set.seed(1234) library(geoR) Data <- read.table("TempPptElevData.txt", header=T) Y1 <- Data$Temperature Y2 <- Data$Precipitation Elevation <- Data$Elevation sites <- cbind(Data$Longitude[1:50],Data$Latitude[1:50]) Elevation <- Elevation[1:50] R <- 6371 sites <- (R*pi/180)*sites temp.Jan <- Y1[1:50] temp.Feb <- Y1[51:100] temp.Mar <- Y1[101:150] temp.Apr <- Y1[151:200] temp.May <- Y1[201:250] temp.Jun <- Y1[251:300] temp.Jul <- Y1[301:350] temp.Aug <- Y1[351:400] temp.Sep <- Y1[401:450] temp.Oct <- Y1[451:500] temp.Nov <- Y1[501:550] temp.Dec <- Y1[551:600] #Begin Analysis for January obj <- cbind(sites,temp.Jan,Elevation) geodat <- as.geodata(obj,coords.col=1:2,data.col=3,covar.col=4) Predict.index <- seq(from=5,to=50,by=5) Predict.Elevation <- Elevation[Predict.index] Predict.Sites <- sites[Predict.index,] True.values <- temp.Jan[Predict.index] model.spec <- model.control(trend.d = ~ Elevation, trend.l=~Predict.Elevation, cov.model="matern", kappa=0.5, lambda=1) prior.spec <- prior.control(beta.prior="flat",sigmasq.prior="reciprocal",tausq.rel.prior="uniform",tausq.rel.discrete=seq(from=0.0,to=1.0,by=0.01)) output.spec <- output.control(quantile=c(0.50,0.025,0.975)) bayes1 <- krige.bayes(geodat, locations=Predict.Sites, borders=NULL, model=model.spec, prior=prior.spec, output=output.spec) out <- bayes1$posterior out <- out$sample beta0.qnt <- quantile(out$beta0, c(0.50,0.025,0.975)) beta1.qnt <- quantile(out$beta1, c(0.50,0.025,0.975)) phi.qnt <- quantile(out$phi, c(0.50,0.025,0.975)) sigmasq.qnt <- quantile(out$sigmasq, c(0.50,0.025,0.975)) tausq.rel.qnt <- quantile(out$tausq.rel, c(0.50,0.025,0.975)) tausq <- (out$tausq.rel)*(out$sigmasq) tausq.qnt <- quantile(tausq, c(0.50,0.025,0.975)) samples.temp.Jan <- cbind(out$beta0,out$beta1,out$phi,out$sigmasq,tausq) summary.temp.Jan <- rbind(beta0.qnt,beta1.qnt,phi.qnt,sigmasq.qnt,tausq.qnt) #write(t(samples.temp.Jan),"ColoradoJanMaternSamples.txt",ncolumns=ncol(samples.temp.Jan)) #write(t(summary.temp.Jan),"ColoradoJanMaternOut.txt",ncolumns=3) out2 <- bayes1$predictive predictive.mean <- out2$mean.simulations predictive.variance <- out2$variance.simulations predictive.sd <- sqrt(predictive.variance) predictive.quantiles <- out2$quantiles.simulations summary.predictive <- cbind(predictive.mean,predictive.sd,predictive.quantiles,True.values) #write(t(summary.predictive),"ColoradoJanPredictiveOut.txt",ncolumns=ncol(summary.predictive)) #End Analysis for January detach(package:geoR)