64 lines
7.2 KiB
R
64 lines
7.2 KiB
R
library(tidyverse)
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###Process the simulations and save the main percentile results by year
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RES <- read_csv("Results/Simulations/Kemmerer_2023_Simulation.csv")
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RES[,"Year"] <- RES[,"Year"]+1
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HIST <- readRDS("Data/Cleaned_Data/Population_Data/RDS/Kemmerer_Diamondville_Population_Data.Rds") %>% filter(County=='Lincoln') %>% mutate(Percentile="Actual Population") %>% filter(Year>=1940)
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YEARS <- min(RES$Year,na.rm=TRUE):max(RES$Year,na.rm=TRUE)
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######Population
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START_POP <- HIST %>% filter(Year==2023) %>% pull(Population)
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GRAPH_DATA <- do.call(rbind,lapply(YEARS,function(x){quantile(RES %>% filter(Year==x) %>% pull(Population),c(0.025,0.05,0.1,0.25,0.4,0.5,0.6,0.75,0.9,0.95,0.975))})) %>% as_tibble %>% mutate(Year=YEARS)
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GRAPH_DATA <- rbind(GRAPH_DATA[1,],GRAPH_DATA)
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GRAPH_DATA[1,] <-t(c(rep(START_POP,ncol(GRAPH_DATA)-1),min(GRAPH_DATA$Year)-1))
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FAN_DATA <- GRAPH_DATA
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GRAPH_DATA <- GRAPH_DATA %>% pivot_longer(cols=!Year,names_to=c("Percentile"),values_to="Population")
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GRAPH_DATA$Percentile <- factor(GRAPH_DATA$Percentile,levels=rev(c('2.5%','5%','10%','25%','40%','50%','60%','75%','90%','95%','97.5%')))
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START_POP <- HIST %>% filter(Year==2025) %>% pull(Population)
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MEDIAN_PRED <- GRAPH_DATA %>% filter(Percentile=='50%')
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######Migration
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GRAPH_DATA_MIGRATION <- do.call(rbind,lapply(YEARS,function(x){quantile(RES %>% filter(Year==x) %>% pull(Net_Migration),c(0.025,0.05,0.1,0.25,0.4,0.5,0.6,0.75,0.9,0.95,0.975))})) %>% as_tibble %>% mutate(Year=YEARS)
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FAN_DATA_MIGRATION <- GRAPH_DATA_MIGRATION
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GRAPH_DATA_MIGRATION <- GRAPH_DATA_MIGRATION %>% pivot_longer(cols=!Year,names_to=c("Percentile"),values_to="Migration")
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GRAPH_DATA_MIGRATION$Percentile <- factor(GRAPH_DATA_MIGRATION$Percentile,levels=rev(c('2.5%','5%','10%','25%','40%','60%','75%','90%','95%','97.5%')))
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MEDIAN_PRED_MIGRATION <- GRAPH_DATA_MIGRATION %>% filter(Percentile=='50%')
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######Mortalities
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GRAPH_DATA_MORTALITY <- do.call(rbind,lapply(YEARS,function(x){quantile(RES %>% filter(Year==x) %>% pull(Deaths),c(0.025,0.05,0.1,0.25,0.4,0.5,0.6,0.75,0.9,0.95,0.975))})) %>% as_tibble %>% mutate(Year=YEARS)
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FAN_DATA_MORTALITY <- GRAPH_DATA_MORTALITY
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GRAPH_DATA_MORTALITY <- GRAPH_DATA_MORTALITY %>% pivot_longer(cols=!Year,names_to=c("Percentile"),values_to="Deaths")
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GRAPH_DATA_MORTALITY$Percentile <- factor(GRAPH_DATA_MORTALITY$Percentile,levels=rev(c('2.5%','5%','10%','25%','40%','60%','75%','90%','95%','97.5%')))
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MEDIAN_PRED_MORTALITY<- GRAPH_DATA_MORTALITY %>% filter(Percentile=='50%')
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######Births
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START_BIRTHS <- HIST %>% filter(Year==2024) %>% pull(Births)
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GRAPH_DATA_BIRTHS <- do.call(rbind,lapply(YEARS,function(x){quantile(RES %>% filter(Year==x) %>% pull(Births),c(0.025,0.05,0.1,0.25,0.4,0.5,0.6,0.75,0.9,0.95,0.975))})) %>% as_tibble %>% mutate(Year=YEARS)
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GRAPH_DATA_BIRTHS <- rbind(GRAPH_DATA_BIRTHS[1,],GRAPH_DATA_BIRTHS)
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GRAPH_DATA_BIRTHS[1,] <-t(c(rep(START_BIRTHS,ncol(GRAPH_DATA_BIRTHS)-1),min(GRAPH_DATA_BIRTHS$Year)-1))
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GRAPH_DATA_BIRTHS$Year <- GRAPH_DATA_BIRTHS$Year+1
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FAN_DATA_BIRTHS <- GRAPH_DATA_BIRTHS
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GRAPH_DATA_BIRTHS<- GRAPH_DATA_BIRTHS %>% pivot_longer(cols=!Year,names_to=c("Percentile"),values_to="Births")
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GRAPH_DATA_BIRTHS$Percentile <- factor(GRAPH_DATA_BIRTHS$Percentile,levels=rev(c('2.5%','5%','10%','25%','40%','60%','75%','90%','95%','97.5%')))
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MEDIAN_PRED_BIRTHS<- GRAPH_DATA_BIRTHS %>% filter(Percentile=='50%')
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#write_csv(GRAPH_DATA,PERCENTILE_DATA)
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#Add historic
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MEDIAN_PRED <- GRAPH_DATA %>% filter(Percentile=='50%')
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GRAPH_DATA <- GRAPH_DATA %>% filter(Percentile!='50%')
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ALPHA=0.2
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COLOR <- 'black'
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#GRAPH <-
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nrow(RES)/10
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ggplot(data=GRAPH_DATA)+geom_ribbon(data=FAN_DATA,aes(x=Year,ymin=`2.5%`,ymax=`97.5%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA,aes(x=Year,ymin=`5%`,ymax=`95%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA,aes(x=Year,ymin=`10%`,ymax=`90%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA,aes(x=Year,ymin=`25%`,ymax=`75%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA,aes(x=Year,ymin=`40%`,ymax=`60%`),alpha=ALPHA,fill=COLOR)+geom_line(aes(x=Year,y=Population,group=Percentile,color=Percentile))+geom_line(data=HIST,aes(x=Year,y=Population),color='black',linewidth=0.75)+geom_line(data=MEDIAN_PRED,aes(x=Year,y=Population),color='black',linetype=4,linewidth=0.75)+ scale_x_continuous(breaks = c(seq(1940, 2065, by = 5)))+ scale_y_continuous(breaks = seq(0, 35000, by = 250))+theme_bw()+ggtitle("Kemmerer & Diamondville, Population Forecast")+ expand_limits( y = 0)
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ggplot(data=GRAPH_DATA_MIGRATION)+geom_ribbon(data=FAN_DATA_MIGRATION,aes(x=Year,ymin=`2.5%`,ymax=`97.5%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_MIGRATION,aes(x=Year,ymin=`5%`,ymax=`95%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_MIGRATION,aes(x=Year,ymin=`10%`,ymax=`90%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_MIGRATION,aes(x=Year,ymin=`25%`,ymax=`75%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_MIGRATION,aes(x=Year,ymin=`40%`,ymax=`60%`),alpha=ALPHA,fill=COLOR)+geom_line(aes(x=Year,y=Migration,group=Percentile,color=Percentile))+geom_line(data=HIST %>% filter(Year>=2009),aes(x=Year,y=Migration),color='black',linewidth=0.75) +geom_line(data=MEDIAN_PRED_MIGRATION,aes(x=Year,y=Migration),color='black',linetype=4,linewidth=0.75)+ scale_x_continuous(breaks = c(seq(1940, 2065, by = 5)))+ scale_y_continuous(breaks = seq(0, 35000, by = 250))+theme_bw()+ggtitle("Kemmerer & Diamondville, Migration Forecast")+ expand_limits( y = 0)
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ggplot(data=GRAPH_DATA_MORTALITY)+geom_ribbon(data=FAN_DATA_MORTALITY,aes(x=Year,ymin=`2.5%`,ymax=`97.5%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_MORTALITY,aes(x=Year,ymin=`5%`,ymax=`95%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_MORTALITY,aes(x=Year,ymin=`10%`,ymax=`90%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_MORTALITY,aes(x=Year,ymin=`25%`,ymax=`75%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_MORTALITY,aes(x=Year,ymin=`40%`,ymax=`60%`),alpha=ALPHA,fill=COLOR)+geom_line(aes(x=Year,y=Deaths,group=Percentile,color=Percentile))+geom_line(data=HIST %>% filter(Year>=2009),aes(x=Year,y=Deaths),color='black',linewidth=0.75)+geom_line(data=MEDIAN_PRED_MORTALITY,aes(x=Year,y=Deaths),color='black',linetype=4,linewidth=0.75)+ scale_x_continuous(breaks = c(seq(2000, 2065, by = 5)))+ scale_y_continuous(breaks = seq(0, 50, by = 5))+theme_bw()+ggtitle("Kemmerer, Wyoming Death Forecast")+ expand_limits( y = 0)
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ggplot(data=GRAPH_DATA_BIRTHS)+geom_ribbon(data=FAN_DATA_BIRTHS,aes(x=Year,ymin=`2.5%`,ymax=`97.5%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_BIRTHS,aes(x=Year,ymin=`5%`,ymax=`95%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_BIRTHS,aes(x=Year,ymin=`10%`,ymax=`90%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_BIRTHS,aes(x=Year,ymin=`25%`,ymax=`75%`),alpha=ALPHA,fill=COLOR)+geom_ribbon(data=FAN_DATA_BIRTHS,aes(x=Year,ymin=`40%`,ymax=`60%`),alpha=ALPHA,fill=COLOR)+geom_line(aes(x=Year,y=Births,group=Percentile,color=Percentile))+geom_line(data=HIST %>% filter(Year>=2009),aes(x=Year,y=Births),color='black',linewidth=0.75)+geom_line(data=MEDIAN_PRED_BIRTHS,aes(x=Year,y=Births),color='black',linetype=4,linewidth=0.75)+ scale_x_continuous(breaks = c(seq(2000, 2065, by = 5)))+ scale_y_continuous(breaks = seq(0, 200, by = 5))+theme_bw()+ggtitle("Kemmerer, Wyoming Birth Forecast")+ expand_limits( y = 0)
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