# Running Mean/SD: How can I select within the averaging window based on criteria

I need to calculate a moving average and standard deviation for a moving window. This is simple enough with the catools package!

... However, what i would like to do, is having defined my moving window, i want to take an average from ONLY those values within the window, whose corresponding values of other variables meet certain criteria. For example, I would like to calculate a moving Temperature average, using only the values within the window (e.g. +/- 2 days), when say Relative Humidity is above 80%.

Could anybody help point me in the right direction? Here is some example data:

``````da <- data.frame(matrix(c(12,15,12,13,8,20,18,19,20,80,79,91,92,70,94,80,80,90),
ncol = 2, byrow = TRUE))

names(da) = c("Temp", "RH")
``````

Thanks,

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Welcome to SO! Please add a minimal, reproducible example and please show us what you have tried. Then you will be much more likely to receive a rapid, helpful answer. Cheers. –  Henrik Sep 10 '13 at 7:53
Thanks Henrik! So here's an exmaple of data and say i want to make my moving window size 3 steps da= data.frame(matrix(c(12,15,12,13,8,20,18,19,20,80,79,91,92,70,94,80,80,90), ncol = 2, byrow = TRUE)) names(da) = c("Temp", "RH") –  user1959078 Sep 10 '13 at 8:19
Click 'edit' under your question and include this as part of the question, not in a comment. –  Simon O'Hanlon Sep 10 '13 at 8:28
Thanks for the example! You may also wish to have a look here on how to format code in a nice way in questions, answers and comments. –  Henrik Sep 10 '13 at 8:28

I haven't used `catools`, but in the help text for the (presumably) most relevant function in that package, `?runmean`, you see that `x`, the input data, can be either "a numeric vector [...] or matrix with n rows". In your case the matrix alternative is most relevant - you wish to calculate mean of a focal variable, Temp, conditional on a second variable, RH, and the function needs access to both variables. However, "[i]f x is a matrix than each column will be processed separately". Thus, I don't think `catools` can solve your problem. Instead, I would suggest `rollapply` in the `zoo` package. In `rollapply`, you have the argument `by.column`. Default is `TRUE`: "If TRUE, FUN is applied to each column separately". However, as explained above we need access to both columns in the function, and set `by.column` to `FALSE`.

``````# First, specify a function to apply to each window: mean of Temp where RH > 80
meanfun <- function(x) mean(x[(x[ , "RH"] > 80), "Temp"])

# Apply the function to windows of size 3 in your data 'da'.
meanTemp <- rollapply(data = da, width = 3, FUN = meanfun, by.column = FALSE)
meanTemp

# If you want to add the means to 'da',
# you need to make it the same length as number of rows in 'da'.
# This can be acheived by the `fill` argument,
# where we can pad the resulting vector of running means with NA
meanTemp <- rollapply(data = da, width = 3, FUN = meanfun, by.column = FALSE, fill = NA)

# Add the vector of means to the data frame
da2 <- cbind(da, meanTemp)
da2

# even smaller example to make it easier to see how the function works
da <- data.frame(Temp = 1:9, RH = rep(c(80, 81, 80), each = 3))
meanTemp <- rollapply(data = da, width = 3, FUN = meanfun, by.column = FALSE, fill = NA)
da2 <- cbind(da, meanTemp)
da2

#     Temp RH meanTemp
# 1    1 80       NA
# 2    2 80      NaN
# 3    3 80      4.0
# 4    4 81      4.5
# 5    5 81      5.0
# 6    6 81      5.5
# 7    7 80      6.0
# 8    8 80      NaN
# 9    9 80       NA
``````
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@user1959078, since you are new on SO: as a courtesy to people that spend their time helping you, and also to avoid piles of unanswered questions on SO, you may consider upvoting and/or marking a suitable answer as accepted. –  Henrik Sep 11 '13 at 8:57
Thanks for the answer! Sorry for the delayed reply –  user1959078 Sep 12 '13 at 11:00
@user1959078, Thanks for your feed-back. Great to hear that it worked! Cheers. –  Henrik Sep 12 '13 at 11:12