# R: Identify cell values across matrices

I have a set of 945 geocoded locations here. Each location has an ID and a given population:

``````"ID","LON","LAT","POPULATION"
1,86.648064,22.80682,386
2,86.65358,22.81848,655
3,86.670502,22.78508,624
4,86.685028,22.842409,708
5,86.716599,22.866791,987
6,86.734879,22.87911,415
7,86.736687,23.112619,715
``````

I am trying to figure out, for every location, the combined population of all the villages within a 10 km radius.

Calculating the distances for every point is trivial:

``````coords = read.csv("filepath/coords.csv", header=T, stringsAsFactors=F)
coords.matrix = data.matrix(coords[,c(2,3)])

library(sp)
dist = list()
for(i in 1:nrow(coords.matrix)) {
dist[[i]] = (spDistsN1(coords.matrix, coords.matrix[i,], longlat=T)) #See: http://hosho.ees.hokudai.ac.jp/~kubo/Rdoc/library/sp/html/spDistsN1.html
}
dist = do.call(rbind, dist)
``````

which gives me this 945X945 matrix. But how do I associate these cells to the IDs and corresponding populations?

-

Assuming the `dist` matrix has distances in KM I think you can do it like this:
``````coords\$POPIN10KM <- sapply(1:nrow(dist),function(i)sum(coords\$POPULATION[dist[i,]<10]))