I've been running into all sorts of issues using ArcGIS ZonalStats and thought R could be a great way. Saying that I'm fairly new to R, but got a coding background. The situation is that I have several rasters and a polygon shape file with many features of different sizes (though all features are bigger than a raster cell and the polygon features are aligned to the raster). I've figured out how to get the mean value for each polygon feature using the raster library with extract:
#load packages required require(rgdal) require(sp) require(raster) require(maptools) # ---Set the working directory------- datdir <- "/test_data/" #Read in a ESRI grid of water depth ras <- readGDAL("test_data/raster/pl_sm_rp1000/w001001.adf") #convert it to a format recognizable by the raster package ras <- raster(ras) #read in polygon shape file proxNA <- readShapePoly("test_data/proxy/PL_proxy_WD_NA_test") #plot raster and shp plot(ras) plot(proxNA) #calc mean depth per polygon feature #unweighted - only assigns grid to district if centroid is in that district proxNA@data$RP1000 <- extract(ras, proxNA, fun = mean, na.rm = TRUE, weights = FALSE) #check results head(proxNA) #plot depth values spplot(proxNA[,'RP1000'])
The issue I have is that I also need an area based ratio between the area of the polygon and all non NA cells in the same polygon. I know what the cell size of the raster is and I can get the area for each polygon, but the missing link is the count of all non-NA cells in each feature. I managed to get the cell number of all the cells in the polygon
proxNA@data$Cnumb1000 <- cellFromPolygon(ras, proxNA)and I'm sure there is a way to get the actual value of the raster cell, which then requires a loop to get the number of all non-NA cells combined with a count, etc.
BUT, I'm sure there is a much better and quicker way to do that! If any of you has an idea or can point me in the right direction, I would be very grateful!