I have a question about Raster.Predict in R. Is it possible to use a spline model to generate a new raster using raster predict?
I have a set of data for which I would like to fit a spline model, fitting temperature to depth, then apply that spline model to a depth raster to generate a temperature raster. A minimum working example is below. The issue is that the returned raster, r2.spl, is identical to the input raster.
I'm guessing the spline model is not supported by raster predict, or am I missing something else?
#MWE for Raster Predict using smoothing spline #Make data x<- c( -1.5,-3.0,-4.5,-6.0,-7.5,-9.0,-10.5,-12.0,-13.5,-20.0) y<- c(19.3,19.3,19.2,19.3,19.1,17.7,10.6,9.9,9.2,7.4) # fit spline model spl.xy<- smooth.spline(x,y , df=10) plot(x,y) lines(predict(spl.xy), col="red") #generate raster r1<- raster(nrow=10, ncol=10) names(r1)<-c('x') r1 spl.xy # Assign random cell values values(r1) <- runif(ncell(r1))*-20 plot(r1) #predict new raster using Raster Predict r2.spl<-predict(r1, spl.xy, progress="text") plot(r2.spl) r2.spl
Thanks in advance for any assistance.