# average raster file value in shapefile area returns multiple outputs - interpreting results

So I have my raster file

``````r <- raster('ras')
``````

and a shapefile

``````abys <- readShapeSpatial('abys')
``````

I calculated the mean values defined by the shapefile by the following method:

``````r.vals<- extract(r,abys)
r.mean <- lapply(r.vals,FUN=mean)
``````

However, when using a couple of shapefiles when I return the output I get multiple results, e.g.:

``````[[1]]
[1] 9321

[[2]]
[1] 6616

[[3]]
[1] 8348
``````

It should just return one which is what I usually get. Is this because of some characterestic of my shapefile or a problem with my methodology?

-
I know nothing about this method but do you perchance have three polygons in your shapefile? Ie what's length(abys)? –  Ari B. Friedman Oct 19 '12 at 21:08
yes! so length(abys) shows there are 3 files (annoyingly simple) so my solution would be to calculate the mean from the 3 polygons –  Nick Crouch Oct 19 '12 at 21:22

Your problem is that there are three polygons in `abys`.

The best solution is not to average the results but to union the polygon first:

``````library(rgeos)
abys.single <- gUnaryUnion(abys)
r.vals<- extract(r,abys.single)
r.mean <- lapply(r.vals,FUN=mean)
``````
-
Can this be expanded to remove NA data? This has a value of -3000 so skews the mean –  Nick Crouch Oct 23 '12 at 18:21
I actually sorted this be converting any values of -3000 to NA and then removing them –  Nick Crouch Oct 23 '12 at 19:00
You can subset SpatialPolygonsDataFrames using `[,]` or `taRifx.geo::subset`. –  Ari B. Friedman Oct 23 '12 at 19:19