Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am working with a dataset that has temperature readings once an hour, 24 hrs a day for 100+ years. I want to get an average temperature for each day to reduce the size of my dataset. The headings look like this:

  1943  6 19 10  0   73
  1943  6 19 11  0   72
  1943  6 19 12  0   76
  1943  6 19 13  0   78
  1943  6 19 14  0   81
  1943  6 19 15  0   85
  1943  6 19 16  0   85
  1943  6 19 17  0   86
  1943  6 19 18  0   86
  1943  6 19 19  0   87

etc for 600,000+ data points.

How can I run a nested function to calculate daily average temperature so i preserve the YR, MO, DA, TEMP? Once I have this, I want to be able to look at long term averages & calculate say the average temperature for the Month of January across 30 years. How do I do this?

share|improve this question
Two warnings: be aware to remove incomplete days (or interpolate them) and that simple mean over all hours is not what meteo people usually consider average temperature -- there are some stupid standards like temperature from 9:00 with weight 0.4 plus temperature from 13:00 with 0.6. –  mbq Feb 27 '13 at 15:25
thanks for the heads up! right now this is just for a course project & will not be used for publication. i will look into that though for the future. –  user2113985 Feb 27 '13 at 17:03

3 Answers 3

up vote 8 down vote accepted

In one step you could do this:

 meanTbl <- with(datfrm, tapply(TEMP, ISOdate(YR, MO, DA), mean) )

This gives you a date-time formatted index as well as the values. If you wanted just the Date as character without the trailing time:

meanTbl <- with(dat, tapply(TEMP, as.Date(ISOdate(YR, MO, DA)), mean) )

The monthly averages could be done with:

 monMeans <- with(meanTbl, tapply(TEMP, MO, mean))
share|improve this answer
thank you! i did use this although i decided to go with the plyr package commented on below –  user2113985 Feb 27 '13 at 23:44

You can do it with aggregate:

# daily means
aggregate(TEMP ~ YR + MO + DA, FUN=mean, data=data) 

# monthly means 
aggregate(TEMP ~ YR + MO, FUN=mean, data=data)

# yearly means
aggregate(TEMP ~ YR, FUN=mean, data=data)

# monthly means independent of year
aggregate(TEMP ~ MO, FUN=mean, data=data)
share|improve this answer
thank you! i did use this although i decided to go with the plyr package commented on below –  user2113985 Feb 27 '13 at 23:45

Your first question can be achieved using the plyr package:

daily_mean = ddply(df, .(YR, MO, DA), summarise, mean_temp = mean(TEMP))

In analogy to the above solution, to get monthly means:

monthly_mean = ddply(df, .(YR, MO), summarise, mean_temp = mean(temp))

or to get monthly averages over the whole dataset (30 years, aka normals in climate), not per year:

monthly_mean_normals = ddply(df, .(MO), summarise, mean_temp = mean(temp))
share|improve this answer
Hi, thank you! I did use this to par down my data and its fantastic. When I calculate the monthly_mean_normals the results all come back "NA" did i miss something here? How can I calculate monthly (or daily) means from 1950-1980? –  user2113985 Feb 27 '13 at 23:46
Read the documentation of mean, specifically na.rm. –  Paul Hiemstra Feb 28 '13 at 5:11

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.