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
```