# fields, Tools for spatial data # Copyright 2004-2011, Institute for Mathematics Applied Geosciences # University Corporation for Atmospheric Research # Licensed under the GPL -- www.gpl.org/licenses/gpl.html library( fields) # tests of predictSE # against direct linear algebra options( echo=FALSE) test.for.zero.flag<- 1 x0<- expand.grid( c(-8,-4,0,20,30), c(10,8,4,0)) Krig( ChicagoO3$x, ChicagoO3$y, cov.function = "Exp.cov", theta=50)-> out # direct calculation Krig.Amatrix( out, x=x0)-> A test.for.zero( A%*%ChicagoO3$y, predict( out, x0),tag="Amatrix vs. predict") Sigma<- out$rhohat*Exp.cov( ChicagoO3$x, ChicagoO3$x, theta=50) S0<- out$rhohat*c(Exp.cov( x0, x0, theta=50)) S1<- out$rhohat*Exp.cov( out$x, x0, theta=50) #yhat= Ay #var( f0 - yhat)= var( f0) - 2 cov( f0,yhat)+ cov( yhat) look<- S0 - t(S1)%*% t(A) - A%*%S1 + A%*% ( Sigma + diag(out$shat.MLE**2/out$weightsM))%*% t(A) # #compare to # diagonal elements test2<- predictSE( out, x= x0) test.for.zero( sqrt(diag( look)), test2,tag="Marginal predictSE") out2<- Krig( ChicagoO3$x, ChicagoO3$y, cov.function = "Exp.cov", theta=50, lambda=out$lambda) test2<- predictSE( out2, x= x0) test.for.zero( sqrt(diag( look)), test2,tag="Marginal predictSE fixed ") test<- predictSE( out, x= x0, cov=TRUE) test.for.zero( look, test,tag="Full covariance predictSE") # simulation based. set.seed( 333) sim.Krig( out, x0,M=4e3)-> test var(test)-> look predictSE( out, x=x0)-> test2 mean( diag( look)/ test2**2)-> look2 test.for.zero(look2, 1.0, tol=1.5e-2, tag="Marginal standard Cond. Sim.") predictSE( out, x=x0, cov=TRUE)-> test2 # multiply simulated values by inverse square root of covariance # to make them white eigen( test2, symmetric=TRUE)-> hold hold$vectors%*% diag( 1/sqrt( hold$values))%*% t( hold$vectors)-> hold cor(test%*% hold)-> hold2 # off diagonal elements of correlations -- expected values are zero. abs(hold2[ col(hold2)> row( hold2)])-> hold3 test.for.zero( mean(hold3), 0, relative=FALSE, tol=.02, tag="Full covariance standard Cond. Sim.") # test of sim.Krig.approx.R # # first create and check a gridded test case. data( ozone2) as.image(ozone2$y[16,], x= ozone2$lon.lat, ny=24, nx=20, na.rm=TRUE)-> dtemp # # A useful disctrtized version of ozone2 data x<- dtemp$xd y<- dtemp$z[ dtemp$ind] weights<- dtemp$weights[ dtemp$ind] Krig( x, y, Covariance="Matern", theta=1.0, smoothness=1.0, weights=weights) -> out set.seed(234) ind0<- cbind( sample( 1:20, 5), sample( 1:24, 5)) x0<- cbind( dtemp$x[ind0[,1]], dtemp$y[ind0[,2]]) # an inline check plot(out$x, cex=2); points( x0, col="red", pch="+",cex=2) # direct calculation as backup ( also checks weighted case) Krig.Amatrix( out, x=x0)-> A test.for.zero( A%*%out$yM, predict( out, x0),tag="Amatrix vs. predict") Sigma<- out$rhohat*stationary.cov( out$xM, out$xM, theta=1.0,smoothness=1.0, Covariance="Matern") S0<- out$rhohat*stationary.cov( x0, x0, theta=1.0,smoothness=1.0, Covariance="Matern") S1<- out$rhohat*stationary.cov( out$xM, x0, theta=1.0,smoothness=1.0, Covariance="Matern") #yhat= Ay #var( f0 - yhat)= var( f0) - 2 cov( f0,yhat)+ cov( yhat) look<- S0 - t(S1)%*% t(A) - A%*%S1 + A%*% ( Sigma + diag(out$shat.MLE**2/out$weightsM) )%*% t(A) test<- predictSE( out, x0, cov=TRUE) test.for.zero( c( look), c( test), tag="Weighted case and exact for ozone2 full cov", tol=1e-8) ######################################################################## ######### redo test with smaller grid to speed things up #cat("Conditional simulation test -- this takes some time", fill=TRUE) # redo data set to smaller grid size ##D N1<-4 ##D N2<-5 ##D as.image(ozone2$y[16,], x= ozone2$lon.lat, ny=N2, nx=N1, ##D na.rm=TRUE)-> dtemp # # A useful discretized version of ozone2 data ##D xd<- dtemp$xd ##D y<- dtemp$z[ dtemp$ind] ##D weights<- dtemp$weights[ dtemp$ind] ##D Krig( xd, y, Covariance="Matern", ##D theta=1.0, smoothness=1.0, weights=weights) -> out ##D xr<- range( dtemp$x) ##D yr<- range( dtemp$y) ##D M1<-N1 ##D M2<- N2 ##D glist<- list( x=seq( xr[1], xr[2],,M1) , y=seq( yr[1], yr[2],,M2)) ##D set.seed( 233) # with extrap TRUE this finesses problems with # how NAs are handled in var below ##D sim.Krig.approx( out, grid= glist, M=3000, extrap=TRUE)-> look ##D predictSE( out, make.surface.grid( glist))-> test ##D look2<- matrix( NA, M1,M2) ##D for( k in 1:M2){ ##D for ( j in 1:M1){ ##D look2[j,k] <- sqrt(var( look$z[j,k,], na.rm=TRUE)) } ##D } ##D test.for.zero( 1-mean(c(look2/test), na.rm=TRUE), 0, relative=FALSE, ##D tol=.001, tag="Conditional simulation marginal se for grid") cat("all done testing predictSE ", fill=TRUE) options( echo=TRUE)