I have a dataframe called daily which looks like this:
daily[1:10,] Climate_Division Date Precipitation 1 1 1948-07-01 0.2100000 2 1 1948-07-02 0.7000000 3 1 1948-07-03 0.1900000 4 1 1948-07-04 0.1033333 5 1 1948-07-05 0.1982895 6 1 1948-07-06 0.1433333 7 1 1948-07-07 NA 8 1 1948-07-08 NA 9 1 1948-07-09 NA 10 1 1948-07-10 NA
The objective that I would like to accomplish is average all the day values throughout the years (1948-1995) to replace the NA value that occurs on that particular day. For example, since row 7 has an NA for July 7, 1948, I would average all the July 7 from 1948-1995 and replace that particular day with the average.
What I have tried so far is this:
index <- which(is.na(daily$Precipitation)) # find where the NA's occur daily_avg <- daily # copy dataframe daily_avg$Date <- strftime(daily_avg$Date, format="2000-%m-%d") # Change the Date format to represent only the day and month and disregard year daily_avg <- aggregate(Precipitation~Date, FUN = mean, data = daily_avg, na.rm = TRUE) # find the mean precip per day daily[index,3] <- daily_avg[daily_avg$Date %in% strftime(daily[index,2], format="2000-%m-%d"), 2]
The last line in the code is not working properly, I'm not sure why yet. That is how my thought process of this problem is going. However, I was wondering if there is a better way of doing it using a built in function that I am not aware of. Any help is greatly appreciated. Thank you