# Annual, monthly or daily mean for irregular time series

I am a new user of "R", and I couldn't find a good solution to solve it. I got a timeseries in the following format:

``````>dates  temperature depth   salinity
>12/03/2012 11:26   9.7533  0.48073 37.607
>12/03/2012 11:56   9.6673  0.33281 37.662
>12/03/2012 12:26   9.6673  0.33281 37.672
``````

I have an irregular frequency for variable measurements, done every 15 or every 30 minutes depending on the period. I would like to calculate annual, monthly and daily averages for each of my variables, whatever the number of data in a day/month/year is. I read a lot of things about the packages zoo, timeseries, xts, etc. but I can't get a clear vision of what I nead (maybe cause I'm not skilled enough with R...).

I hope my post is clear, don't hesitate to tell me if it's not.

-

Convert your data to an xts object, then use `apply.daily` et al to calculate whatever values you want.

``````library(xts)
d <- structure(list(dates = c("12/03/2012 11:26", "12/03/2012 11:56",
"12/03/2012 12:26"), temperature = c(9.7533, 9.6673, 9.6673),
depth = c(0.48073, 0.33281, 0.33281), salinity = c(37.607,
37.662, 37.672)), .Names = c("dates", "temperature", "depth",
"salinity"), row.names = c(NA, -3L), class = "data.frame")
x <- xts(d[,-1], as.POSIXct(d[,1], format="%m/%d/%Y %H:%M"))
apply.daily(x, colMeans)
#                     temperature     depth salinity
# 2012-12-03 12:26:00    9.695967 0.3821167   37.647
``````
-
Thank you very much for your answer. The advantage is that with xts I can ask for weekly averages. I tried your code, I get some issues with my entire dataset so I try to fix it and I'll keep you in touch ! Thank you again ! – Doc Martin's Jul 16 '13 at 8:13
It's ok, day and month were just inverted (%m/%d >>> %d/%m). Thanks ! – Doc Martin's Jul 16 '13 at 8:20

I'd add the day, month and year into the data frame and then use `aggregate()`.

First convert your `date` column into a POSIXct objet:

``````d\$timestamp <- as.POSIXct(df\$dates,format = "%m/%d/%Y %H:%M",tz ="GMT")
``````

Then get the date (e.g. 12/03/2012) into a column called `Date`, try this:

``````d\$Date <- format(d\$timestamp,"%y-%m-%d",tz = "GMT")
``````

Next, aggregate by the date:

``````aggregate(cbind("temperature.mean" = temperature,
"salinty.mean" = salinity) ~ Date,
data = d,
FUN = mean)
``````

Similarly, you can get the month into a column (let's call it `M` for month), and then...

``````d\$M <- format(d\$timestamp,"%B",tz = "GMT")

aggregate(cbind("temperature.mean" = temperature,
"salinty.mean" = salinity) ~ M,
data = d,
FUN = mean)
``````

or if you want year-month

``````d\$YM <- format(d\$timestamp,"%y-%B",tz = "GMT")

aggregate(cbind("temperature.mean" = temperature,
"salinty.mean' = salinity) ~ YM,
data = d,
FUN = mean)
``````

If you have any NA values in your data, you may need to account for those:

``````aggregate(cbind("temperature.mean" = temperature,
"salinty.mean" = salinity) ~ YM,
data = d,
function(x) mean(x,na.rm = TRUE))
``````

Finally, if you want to average by week, you can do that as well. First generate the week number, and then use `aggregate()` again.

``````d\$W <- format(d\$timestamp,"%W",tz = "GMT")

aggregate(cbind("temperature.mean" = temperature,
"salinty.mean" = salinity) ~ W,
data = d,
function(x) mean(x,na.rm = TRUE))
``````

This version of week number defines week 1 as being the week with the first monday of the year. The weeks are from Monday to Sunday.

-
Your calls to `format` won't work. The `dates` column is not a `POSIXct` object. It's either a character or (more likely) a factor. – Joshua Ulrich Jul 15 '13 at 16:00
@JoshuaUlrich Noted. Fixed. – Andy Clifton Jul 15 '13 at 16:09
Thank you very much for your answer ! This works perfectly after a change I also did for answer 1 (day and month inverted, I guess it's a difference of country, cause in France we give the day before the month ;). Like I asked to Jdbaba, is there a way to calculate weekly averages with the library player like for the xts library ? – Doc Martin's Jul 16 '13 at 8:41
@DocMartin's see edit. – Andy Clifton Jul 16 '13 at 16:30
Ok nice ! Thank you very much ! – Doc Martin's Jul 17 '13 at 10:13

The package `hydroTSM` holds a multiple functions to creat annual and other summaries:

``````daily2annual(x, ...)
subdaily2annual(x, ...)
monthly2annual(x, ...)
annualfunction(x, FUN, na.rm = TRUE, ...)
``````
-

Yet, another method using plyr:

``````df <- structure(list(dates = c("12/03/2012 11:26", "12/03/2012 11:56",
"12/03/2012 12:26"), temperature = c(9.7533, 9.6673, 9.6673),
depth = c(0.48073, 0.33281, 0.33281), salinity = c(37.607,
37.662, 37.672)), .Names = c("dates", "temperature", "depth",
"salinity"), row.names = c(NA, -3L), class = "data.frame")

library(plyr)

# Change date to POSIXct
df\$dates <- with(d,as.POSIXct(dates,format="%m/%d/%Y %H:%M"))

# Make new variables, year and month
df <- transform(d,month=as.numeric(format(dates,"%m")),year=as.numeric(format(dates,"%Y")))

## According to year
ddply(df,.(year),summarize,meantemp=mean(temperature),meandepth=mean(depth),meansalinity=mean(salinity))
year meantemp meandepth meansalinity
1 2012 9.695967 0.3821167       37.647

## According to month
ddply(df,.(month),summarize,meantemp=mean(temperature),meandepth=mean(depth),meansalinity=mean(salinity))
month meantemp meandepth meansalinity
1    12 9.695967 0.3821167       37.647
``````
-
Thank you very much for your answer ! This works perfectly after a change I also did for answer 1 (day and month inverted, I guess it's a difference of country, cause in France we give the day before the month ;). Is there a way to calculate weekly averages with the library player like for the xts library ? – Doc Martin's Jul 16 '13 at 8:25