I have two data frames, set1 and set2 both with lat long coordinates. I want to
1) find the closest point in set2 to each point in set1 2) record the distance and add it to a column in set1 3) get the id and add it to a column in set1
I have written the following code, but it is very slow for my full data set (50,000 points in set1 and 1000 in set2).
This code works but it is slow. Perhaps I can convert it to an apply statement? The problem is that I do not know how.
Thank you
## load in library
library(spdep)
library(sp)
library(geosphere)
## create some fake data and convert them to spatial objects
set1<- data.frame(cbind(runif(25000,-10.8544921875,2.021484375),runif(40,49.82380908513249,59.478568831926395)))
names(set1)<-c("lon","lat")
coordinates(set1)<-~lon+lat
set2<-data.frame(cbind(runif(1000,-10.8544921875,2.021484375),runif(40,49.82380908513249,59.478568831926395)))
names(set2)<-c("lon","lat")
coordinates(set2)<-~lon+lat
set2$ID<-seq(1:dim(data.frame(set2))[1])
plot(set1, col="blue", pch=16)
plot(set2, col="grey", pch=16, add=TRUE)
##Calculate distances from points in set1 to points in set2
dists.set1.set2<-distm (set1, set2,fun = distHaversine)/1609
## create a variable for the distance from every point in set1 to the nearest point in set2
set1$distance.to.nearest.point<-apply(dists.set1.set2,1,min)
## Get the id of the point in set2 closest to each point in set1
for (i in 1:dim(set1)[1]){
if(length(which(dists.set1.set2[i,]==set1$distance.to.nearest.point[i]))>0){
set1$closest.point.in.set2[i]<-set2$ID[which(dists.set1.set2[i,]==set1$distance.to.nearest.point[i])]
}
}
distm()
function come from?