I have survey data of species richness that was taken at various sites in the Chesapeake Bay, USA, and I would like to graphically present the data as a "heat map."
I have a dataframe of lat/long coordinates and richness values, which I converted into a
SpatialPointsDataFrame and used the
autoKrige() function from the automap package to generate the interpolated values.
First, can anyone comment as to whether I am correctly implementing the
Second, I am having trouble plotting the data and overlaying a map of the region. Alternately, could I specify the interpolation grid to reflect the borders of the Bay (as suggested here)? Any thoughts on how I might do that and where I might get that information? Supplying the grid to
autoKrige() appears easy enough.
EDIT: Thanks to Paul for his super helpful post! Here is what I have now. Having trouble getting ggplot to accept both the interpolated data and the map projection:
require(rgdal) require(automap) #Generate lat/long coordinates and richness data set.seed(6) df=data.frame( lat=sample(seq(36.9,39.3,by=0.01),100,rep=T), long=sample(seq(-76.5,-76,by=0.01),100,rep=T), fd=runif(10,0,10)) initial.df=df #Convert dataframe into SpatialPointsDataFrame coordinates(df)=~long+lat #Project latlong coordinates onto an ellipse proj4string(df)="+proj=longlat +ellps=WGS84 +datum=WGS84 +no_defs" #+proj = the type of projection (lat/long) #+ellps and +datum = the irregularity in the ellipse represented by planet earth #Transform the projection into Euclidean distances project_df=spTransform(df, CRS("+proj=merc +zone=18s +ellps=WGS84 +datum=WGS84")) #projInfo(type="proj") #Perform the interpolation using kriging kr=autoKrige(fd~1,project_df) #Extract the output and convert to dataframe for easy plotting with ggplot2 kr.output=as.data.frame(kr$krige_output) #Plot the output #Load the map data for the Chesapeake Bay cb=data.frame(map("state",xlim=range(initial.df$long),ylim=range(initial.df$lat),plot=F)[c("x","y")]) ggplot()+ geom_tile(data=kr.output,aes(x=x1,y=x2,fill=var1.pred))+ geom_path(data=cb,aes(x=x,y=y))+ coord_map(projection="mercator")