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I a having a little trouble with vector or array operations.

I have three 3D arrays and i wanna find the average of them. How can i do that? we can't use mean() as it only returns a single value.

The more important is some of the cells in the arrays are NA whic mean if i just add them like

A = (B + C + D)/3 

The results of will show NA as well.

How can i let it recognise if the cell is NA then just skip it.

Like

 A = c(NA, 10, 15, 15, NA)
 B = c(10, 15, NA, 22, NA)
 C = c(NA, NA, 20, 26, NA)

I wanna the output of average these vectors be

(10, (10+15)/2, (15+20)/2, (15+22+26)/3, NA)

We also can't use na.omit, because it will move the order of indexes.

This is the corresponding code. i wish it would be helpful.

for (yr in 1950:2011) {
    temp_JFM <- sst5_sst2[,,year5_sst2==yr & (month5_sst2>=1 & month5_sst2<=3)]
       k = 0
       jfm=4*k+1
    for (i in 1:72) {
        for (j in 1:36) {
            iposst5_sst2[i,j,jfm] <- (temp_JFM[i,j,1]+temp_JFM[i,j,2]+temp_JFM[i,j,3])/3
        }
    }      
}

Thnk you.

It already been solved.

The easiest way to correct it can be shown below.

iposst5_sst2[i,j,jfm] <- mean(temp_JFM[i,j,],na.rm=TRUE)
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2 Answers 2

up vote 2 down vote accepted

Here's an example which makes a vector of the three values, which makes na.omit usable:

vectorAverage <- function(A,B,C) {
    Z <- rep(NA, length(A))

    for (i in 1:length(A)) {
        x <- na.omit(c(A[i],B[i],C[i]))
        if (length(x) > 0) Z[i] = mean(x)
    }
    Z
}

Resulting in:

vectorAverage(A,B,C)
[1] 10.0 12.5 17.5 21.0   NA

Edited: Missed the NaN in the output of the first version.

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I'm not entirely sure what your desired output is, but I'm guessing that what you really want to build is not three 3D arrays, but one 4D array that you can then use apply on.

Something like this:

#Three 3D arrays...
A <- array(runif(1:27),dim = c(3,3,3))
B <- array(runif(1:27),dim = c(3,3,3))
C <- array(runif(1:27),dim = c(3,3,3))

#Become one 4D array
D <- array(c(A,B,C),dim = c(3,3,3,3))

#Now we can simply apply the function mean
# and use it's na.rm = TRUE argument.
apply(D,1:3,mean,na.rm = TRUE)
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3  
+1 -- also, much faster than apply if you are working with big arrays, you can do rowMeans(D, na.rm = TRUE, dims = 3) –  flodel Mar 28 '12 at 3:56

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