# Calculating a daily mean in R

I'm a newbie so I gather there will be an easy answer to my question.

Say I have the following matrix:

x1 = 1:288

x2 = matrix(x1,nrow=96,ncol=3)

Is there an easy way to get the mean of rows 1:24,25:48,49:72,73:96 for column 2?

Basically I have a one year time series and I have to average some data every 24 hours.

Thank you very much.

-

1) ts. Since this is a regularly spaced time series, convert it to a `ts` series and then aggregate it from frequency 24 to frequency 1:

``````> aggregate(ts(x2[, 2], freq = 24), 1, mean)
``````

giving:

``````Time Series:
Start = 1
End = 4
Frequency = 1
[1] 108.5 132.5 156.5 180.5
``````

2) zoo. Here it is using zoo. The zoo package can also handle irregularly spaced series (if we needed to extend this). Below `day.hour` is the day number (1, 2, 3, 4) plus the hour as a fraction of the day so that `floor(day.hour)` is just the day number:

``````> library(zoo)
> day.hour <- seq(1, length = length(x2[, 2]), by = 1/24)
> z <- zoo(x2[, 2], day.hour)
> aggregate(z, floor, mean)
1     2     3     4
108.5 132.5 156.5 180.5
``````

If `zz` is the output then `coredata(zz)` and `time(zz)` are the values and times, respectively, as ordinary vectors.

-
+1 for showing how to use zoo and ts for that. I didn't mention it as I didn't want to assume too much about the data in the real problem, but it is definitely relevant and helpful. – Joris Meys Jan 14 '11 at 14:20

Quite compact and computationally fast way of doing this is to reshape the vector into a suitable matrix and calculating the column means.

``````colMeans(matrix(x2[,2],nrow=24))
``````
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clean solution, provided that there is no missing data anywhere. Otherwise the matrix wouldn't represent the days. – Joris Meys Jan 14 '11 at 12:14
You do need to be careful with this method so that the dimensions are right. But you can deal with missing data by using NA for those and using na.rm=TRUE – Matti Pastell Jan 14 '11 at 12:24
I am aware of that :-) I means missing in the sense of "not every day has 24 rows of data" – Joris Meys Jan 14 '11 at 14:22

There is.

Suppose we have the days :

``````Days <- rep(1:4,each=24)
``````

you could do easily

``````tapply(x2[,2],Days,mean)
``````

If you have a dataframe with a Date variable, you can use that one. You can do that for all variables at once, using aggregate :

``````x2 <- as.data.frame(cbind(x2,Days))
aggregate(x2[,1:3],by=list(Days),mean)
``````

Take a look at the help files of these functions to start with. Also do a search here, there are quite some other interesting answers on this problem :

PS : If you're going to do a lot of timeseries, you should take a look at the zoo package (on CRAN : http://cran.r-project.org/web/packages/zoo/index.html )

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@SnowFrog You're wrong. tapply doesn't create a data frame. It creates a vector (in this case). Big difference. – Joris Meys Nov 13 '13 at 11:58
One issue with the `tapply` method is that it creates a vector (number of columns = number of days). The `aggregate` method creates a data frame (1 column with number of rows = number of days), which may be more practical if subsequent manipulation of the data is needed. – SnowFrog Nov 20 '13 at 11:07