So this is an attempt at clustering. You really should provide data if you want a better answer.

```
library(reshape2) # for melt(...)
library(rgl) # for plot3d(...)
set.seed(1) # to create reproducible sample
# 3D matrix, values clustered around -2 and +2
m <- c(rnorm(500,-2),rnorm(500,+2))
dim(m) <- c(10,10,10)
v <- melt(m, varnames=c("x","y","z")) # 4 columns: x, y, z, value
# interactive 3D plot, coloring based on value
plot3d(v$x,v$y,v$z, col=1+round(v$value-min(v$value)),size=5)
# identify clusters
v <- scale(v) # need to scale or clustering will fail
v <- data.frame(v) # need data frame for later
d <- dist(v) # distance matrix
km <- kmeans(d,centers=2) # kmeans clustering, 2 clusters
v$clust <- km$cluster # identify clusters
# plot the clusters
plot(z[1:4],col=v$clust) # scatterplot matrix
plot3d(v$x,v$y,v$z, col=v$clust,size=5) # 3D plot, colors based in cluster
```

The main idea is to reshape your 3D matrix into "long" format with columns for x, y, z, and the actual matrix values. So now x, y, and z contain the positional information (here, the index values 1:10). You need to scale this so the `value`

column and the index columns are on the same scale, otherwise clustering will give you misleading results.