1, RivT.full.df)
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RivT.full.pvalNCV_ECall <- summary(linear.trend.model_EC_all )$coefficients[2,4]
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RivT.full.lintrend <- summary(linear.trend.model_EC_all )$coefficients[2,1] * 356
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############River temp
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############River flow
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#Load a daily (no gaps) time series as a time serie baseline for other time series used here
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#Here we use the raw DPI CSV format that comes with a bunch of metadata
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RivQ.df <- data.frame(read.csv(RivT_CSV_Path))
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char.df <- data.frame(lapply(RivQ.df[2,], as.character), stringsAsFactors=FALSE)
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dat <- RivQ.df[(4:nrow(RivQ.df)),]
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colnames(dat) <- lapply(RivQ.df[2,], as.character)
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dat$Date <- gsub(x=dat$Date,pattern="00:00:00",replacement="",fixed=T)
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colnames(dat) <- gsub(x=colnames(dat), pattern="Discharge (ML/d)",replacement="Flow",fixed=T)
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RivQ.df <- dat
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rm(dat,char.df)
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#RivQ.full.TS <- zoo(log10((as.numeric(as.character(RivQ.df$Flow))) +1) , order.by= as.Date(RivQ.df[,"Date"], format = "%d/%m/%Y")) #=daily time series of rainfall for creation of clean, daily TS of ET and Q
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RivQ.full.TS <- zoo(as.numeric(as.character(RivQ.df$Flow)), order.by= as.Date(RivQ.df[,"Date"], format = "%d/%m/%Y")) #=daily time series of rainfall for creation of clean, daily TS of ET and Q
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RivQ.TS <- window(RivQ.full.TS, start=as.Date("1990-01-01"), end=as.Date("2018-01-01"))
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RivQ.full.df <- data.frame(RivQ.full.TS) ### This is only done because
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RivQ.df <- data.frame(RivQ.TS)
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colnames(RivQ.df) <- 'RivQmean'
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colnames(RivQ.full.df) <- 'RivQmean'
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############trends
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RivQ.df$Julday1 <- seq(1,length(RivQ.df[,1]),1)
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linear.trend.model_EC_all <- lm(RivQmean ~ Julday1, RivQ.df)
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RivQ.pvalNCV_ECall <- summary(linear.trend.model_EC_all )$coefficients[2,4]
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RivQ.lintrend <- summary(linear.trend.model_EC_all )$coefficients[2,1] * 356
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RivQ.full.df$Julday1 <- seq(1,length(RivQ.full.df[,1]),1)
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linear.trend.model_EC_all <- lm(RivQmean ~ Julday1, RivQ.full.df)
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RivQ.full.pvalNCV_ECall <- summary(linear.trend.model_EC_all )$coefficients[2,4]
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RivQ.full.lintrend <- summary(linear.trend.model_EC_all )$coefficients[2,1] * 356
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############River Flow
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############ SST
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#Load a daily (no gaps) time series as a time serie baseline for other time series used here
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SST.df <- data.frame(read.csv(SST_CSV_Path))
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SST.full.TS <- zoo(SST.df$NNRP_R1_1950-273.15, order.by= as.Date(SST.df[,"X"], format = "%Y-%m-%d")) #=daily time series of rainfall for creation of clean, daily TS of ET and Q
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SST.TS <- window(SST.full.TS, start=as.Date("1990-01-01"), end=as.Date("2018-01-01"))
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SST.full.df <- data.frame(SST.full.TS)
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SST.df <- data.frame(SST.TS)
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str(SST.df)
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colnames(SST.df) <- 'SSTmean'
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colnames(SST.full.df) <- 'SSTmean'
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############
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SST.full.df$Julday1 <- seq(1,length(SST.full.df[,1]),1)
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linear.trend.model_EC_all <- lm(SSTmean ~ Julday1, SST.full.df)
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SST.full.pvalNCV_ECall <- summary(linear.trend.model_EC_all)$coefficients[2,4]
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SST.full.lintrend <- summary(linear.trend.model_EC_all)$coefficients[2,1] * 356
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SST.df$Julday1 <- seq(1,length(SST.df[,1]),1)
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linear.trend.model_EC_all2 <- lm(SSTmean ~ Julday1, SST.df)
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SST.pvalNCV_ECall <- summary(linear.trend.model_EC_all2)$coefficients[2,4]
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SST.lintrend <- summary(linear.trend.model_EC_all2)$coefficients[2,1] * 356
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############ SST
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############Estuary temp
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#Load a daily (no gaps) time series as a time serie baseline for other time series used here
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#Here we use the raw DPI CSV format that comes with a bunch of metadata
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EstT.df <- data.frame(read.csv(EstT_CSV_Path))
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char.df <- data.frame(lapply(EstT.df[2,], as.character), stringsAsFactors=FALSE)
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#dat <- data.frame(lapply(EstT.df[(4:nrow(EstT.df)),(2:ncol(EstT.df))], as.numeric), stringsAsFactors=FALSE)
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#dat <- EstT.df.num[!is.na(as.numeric(as.character(EstT.df.num))),]
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dat <- EstT.df[(4:nrow(EstT.df)),]
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colnames(dat) <- lapply(EstT.df[2,], as.character)
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dat$Date <- gsub(x=dat$Date,pattern="00:00:00",replacement="",fixed=T)
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colnames(dat) <- gsub(x=colnames(dat),pattern="Water Temp(C)",replacement="Temp",fixed=T)
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EstT.df <- dat
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rm(dat,char.df)
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#replace negative values with NA
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EstT.df$Temp <- replace(EstT.df$Temp, which(as.numeric(as.character(EstT.df$Temp)) < 11), NA)
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EstT.full.TS <- zoo(as.numeric(as.character(EstT.df$Temp)), order.by= as.Date(EstT.df[,"Date"], format = "%d/%m/%Y")) #=daily time series of rainfall for creation of clean, daily TS of ET and Q
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plot(EstT.full.TS)
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EstT.TS <- window(EstT.full.TS, start=as.Date("2013-06-01"), end=as.Date("2018-01-01"))
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EstT.full.TS <- EstT.TS
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EstT.full.df <- data.frame(EstT.TS) ### This is only done because of poor data at beginning
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EstT.df <- data.frame(EstT.TS)
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colnames(EstT.df) <- 'EstTmean'
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colnames(EstT.full.df) <- 'EstTmean'
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############
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EstT.df$Julday1 <- seq(1,length(EstT.df[,1]),1)
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linear.trend.model_EC_all <- lm(EstTmean ~ Julday1, EstT.df)
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EstT.pvalNCV_ECall <- summary(linear.trend.model_EC_all )$coefficients[2,4]
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EstT.lintrend <- summary(linear.trend.model_EC_all )$coefficients[2,1] * 356
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EstT.full.df$Julday1 <- seq(1,length(EstT.full.df[,1]),1)
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linear.trend.model_EC_all <- lm(EstTmean ~ Julday1, EstT.full.df)
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EstT.full.pvalNCV_ECall <- summary(linear.trend.model_EC_all )$coefficients[2,4]
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EstT.full.lintrend <- summary(linear.trend.model_EC_all )$coefficients[2,1] * 356
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############Est temp
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######################
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#Plot
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######################
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##################################### Full Time Period
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#Air temp Full period
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p1air <- ggplot(AirT.full.df, aes(y=tasmean, x=index(AirT.full.TS))) + geom_line(alpha=0.5) +
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ggtitle(paste(Estuary," Catchment Centroid - Linear and smooth trend in catchment airT (SILO) lin trend was ",
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round(AirT.full.lintrend,3), ' C<>/year with p=', round(AirT.full.pvalNCV_ECall,10), sep=" ")) +
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theme(plot.title=element_text(face="bold", size=9)) +
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geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
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stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
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ylab("Air Temperature [C<>]") + xlab("Time")
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p1riv <- ggplot(RivT.full.df, aes(y=rivTmean, x=index(RivT.TS))) + geom_line(alpha=0.5) +
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ggtitle(paste(Estuary,'@', Riv.Gauge.loc, " - Linear and smooth trend in river temperature (GAUGE) lin trend was ",
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round(RivT.full.lintrend,3), ' C<>/year with p=', round(RivT.full.pvalNCV_ECall,10), sep=" ")) +
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theme(plot.title=element_text(face="bold", size=9)) +
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geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
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stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
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ylab("River Temperature [C<>]") + xlab("Time")
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if(logtransformFlow ==TRUE){
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p1rivQ <- ggplot(RivQ.full.df, aes(y=log10(RivQmean+2), x=index(RivQ.full.TS))) + geom_line(alpha=0.5) +
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ggtitle(paste(Estuary,'@', Riv.Gauge.loc, " - Linear and smooth trend in river flow (GAUGE) lin trend was ",
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round(RivQ.full.lintrend,3), ' ML/day /year with p=', round(RivQ.full.pvalNCV_ECall,10), sep=" ")) +
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theme(plot.title=element_text(face="bold", size=9)) +
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geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
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stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
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ylab(expression(paste("log10(River Flow [ML/day] + 2)", sep=""))) + xlab("Time")
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} else {
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p1rivQ <- ggplot(RivQ.full.df, aes(y=RivQmean, x=index(RivQ.full.TS))) + geom_line(alpha=0.5) +
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ggtitle(paste(Estuary,'@', Riv.Gauge.loc, " - Linear and smooth trend in river flow (GAUGE) lin trend was ",
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round(RivQ.full.lintrend,3), ' ML/day with p=', round(RivQ.full.pvalNCV_ECall,10), sep=" ")) +
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theme(plot.title=element_text(face="bold", size=9)) +
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geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
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stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
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ylab(expression(paste("River Flow [ML/day]", sep=""))) + xlab("Time")
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}
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#Sea temp Full period
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p1sst <- ggplot(SST.full.df, aes(y=SSTmean, x=index(SST.full.TS))) + geom_line(alpha=0.5) +
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ggtitle(paste(Estuary, "NNRP (NARCLIM reanalysis) - Linear and smooth trend in sea surface temperature (NNRP) lin trend was ",
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round(SST.full.lintrend,3), ' C<>/year with p=', round(SST.full.pvalNCV_ECall,10), sep=" ")) +
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theme(plot.title=element_text(face="bold", size=9)) +
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geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
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stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
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ylab("Sea Surface Temperature [C<>]") + xlab("Time")
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p1Est <- ggplot(EstT.full.df, aes(y=EstTmean, x=index(EstT.TS))) + geom_line(alpha=0.5) +
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ggtitle(paste(Estuary,'@', Est.Gauge.loc, " - Linear and smooth trend in Estuary temperature (GAUGE) lin trend was ",
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round(EstT.full.lintrend,3), ' C<>/year with p=', round(EstT.full.pvalNCV_ECall,10), sep=" ")) +
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theme(plot.title=element_text(face="bold", size=9)) +
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geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
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stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
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ylab("Estuary Temperature [C<>]") + xlab("Time")
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#export to png
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png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_tasmean_full_period_', Sys.Date(),".png", sep="")
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png(file = png.name, width = 10.5, height = 7, units='in', res=500)
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grid.arrange(p1air,ncol=1)
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dev.off()
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png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_rivTmean_full_period_', Sys.Date(),".png", sep="")
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png(file = png.name, width = 10.5, height = 7, units='in', res=500)
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grid.arrange(p1riv,ncol=1)
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dev.off()
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png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_RivQmean_full_period_', Sys.Date(),".png", sep="")
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png(file = png.name, width = 10.5, height = 7, units='in', res=500)
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grid.arrange(p1rivQ,ncol=1)
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dev.off()
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png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_SSTmean_full_period_', Sys.Date(),".png", sep="")
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png(file = png.name, width = 10.5, height = 7, units='in', res=500)
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grid.arrange(p1sst,ncol=1)
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dev.off()
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png.name <- paste(Output.Directory, Estuary, '@', Est.Gauge.loc, '_Trends_estTmean_full_period_', Sys.Date(),".png", sep="")
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png(file = png.name, width = 10.5, height = 7, units='in', res=500)
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grid.arrange(p1Est,ncol=1)
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dev.off()
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##################################### Full Time Period
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######################### 1990-present
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combined.TS <- window(merge(AirT.full.TS, window(RivT.full.TS, start=as.Date("1995-01-01"), end=end(RivT.full.TS)), SST.full.TS,EstT.full.TS,RivQ.full.TS, all=T), start=as.Date("1990-01-01"), end=end(AirT.full.TS))
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combined.df <- data.frame(combined.TS)
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colnames(combined.df) <- c('tasmean','rivTmean', 'SSTmean', 'EstTmean', 'rivQmean')
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#Air temp
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p2air <- ggplot(combined.df, aes(y=tasmean, x=index(combined.TS))) + geom_line(alpha=0.5) +
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ggtitle(paste(Estuary," Catchment centroid - Linear and smooth trend in catchment airT (SILO) lin trend was ",
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round(AirT.lintrend,3), ' C<>/year with p=', round(AirT.pvalNCV_ECall,10), sep=" ")) +
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theme(plot.title=element_text(face="bold", size=9)) +
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geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
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stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
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ylab("Air Temperature [C<>]") + xlab("Time")
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#Riv temp
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p2riv <- ggplot(combined.df, aes(y=rivTmean, x=index(combined.TS))) + geom_line(alpha=0.5) +
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ggtitle(paste(Estuary,'@', Riv.Gauge.loc, " - Linear and smooth trend in river temperature (GAUGE) lin trend was ",
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round(RivT.lintrend,3), ' C<>/year with p=', round(RivT.pvalNCV_ECall,10), sep=" ")) +
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theme(plot.title=element_text(face="bold", size=9)) +
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geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
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stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
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ylab("River Temperature [C<>]") + xlab("Time")
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#Riv flow
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if(logtransformFlow ==TRUE){
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p2rivQ <- ggplot(combined.df, aes(y=log10(rivQmean+2), x=index(combined.TS))) + geom_line(alpha=0.5) +
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ggtitle(paste(Estuary,'@', Riv.Gauge.loc, " - Linear and smooth trend in river flow (GAUGE) lin trend was ",
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|
round(RivQ.full.lintrend,3), ' ML/day /year with p=', round(RivQ.full.pvalNCV_ECall,10), sep=" ")) +
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theme(plot.title=element_text(face="bold", size=9)) +
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geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
|
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stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
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ylab(expression(paste("log10(River Flow [ML/day] + 2)", sep=""))) + xlab("Time")
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} else {
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|
p2rivQ <- ggplot(combined.df, aes(y=rivQmean, x=index(combined.TS))) + geom_line(alpha=0.5) +
|
|
|
ggtitle(paste(Estuary,'@', Riv.Gauge.loc, " - Linear and smooth trend in river flow (GAUGE) lin trend was ",
|
|
|
round(RivT.lintrend,3), ' C<>/year with p=', round(RivT.pvalNCV_ECall,10), sep=" ")) +
|
|
|
theme(plot.title=element_text(face="bold", size=9)) +
|
|
|
geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
|
|
|
stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
|
|
|
ylab(expression(paste("River Flow [ML/day]", sep=""))) + xlab("Time")
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|
}
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|
|
#Sea temp
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|
|
p2sst <- ggplot(combined.df, aes(y=SSTmean, x=index(combined.TS))) + geom_line(alpha=0.5) +
|
|
|
ggtitle(paste(Estuary,"NNRP(NARCLIM reanalysis) - Linear and smooth trend in sea surface temperature (NNRP) lin trend was ",
|
|
|
round(SST.lintrend,3), ' C<>/year with p=', round(SST.pvalNCV_ECall,10), sep=" ")) +
|
|
|
theme(plot.title=element_text(face="bold", size=9)) +
|
|
|
geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
|
|
|
stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
|
|
|
ylab("Sea Surface Temperature [C<>]") + xlab("Time")
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|
#sst temp
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|
|
p2Est <- ggplot(combined.df, aes(y=EstTmean, x=index(combined.TS))) + geom_line(alpha=0.5) +
|
|
|
ggtitle(paste(Estuary,'@', Est.Gauge.loc, " - Linear and smooth trend in Estuary temperature (GAUGE) lin trend was ",
|
|
|
round(EstT.lintrend,3), ' C<>/year with p=', round(EstT.pvalNCV_ECall,10), sep=" ")) +
|
|
|
theme(plot.title=element_text(face="bold", size=9)) +
|
|
|
geom_smooth(method='lm',fill="green", formula=y~x, colour="darkgreen", size = 0.5) +
|
|
|
#stat_smooth(method=gam, formula=y~s(x, k=ggplotGAM.k), se=T, size=0.5) +
|
|
|
ylab("Estuary Temperature [C<>]") + xlab("Time")
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|
#export to png
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|
|
png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_tasmean_1990-present_', Sys.Date(),".png", sep="")
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|
png(file = png.name, width = 10.5, height = 7, units='in', res=500)
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|
grid.arrange(p2air,ncol=1)
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|
|
dev.off()
|
|
|
png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_rivTmean_1990-present_', Sys.Date(),".png", sep="")
|
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|
png(file = png.name, width = 10.5, height = 7, units='in', res=500)
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|
grid.arrange(p2riv,ncol=1)
|
|
|
dev.off()
|
|
|
png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_rivQmean_1990-present_', Sys.Date(),".png", sep="")
|
|
|
png(file = png.name, width = 10.5, height = 7, units='in', res=500)
|
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|
grid.arrange(p2rivQ,ncol=1)
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|
|
dev.off()
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|
|
png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_SSTmean_1990-present_', Sys.Date(),".png", sep="")
|
|
|
png(file = png.name, width = 10.5, height = 7, units='in', res=500)
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|
grid.arrange(p2sst,ncol=1)
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|
dev.off()
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|
#export an overview plot as png
|
|
|
gA <- ggplotGrob(p2air)
|
|
|
gB <- ggplotGrob(p2riv)
|
|
|
gC <- ggplotGrob(p2sst)
|
|
|
gD <- ggplotGrob(p2Est)
|
|
|
gE <- ggplotGrob(p2rivQ)
|
|
|
gA$widths <- gE$widths
|
|
|
gC$widths <- gE$widths
|
|
|
gD$widths <- gE$widths
|
|
|
gB$widths <- gE$widths
|
|
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|
|
|
png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_SST_RivT_AirT_1990-present_', Sys.Date(),".png", sep="")
|
|
|
png(file = png.name, width = 10.5, height = 7, units='in', res=500)
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|
|
grid.arrange(gA,gB ,gC,ncol=1)
|
|
|
dev.off()
|
|
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|
|
png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_SST_RivT_EstT_1990-present_', Sys.Date(),".png", sep="")
|
|
|
png(file = png.name, width = 10.5, height = 7, units='in', res=500)
|
|
|
grid.arrange(gB,gD,gC,ncol=1)
|
|
|
dev.off()
|
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|
|
|
|
png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_RivQ_RivT_EstT_1990-present_', Sys.Date(),".png", sep="")
|
|
|
png(file = png.name, width = 10.5, height = 7, units='in', res=500)
|
|
|
grid.arrange(gE,gB,gD,ncol=1)
|
|
|
dev.off()
|
|
|
|
|
|
png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_AirT_RivT_RivQ_1990-present_', Sys.Date(),".png", sep="")
|
|
|
png(file = png.name, width = 10.5, height = 7, units='in', res=500)
|
|
|
grid.arrange(gA,gB,gE,ncol=1)
|
|
|
dev.off()
|
|
|
|
|
|
png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_AirT_RivT_1990-present_', Sys.Date(),".png", sep="")
|
|
|
png(file = png.name, width = 10.5, height = 7, units='in', res=500)
|
|
|
grid.arrange(gA,gB,ncol=1)
|
|
|
dev.off()
|
|
|
|
|
|
png.name <- paste(Output.Directory, Estuary, '@', Riv.Gauge.loc, '_Trends_RivT_RivQ_1990-present_', Sys.Date(),".png", sep="")
|
|
|
png(file = png.name, width = 10.5, height = 7, units='in', res=500)
|
|
|
grid.arrange(gB,gE,ncol=1)
|
|
|
dev.off()
|
|
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