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I would like to use R for time series analysis. I want to make a time-series model and use functions from the packages timeDate and forecast.

I have intraday data in the CET time zone (15 minutes data, 4 data points per hour). On March 31st daylight savings time is implemented and I am missing 4 data points of the 96 that I usually have. On October 28th I have 4 data points too many as time is switched back.

For my time series model I always need 96 data points, as otherwise the intraday seasonality gets messed up.

Do you have any experiences with this? Do you know an R function or a package that would be of help to automat such data handling - something elegant? Thank you!

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2 Answers 2

up vote 4 down vote accepted

I had a similar problem with hydrological data from a sensor. My timestamps were in UTC+1 (CET) and did not switch to daylight saving time (UTC+2, CEST). As I didn't want my data to be one hour off (which would be the case if UTC were used) I took the %z conversion specification of strptime(). In ?strptime you'll find:

%z Signed offset in hours and minutes from UTC, so -0800 is 8 hours behind UTC.

For example: In 2012, the switch from Standard Time to DST occured on 2012-03-25, so there is no 02:00 on this day. If you try to convert "2012-03-25 02:00:00" to a POSIXct-Object,

> as.POSIXct("2012-03-25 02:00:00", tz="Europe/Vienna")
[1] "2012-03-25 CET"

you don't get an error or a warning, you just get date without the time (this behavior is documented).

Using format="%z" gives the desired result:

> as.POSIXct("2012-03-25 02:00:00 +0100", format="%F %T %z", tz="Europe/Vienna")
[1] "2012-03-25 03:00:00 CEST"

In order to facilitate this import, I wrote a small function with appropriate defaults values:

as.POSIXct.no.dst <- function (x, tz = "", format="%Y-%m-%d %H:%M", offset="+0100", ...)
{
  x <- paste(x, offset)
  format <- paste(format, "%z")
  as.POSIXct(x, tz, format=format, ...)
}

> as.POSIXct.no.dst(c("2012-03-25 00:00", "2012-03-25 01:00", "2012-03-25 02:00", "2012-03-25 03:00"))
[1] "2012-03-25 00:00:00 CET"  "2012-03-25 01:00:00 CET"  "2012-03-25 03:00:00 CEST"
[4] "2012-03-25 04:00:00 CEST"
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1  
So, when you read in data with your function, you'll have the same number of data points for each day, whereas you wouldn't if you used as.POSIXct? I'm having trouble seeing how this helps. –  GSee Dec 13 '12 at 20:14
    
@GSee, you are absolutely right, my answer doesn't solve the problem of having different number of observations per day. But if @Richard is also interrested in a regular series, it might be helpful. For example: time <- paste("2012-10-", rep(27:29, each=24), " ", 0:23, ":00", sep=""). Importing with diff(as.POSIXct(time)) gives a irregular ts, whereas diff(as.POSIXct.no.dst(time)) gives a regular one. –  Tobias Dec 13 '12 at 22:29
    
Thanks for the answer, I will check it out and come back to you! –  Richard Dec 14 '12 at 9:25
    
In case you don’t need timezones at all, you should consider using the class POSIXlt instead with which you also end up having a regular time series diff(strptime(time, format="%F %H:%M")). I found the arcticle (page 29ff) in R-News 2004/1 helpful. link –  Tobias Dec 14 '12 at 14:10

If you don't want daylight saving time, convert to a timezone that doesn't have it (e.g. GMT, UTC).

times <- .POSIXct(times, tz="GMT")
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This does not help me. I want to look at intraday patterns that are triggered by local time. For example people go to work at 08:00 in the local time (this is CET in Winter and CEST in summer). Doing this I lose and win one hour respectively and I was wondering how people solve this. Thanks for the comment anyways. –  Richard Dec 14 '12 at 9:26

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