# Plotting a raster with the color ramp diverging around zero

I am trying to plot a map with positive and negative values.

All positive values should have red color while negative should have blue color and zero should have white just like in this sample plot with discrete colors

Below is the code I'm using:

``````library (rasterVis)
ras1 <- raster(nrow=10,ncol=10)
set.seed(1)
ras1[] <- rchisq(df=10,n=10*10)
ras2=ras1*(-1)/2
s <- stack(ras1,ras2)
levelplot(s,par.settings=RdBuTheme())
``````

Thanks very much for providing a general solution which can be applied in other mapping exercises as well.

– user3710546
Commented Nov 17, 2015 at 6:21
• @Pascal the questions are almost similar. However, this one uses a different color palette and I would like the white color to denote zero values as shown on the map above. The other question uses a RdYIBu palette instead. Thanks for your help. Commented Nov 17, 2015 at 15:50
• Most of your code has nothing to do with your question. Please provide a simple reproducible example with only relevant code. E.g. start with `r <- raster(); values(r) <- 10* (runif(ncell(r)) - 0.5)` Commented Nov 17, 2015 at 17:16
• @RobertH thanks for suggesting that I improve the reproducible example and code. Here is something more appropriate: `ras1 <- raster(nrow=10,ncol=10) set.seed(1) ras1[] <- rchisq(df=10,n=10*10) ras2=ras1*(-1)/2 s <- stack(ras1,ras2) levelplot(s,par.settings=RdBuTheme())` . How can I set the 0 to be at the dividing point for red and blue colors as in the world map shown above? Commented Nov 17, 2015 at 18:06

I wrote a gist to do this. It takes a `trellis` object generated by `rasterVis::levelplot`, and a colour ramp, and plots the object with the colours diverging around zero.

Using your `s`, you can use it like this:

``````devtools::source_gist('306e4b7e69c87b1826db')
p <- levelplot(s)
diverge0(p, ramp='RdBu')
``````

`ramp` should be the name of a `RColorBrewer` palette, a vector of colours to be interpolated, or a `colorRampPalette`.

Here's the source:

``````diverge0 <- function(p, ramp) {
# p: a trellis object resulting from rasterVis::levelplot
# ramp: the name of an RColorBrewer palette (as character), a character
#       vector of colour names to interpolate, or a colorRampPalette.
require(RColorBrewer)
require(rasterVis)
if(length(ramp)==1 && is.character(ramp) && ramp %in%
row.names(brewer.pal.info)) {
ramp <- suppressWarnings(colorRampPalette(brewer.pal(11, ramp)))
} else if(length(ramp) > 1 && is.character(ramp) && all(ramp %in% colors())) {
ramp <- colorRampPalette(ramp)
} else if(!is.function(ramp))
stop('ramp should be either the name of a RColorBrewer palette, ',
'a vector of colours to be interpolated, or a colorRampPalette.')
rng <- range(p\$legend[[1]]\$args\$key\$at)
s <- seq(-max(abs(rng)), max(abs(rng)), len=1001)
i <- findInterval(rng[which.min(abs(rng))], s)
zlim <- switch(which.min(abs(rng)), `1`=i:(1000+1), `2`=1:(i+1))
p\$legend[[1]]\$args\$key\$at <- s[zlim]
p\$par.settings\$regions\$col <- ramp(1000)[zlim[-length(zlim)]]
p
}
``````

Note that, as suggested in @LucasFortini's post, the process is much simpler if you're happy to have the colorkey extend the same distance above and below zero, e.g.: `levelplot(s,par.settings=RdBuTheme(), at=seq(-max(abs(cellStats(s, range))), max(abs(cellStats(s, range))), len=100))`.

• jbaums on point. diverge0 is the MOST wanted code. This is very creative of you. Commented Nov 18, 2015 at 0:25
• Hi jbaums how can I define the number of colors in this code below? That is I want the colorbar in `diverge0` to be same levels as in `p`. At the moment it looks like 1001 colors but I need 10. `devtools::source_gist('306e4b7e69c87b1826db') Uniques <- cellStats(s,stat=unique) Uniques.max <- max(Uniques) Uniques.min <- min(Uniques) my.at <- round(seq(ceiling(Uniques.max), floor(Uniques.min), length.out = 10),0) myColorkey <- list(at=my.at, ## where the colors change labels=list(at=my.at)) p <- levelplot(s,at=my.at, colorkey=myColorkey) diverge0(p, ramp='RdBu')` Commented Nov 18, 2015 at 0:30
• @aez849 - those breaks are a bit weird, but for cases like that it can be easier to work out the vector of colours "manually". E.g. `levelplot(s, at=my.at, col.regions=colorRampPalette(brewer.pal(11, 'RdBu'))(12)[4:12], colorkey=myColorkey)`. There are 6 positive bins and 3 negative bins, so we can create a vector of 12 colours along the `RdBu` ramp (with `colorRampPalette(brewer.pal(11, 'RdBu'))(12)`), and exclude the first 3 (i.e. subset to elements `4:12`). Commented Nov 18, 2015 at 1:31
• @jbaums is there a way to use your function but to also set an upper limit at which one color should be used e.g. yellow, meaning saturation? Commented Jul 26, 2018 at 11:24
• @jbaums, I just posted a question about adjusting your diverging scale so it is non-linear: stackoverflow.com/questions/55172091/… Maybe you have an idea? Commented Mar 14, 2019 at 21:16

This is something I do frequently with the script below:

``````library(colorRamps)
col5 <- colorRampPalette(c('blue', 'gray96', 'red'))  #create color ramp starting from blue to red
color_levels=20 #the number of colors to use
max_absolute_value=0.4 #what is the maximum absolute value of raster?
plot(img, col=col5(n=color_levels), breaks=seq(-max_absolute_value,max_absolute_value,length.out=color_levels+1) , axes=FALSE)
``````

Using the data from here, here is an example output and actual script:

``````library(raster)
library(colorRamps)
img=raster("D:/temp/so/PPT_wet_minus_dry.tif")
col5 <- colorRampPalette(c('blue', 'gray96', 'red'))  #create color ramp starting from blue to red
color_levels=10 #the number of colors to use
max_absolute_value=max(abs(c(cellStats(img, min), cellStats(img, max)))) #what is the maximum absolute value of raster?
color_sequence=seq(-max_absolute_value,max_absolute_value,length.out=color_levels+1)
plot(img, col=col5(n=color_levels), breaks=color_sequence, axes=FALSE)
``````

This may bother some as there are a lot of color bins on the negative range that are unused (like the example you provided). The modification below allows for the exclusion of the empty colors from the map legend:

``````n_in_class=hist(img, breaks=color_sequence, plot=F)\$counts>0
col_to_include=min(which(n_in_class==T)):max(which(n_in_class==T))
breaks_to_include=min(which(n_in_class==T)):(max(which(n_in_class==T))+1)
plot(img, col=col5(n=color_levels)[col_to_include], breaks=color_sequence[breaks_to_include] , axes=FALSE)