# Summary Statistics of Raster By Latitudinal Intervals

Is there a quick way in R to do summary statistics on a raster based on latitudinal intervals or bins. Not a summary of the entire raster layer but spatial subsections. For example, get the mean and sd of raster cell values for every two degrees in latitude.

Below is some example data of a projected raster with Lat/Long coordinates.

``````set.seed(2013)
library(raster)

r <- raster(xmn=-110, xmx=-90, ymn=40, ymx=60, ncols=40, nrows=40)
r <- setValues(r, rnorm(1600)) #add values to raster
r[r > -0.2 & r < 0.2] <- NA #add some NA's to resemble real dataset
plot(r)

> r
class       : RasterLayer
dimensions  : 40, 40, 1600  (nrow, ncol, ncell)
resolution  : 0.5, 0.5  (x, y)
extent      : -110, -90, 40, 60  (xmin, xmax, ymin, ymax)
coord. ref. : +proj=longlat +datum=WGS84 +ellps=WGS84 +towgs84=0,0,0
data source : in memory
names       : layer
values      : -3.23261, 2.861592  (min, max)
``````

Since your raster's resolution is 0.5 and you have 40 rows, you want the `mean` / `sd` for every 4 rows:

``````set.seed(2013)
library(raster)

r <- raster(xmn=-110, xmx=-90, ymn=40, ymx=60, ncols=40, nrows=40)
r <- setValues(r, rnorm(1600)) #add values to raster
r[r > -0.2 & r < 0.2] <- NA #add some NA's to resemble real dataset

rmean <- sapply(seq(1,nrow(r),4),function(rix) mean(r[rix:rix+3,],na.rm=T))

rsd <- sapply(seq(1,nrow(r),4),function(rix) sd(r[rix:rix+3,],na.rm=T))

# > rmean
# [1] -0.033134373 -0.180689704  0.176575934 -0.003422832 -0.049113312  0.234891614  0.188559162 -0.026514169  0.106970362
# [10]  0.096033677
``````

So you're basically indexing the raster as matrix, only using the slices needed for `mean` / `sd`. For iteration you could also use `lapply`, which puts everything in a neat list.

You can aggregate your rows (groups of 4 in this case) and columns (into one column)

``````a <- aggregate(r, c(ncol(r), 4), fun=mean)
b <- aggregate(r, c(ncol(r), 4), fun=sd)

lat <- yFromRow(a, 1:nrow(a))
plot(lat, values(a))
``````