I am relatively new to R and would like to use functions implemented in the
phyloclim package. I have no problems with
niche.overlap, however I am stuck with
bg.similarity.test. I provide my script.
library(phyloclim) MaxEnt<-"D:/MaxEnt/maxent.jar" Species<-read.table("Species_FILT.csv",head=TRUE,sep=";") rasters<-c("rastert_project03.asc","rastert_project04.asc","rastert_project12.asc","rastert_project15.asc") Rasters<-stack(rasters) Rasters<-as(Rasters,"SpatialGridDataFrame") niche.equivalency.test(Species,Rasters,app=MaxEnt)
R returns the following error:
Error in (function (classes, fdef, mtable) : unable to find an inherited method for function ‘extract’ for signature ‘"SpatialGridDataFrame", "SpatialPoints"’
(error is similar for
Species is a data.frame with 3 columns (Species, longitude and latitude). There are four species but the error is the same if i include only two species. Rasters are resampled rasters of bioclimatic variables (WorldClim).
dput(head(Species)) structure(list(Species = structure(c(2L, 4L, 4L, 2L, 2L, 4L), .Label = c("NKA", "NKB", "NSA", "NSB"), class = "factor"), WGS_Xdd = c(13.79058512, 13.79058512, 13.89446192, 13.89580686, 14.0402185, 13.9261392 ), WGS_Ydd = c(45.54972662, 45.54972662, 45.5936157, 45.59172992, 45.56361628, 45.45246074)), .Names = c("Species", "WGS_Xdd", "WGS_Ydd"), row.names = c(NA, 6L), class = "data.frame") dput(head(Rasters)) structure(list(rastert_project03 = c(33L, 33L, 33L, 33L, 33L, 33L), rastert_project04 = c(6541L, 6549L, 6551L, 6572L, 6524L, 6530L), rastert_project12 = c(1233L, 1227L, 1219L, 1212L, 1204L, 1200L), rastert_project15 = c(18L, 18L, 18L, 18L, 18L, 17L)), .Names = c("rastert_project03", "rastert_project04", "rastert_project12", "rastert_project15" ), row.names = c(NA, 6L), class = "data.frame")
Considering the error message, I would guess that input objects are not the right type and cannot be read. It is highly possible that I misunderstand the instructions in the function help. I searched the net for some solutions but could not find them.
I would immensely appreciate some guidance or tips on the topic.