The script below has worked for me with the same data when computing pearsons correlation. I have recently adapted it to create a covariance matrix to input into a pca. I read on a forum that inputting a pre-created covariance matrix might avoid memory problems but that hasn't been the case for me. I get the following errors when running the covariance matrix:

```
Error: cannot allocate vector of size 1.1 Gb
In addition: Warning messages:
1: In na.omit.default(cbind(x, y)) :
Reached total allocation of 6141Mb: see help(memory.size)
2: In na.omit.default(cbind(x, y)) :
Reached total allocation of 6141Mb: see help(memory.size)
3: In na.omit.default(cbind(x, y)) :
Reached total allocation of 6141Mb: see help(memory.size)
4: In na.omit.default(cbind(x, y)) :
Reached total allocation of 6141Mb: see help(memory.size)
```

Can anyone suggest a more efficient way to do this so I don't run into memory problems? If I'm completely off-base here with computing the covariance first that's fine. PCA is the only thing I need in the end. My data are 12, 1-band raster in arcGIS's raster format and are large at 581.15 mb each. Any help would be most appreciated.

```
library(rgdal)
library(raster)
setwd("K:/Documents/SDSU/Thesis/GIS Data All/GIS Layers/Generated_Layers/GridsForCor")
# List the full path to each raster:
raster_files = c('aspectclp',
'lakedistclp',
'ocdistclp',
'popdenclp',
'roaddistclp',
'scurveclp',
'sdemclp',
'solarradclp',
'sslopeclp',
'vegcatclp',
'canopcvrclp',
'canophtclp')
cov_matrix <- matrix(NA, length(raster_files), length(raster_files))
for (outer_n in 1:length(raster_files)) {
outer_raster <- raster(raster_files[outer_n])
# Start this loop at outer_n rather than 1 so that we don't compute the
# same covariance twice. At the end of the loops cov_matrix will be upper
# triangular, with the lower triangle all NA, and the diagonal all NA
# (since the diagonal would all be 1 anyway).
for (inner_n in (outer_n):length(raster_files)) {
# Don't compute correlation of a raster with itself:
if (inner_n == outer_n) {next}
inner_raster <- raster(raster_files[inner_n])
cov_matrix[outer_n, inner_n] <- cov(outer_raster[], inner_raster[],
use='complete.obs', method = "spearman")
}
}
pca_matrix <- princomp(raster_files, cor = FALSE, covmat = cov_matrix))
# Writing to a txt file & csv file
write.table(pca_matrix, "PCA.txt", sep="\t", row.names = FALSE)
write.csv(pca_matrix, "PCA.csv") enter code here
```

`princomp`

? (2) Why are you using`princomp`

rather than`prcomp`

? – joran Jun 6 '13 at 22:14