I'm doing a regression kriging in R and have already done the ordinary kriging with the residuals which worked absolutely fine. Now I want to do the linear regression with three prediction variables using krige.

```
Slope <- readGDAL("Slope.tiff")
proj4string(Slope) <- CRS(paste("+init=epsg:",32632,sep=""))
SRTM <- readGDAL("SRTM_NiSa.tiff")
proj4string(SRTM) <- CRS(paste("+init=epsg:",32632,sep=""))
Wetness <- readGDAL("Wetness.tiff")
proj4string(Wetness) <- CRS(paste("+init=epsg:",32632,sep=""))
...
VarioTon <- variogram(Lucas@data$TonKorrigiertFinal~1, LucasTransformiert, width = 5000)
plot(VarioTon, type = "b", main = "Experimentelles Variogramm (Ton)")
vmTon <- vgm(100, "Exp", 12000, 10)
vmfTon <- fit.variogram(VarioTon, vmTon)
step_ton <- step(model_ton)
geo_data@data$step_tonfit <- fitted(step_ton)
geo_data@data$step_tonres <- residuals(step_ton)
Residuals_Ton <- krige(geo_data@data$step_tonres~1,
locations = geo_data, newdata = SRTM, model= vmfTon)
krige(geo_data@data$step_tonfit ~ Slope+SRTM+Wetness, locations = geo_data, newdata = Slope)
```

This leads to the error message "invalid type (S4) for variable 'SRTM'". SRTM is a formal class SpatialGridDataframe, the other ones are Large SpatialGridDataFrames although they all have the same extent and were opened with readGDAL. Leaving SRTM out leads to the error message "object is not a matrix". Only using Slope leads to the same error message. Additional error warnings are about differing numbers of lines.