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I'm a beginner with R and have tried searching for data extraction for certain time periods but can't seem to find anything.

I have a time series of continuous data measured at 10 minute intervals for a period of five months. For simplicity's sake, the data is available in two columns as follows:

Timestamp   Temp.Diff
2/14/2011 19:00 -0.385
2/14/2011 19:10 -0.535
2/14/2011 19:20 -0.484
2/14/2011 19:30 -0.409
2/14/2011 19:40 -0.385
2/14/2011 19:50 -0.215

... And it goes on for the next five months. I have read the Timestamp column using as.POSIXct() into R.

Assuming that only certain times of the day are of interest to me, (e.g. from 12 noon to 3 PM), I would like either like to exclude the other hours of the day, OR just extract those 3 hours but still have the data flow sequentially (i.e. in a time series). I understand that you can easily subset data if you know the row numbers, but as this is a much larger dataset, is there a way to code R so it automatically recognises the time period I'm looking at?

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up vote 5 down vote accepted

You seem to know the basic idea, but are just missing the details. As you mentioned, we just transform the Timestamps into POSIX objects then subset.

lubridate Solution

The easiest way is probably with lubridate. First load the package:

library(lubridate)

Next convert the timestamp:

##*m*onth *d*ay *y*ear _ *h*our *m*inute
d = mdy_hm(dd$Timestamp)

Then we select what we want. In this case, I want any dates after 7:30pm (regardless of day):

dd[hour(d) == 19 & minute(d) > 30,]

Base R solution

First create an upper limit:

lower = strptime("2/14/2011 19:30","%m/%d/%Y %H:%M")

Next transform the Timestamps in POSIX objects:

d = strptime(dd$Timestamp, "%m/%d/%Y %H:%M")

Finally, a bit of dataframe subsetting:

dd[format(d,"%H:%M") > format(lower,"%H:%M"),]

Thanks to plannapus for this last part


Data for the above example:

dd = read.table(textConnection('Timestamp Temp.Diff
"2/14/2011 19:00" -0.385
"2/14/2011 19:10" -0.535
"2/14/2011 19:20" -0.484
"2/14/2011 19:30" -0.409
"2/14/2011 19:40" -0.385
"2/14/2011 19:50" -0.215'), header=TRUE)
share|improve this answer
    
This will only work for a specific day. I assume, the subsetting should be based on the time only (not on the day). – Sven Hohenstein Oct 15 '12 at 8:39
    
@SvenHohenstein Good point. Fixed now. – csgillespie Oct 15 '12 at 8:49
    
Otherwise your base solution worked with a tweak: dd[format(d,"%H:%M") < format(upper,"%H:%M") & format(d,"%H:%M")> format(lower,"%H:%M"),]. But your lubridate solution is obviously shorter and more readable now. – plannapus Oct 15 '12 at 8:51
    
@plannapus Thanks. I've added that to the answer. – csgillespie Oct 15 '12 at 8:57
    
This is great - Thank you so much! If I wish to look at periods crossing the boundary between two separate days, say for instance nightly data from 23:00 hrs to 05:00 hrs, I suppose I can apply the same type of formatting but with two sets of upper and lower limits instead? – lhmv Oct 16 '12 at 3:13

You can do this with easily with the time-based subsetting in the xts package. Assuming your data.frame is named Data:

library(xts)
x <- xts(Data$Temp.Diff, Data$Timestamp)
y <- x["T12:00/T15:00"]
# you need the leading zero if the hour is a single digit
z <- x["T09:00/T12:00"]
share|improve this answer
    
+1 one of the many places that xts shines – GSee Oct 15 '12 at 12:00
    
This is wonderful, thank you so much. – lhmv Nov 5 '12 at 16:46

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