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14_DLM_heatmap.R
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14_DLM_heatmap.R
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## 2022-08-30
library(tidyverse)
library(patchwork)
options(scipen=999, digits=3)
theme_set(theme_classic())
#### Read in bird data ####
# Read in weather covariates
wdat <- read_csv("files_for_models/weather_covars.csv")
# Read in ACC data
dat <- read_csv("files_for_models/daily_odba_behavior.csv")
# Join weather and ACC data
dat <- left_join(dat, wdat, by=c("animal_id", "date"))
dat <- as.data.frame(dat)
# read in migration dates
mdates <- read_csv("files_for_models/migration_dates.csv")
# save maximum duration of migration period
dur <- max(mdates$duration)
# subset to migration dates
dat$RelDay <- NA
dat$RevRelDay <- NA
dat$migration <- NA
un.id <- unique(dat$animal_id)
for (i in 1:length(un.id)) {
# subset migration dates
md <- mdates[mdates$animal_id==un.id[i],]
# Create vector of days
mdays <- md$start:md$end
# Add column, indicate when is migration
dat$RelDay[dat$animal_id==un.id[i] & (dat$julian %in% mdays)] <- 1:length(mdays)
dat$RevRelDay[dat$animal_id==un.id[i] & (dat$julian %in% mdays)] <- length(mdays):1
dat$migration[dat$animal_id==un.id[i] & (dat$julian %in% mdays)] <- "yes"
}
# Subset to just migration
dat <- dat[!is.na(dat$migration), ]
# log odba
dat$lnODBAmedian <- log(dat$median.odba)
# Reorganize columns
dat <- dat[,c(1,3,4,23,24,5:8,10,11,16,18,19,21)]
#### Reading in and organizing posteriors ####
# Read in calculated proportions for ODBA
b1.odba <- read_csv("results/ODBAprcp_ptail.csv")
b1.odba <- as.data.frame(b1.odba)
b1.odba$RelDay <- 1:120
b1.odba <- b1.odba[,c(36,1:35)]
b1.odba <- pivot_longer(b1.odba, 2:36, names_to="animal_id", values_to="ODBA_prcp")
b2.odba <- read_csv("results/ODBAmintemp_ptail.csv")
b2.odba <- as.data.frame(b2.odba)
b2.odba$RelDay <- 1:120
b2.odba <- b2.odba[,c(36,1:35)]
b2.odba <- pivot_longer(b2.odba, 2:36, names_to="animal_id", values_to="ODBA_temp")
# Read in calculated proportions for ODBA
b1.ptf <- read_csv("results/PTFprcp_ptail.csv")
b1.ptf <- as.data.frame(b1.ptf)
b1.ptf$RelDay <- 1:120
b1.ptf <- b1.ptf[,c(36,1:35)]
b1.ptf <- pivot_longer(b1.ptf, 2:36, names_to="animal_id", values_to="PTF_prcp")
b2.ptf <- read_csv("results/PTFmintemp_ptail.csv")
b2.ptf <- as.data.frame(b2.ptf)
b2.ptf$RelDay <- 1:120
b2.ptf <- b2.ptf[,c(36,1:35)]
b2.ptf <- pivot_longer(b2.ptf, 2:36, names_to="animal_id", values_to="PTF_temp")
# Join posterior summary to data
dat <- left_join(dat, b1.odba, by=c("animal_id", "RelDay"))
dat <- left_join(dat, b2.odba, by=c("animal_id", "RelDay"))
dat <- left_join(dat, b1.ptf, by=c("animal_id", "RelDay"))
dat <- left_join(dat, b2.ptf, by=c("animal_id", "RelDay"))
# pivot longer
dat <- pivot_longer(dat, 16:19, names_to="model", values_to="ptail")
dat <- separate(dat, 16, into=c("response", "covariate"), sep="_", remove=FALSE) %>% as.data.frame()
#### Create heatmap ####
dat$birdno <- as.character(factor(dat$animal_id, levels=unique(dat$animal_id),
labels=c("M12GR1", "F18GR1", "F18GR2", "F18GR3",
"F18GR4", "F18GR5", "F18GR6", "F18GR7",
"F18GR8", "F18GR9", "F18GR10", "M12GR2",
"M12GR3", "M12GR4", "M12GR5", "M12GR6",
"M12GR7", "M13GR1", "M13GR2", "M13GR3",
"M13GR4", "M13GR5", "M13GR6", "M13GR7",
"M13GR8", "M17MC1", "F18MC6", "F17MC1",
"F17MC2", "F18MC3", "F18MC1", "F18MC2",
"F17MC3", "F18MC4", "F18MC5")))
dat$birdno <- factor(dat$birdno, levels=c("M12GR1", "M12GR2",
"M12GR3", "M12GR4", "M12GR5", "M12GR6",
"M12GR7", "M13GR1", "M13GR2", "M13GR3",
"M13GR4", "M13GR5", "M13GR6", "M13GR7",
"M13GR8",
"F18GR1", "F18GR2", "F18GR3",
"F18GR4", "F18GR5", "F18GR6", "F18GR7",
"F18GR8", "F18GR9", "F18GR10",
"M17MC1", "F17MC1",
"F17MC2", "F18MC3", "F18MC1", "F18MC2",
"F17MC3", "F18MC4", "F18MC5", "F18MC6"))
# Split by response
odba <- dat[dat$response=="ODBA",]
ptf <- dat[dat$response=="PTF",]
# Save colors
color_breaks <- c(0, 0.15, 0.3, 0.5, 0.7, 0.85, 1)
colors <- c("#2166ac","#4393c3", "#f7f7f7", "#f7f7f7", "#f7f7f7", "#d6604d", "#b2182b")
# Facet names
var_names <- c(prcp="Precipitation (mm)",
temp="Temperature (C)")
# Plot
ggplot(odba, aes(x=julian, y=factor(birdno))) + geom_tile(aes(fill=ptail), colour = "black") +
scale_fill_gradientn(limits=c(0,1), colors=colors[c(1, seq_along(colors), length(colors))],
values=c(scales::rescale(color_breaks, from=c(0,1)))) +
xlab("Date") +
scale_x_continuous(breaks=c(30,60,90,120,150), labels=c("30-Jan","01-Mar","30-Mar","30-Apr","30-May")) +
facet_grid(.~covariate, labeller=as_labeller(var_names)) +
guides(fill=guide_colourbar(title="Proportion\nSamples >0")) +
theme(legend.justification=c(0,0),
legend.position=c(0,0.01),
legend.title=element_text(size=12, face="bold"),
legend.text=element_text(size=10),
legend.background=element_rect(fill=NA),
panel.border=element_rect(color="black", fill=NA, size=0.5),
axis.text=element_text(size=10),
axis.title.y=element_blank(),
axis.title.x=element_text(size=12, face="bold"),
strip.text.x=element_text(size=12, face="bold"),
strip.background=element_rect(fill="white"))
ggplot(ptf, aes(x=julian, y=factor(birdno))) + geom_tile(aes(fill=ptail), colour = "black") +
scale_fill_gradientn(limits=c(0,1), colors=colors[c(1, seq_along(colors), length(colors))],
values=c(scales::rescale(color_breaks, from=c(0,1)))) +
xlab("Date") +
scale_x_continuous(breaks=c(30,60,90,120,150), labels=c("30-Jan","01-Mar","30-Mar","30-Apr","30-May")) +
facet_grid(.~covariate, labeller=as_labeller(var_names)) +
guides(fill=guide_colourbar(title="Proportion\nSamples >0")) +
theme(legend.justification=c(0,0),
legend.position=c(0,0.01),
legend.title=element_text(size=12, face="bold"),
legend.text=element_text(size=10),
legend.background=element_rect(fill=NA),
panel.border=element_rect(color="black", fill=NA, size=0.5),
axis.text=element_text(size=10),
axis.title.y=element_blank(),
axis.title.x=element_text(size=12, face="bold"),
strip.text.x=element_text(size=12, face="bold"),
strip.background=element_rect(fill="white"))
## Combine into a single plot
# Read in data for attempt/defer
defer <- read_csv("files_for_models/attempt_defer_collars.csv")
ids <- distinct(odba[,c(1,20)])
defer <- left_join(ids,defer,by="animal_id")
defer$defer[defer$defer==1] <- "defer"
defer$defer[defer$defer==0] <- "attempt"
defer$defer[is.na(defer$defer)] <- "fail"
defer$defer[defer$birdno=="M12GR3" | defer$birdno=="M13GR7"] <- "succeed"
p1 <- ggplot(odba, aes(x=julian, y=factor(birdno))) +
geom_tile(aes(fill=ptail), colour = "black") +
scale_fill_gradientn(limits=c(0,1), colors=colors[c(1, seq_along(colors), length(colors))],
values=c(scales::rescale(color_breaks, from=c(0,1)))) +
geom_point(data=defer, aes(x=160, y=birdno, shape=defer)) +
scale_shape_manual(values=c(15, 0, 1, 16), guide="none") +
xlab("Date") +
scale_x_continuous(breaks=c(30,60,90,120,150), labels=c("30-Jan","01-Mar","30-Mar","30-Apr","30-May")) +
facet_grid(.~covariate, labeller=as_labeller(var_names)) +
guides(fill=guide_colourbar(title="Proportion\nsamples >0")) +
annotate("segment", x=-Inf, xend=Inf, y=-Inf, yend=-Inf)+
annotate("segment", x=-Inf, xend=-Inf, y=-Inf, yend=Inf) +
theme(legend.position="none",
axis.text.y=element_text(size=8),
axis.text.x=element_blank(),
axis.title.y=element_blank(),
axis.title.x=element_blank(),
strip.text.x=element_text(size=12),
strip.background=element_rect(fill="white", color=NA))
p2 <- ggplot(ptf, aes(x=julian, y=factor(birdno))) + geom_tile(aes(fill=ptail), colour = "black") +
scale_fill_gradientn(limits=c(0,1), colors=colors[c(1, seq_along(colors), length(colors))],
values=c(scales::rescale(color_breaks, from=c(0,1)))) +
geom_point(data=defer, aes(x=160, y=birdno, shape=defer)) +
scale_shape_manual(values=c(15, 0, 1, 16), guide="none") +
xlab("Date") +
scale_x_continuous(breaks=c(30,60,90,120,150), labels=c("30-Jan","01-Mar","30-Mar","30-Apr","30-May")) +
facet_grid(.~covariate, labeller=as_labeller(var_names)) +
guides(fill=guide_colourbar(title="Proportion\nsamples >0")) +
annotate("segment", x=-Inf, xend=Inf, y=-Inf, yend=-Inf)+
annotate("segment", x=-Inf, xend=-Inf, y=-Inf, yend=Inf) +
theme(legend.justification=c(0,0),
legend.position=c(0,0.01),
legend.title=element_text(size=12),
legend.text=element_text(size=12),
legend.background=element_rect(fill=NA),
axis.text.x=element_text(size=12),
axis.text.y=element_text(size=8),
axis.title.y=element_blank(),
axis.title.x=element_text(size=12),
strip.text.x=element_blank())
# patchwork <- p1 / p2
# patchwork + plot_annotation(tag_levels="a", tag_prefix="(", tag_suffix=")")
(p1 / p2) + plot_annotation(tag_levels="a", tag_prefix="(", tag_suffix=")")