I need to calculate the distance between a grid that is the output of my kriging interpolation and some points where i need to interpolate.

Problem is that the grid is quite big and making the banal double for cycle calculating the distance between the points of the grid and my points of interest with `geodDist`

from the `oce`

package takes forever.

Is there a better way to do calculate which point in a grid is closer to some points of interest??

This is my banal cycle

```
#find the closest points from the grid to the old samples
#kriging model and so on y_ok now contains the grid
y_ok <- krige(rssi~1, samples, predgrid, model = vfit_ok, nmax=5)
yok.fr<-as.data.frame(y_ok)
#samples_all.fr contains the points where I want to interpolate
require(oce)
dist.mtx<-matrix(data=NA,nrow=dim(samples_all.fr)[1],ncol=2)
for (i in 1:2){#dim(samples_all.fr[1])){
for(j in 1:dim(yok.fr)[1]){
a=geodDist(samples_all.fr[i,2], samples_all.fr[i,1], yok.fr[j,2], yok.fr[j,1])
if(!(is.finite(dist.mtx[i,1]))|(a<dist.mtx[i,1])){
dist.mtx[i,1]=a
dist.mtx[i,2]=j
}
}
}
```

Since it is just a best practice question I don't include any data, hope it is ok.

`if`

statement and the two-cycle`i`

loop. – Carl Witthoft Sep 25 '13 at 12:28