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I'm learning R by analysing the results of a bike race and I'm having problems with the time data (how much a person took to finish the race).

The time data has the format "HH:MM:SS".

I tried converting it to posixct but it adds a date component to it. I also tried the chron package but it won't let me divide a number by a time object

One of the things I want to do is to calculate average speeds using this time, so I need to be able to divide distance by time.

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Convert it to seconds or smaller. The representation with hours and minutes is really just for presentation. –  Rhymoid Jan 23 '13 at 13:16
    
You might find the lubridate package helpful when working with dates. There's a PDF that describes the package called "Dates and Times Made Easy with lubridate" published in the Journal of Statistical Software. A quick search will turn it up. –  rrs Jan 23 '13 at 14:47
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3 Answers 3

The package chron has classes to deal with times, and the function to use is, wait for it, times(). Here is an example using typical times for running a standard marathon:

library(chron)
tms <- c("2:06:00", "3:34:30", "4:12:59")
x <- times(tms)

You now have a times object, representing fractions of a day.

str(x)
Class 'times'  atomic [1:3] 0.0875 0.149 0.1757
  ..- attr(*, "format")= chr "h:m:s"

You can perform speed calculations, but you will need to convert the class from dates to numeric with as.numeric.

dist <- 42.2
as.numeric(dist/x/24)
[1] 20.09524 11.80420 10.00856

And there you have it: speeds in km/h.

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I would use POSIXct for which you have by far the strongest support in base R, and add-on packages.

Whenever I use intra-daily data for which the day does not matter, I just add a base date of, say, January 1st of the current year. For all comparisons, differences, etc this washes out.

Also of note: as.numeric() of a POSIXct variable gets you back to normal numbers (of seconds.subseconds since the epoch) which is handy for both arithmetic and in case you need to store (in a db without datetime), or transfer to another system or languages. Everybody has floating point---and (fractional) seconds since epoch is easy. POSIXct gives you added benefits for formatting, sequences, differences, plotting, ...

Here is a little example:

R> txt <- c("08:09:10", "09:10:11", "10:11:12", "11:12:13")
R> times <- as.POSIXct(paste("2013-01-01", txt))
R> times
[1] "2013-01-01 08:09:10 CST" "2013-01-01 09:10:11 CST" 
+   "2013-01-01 10:11:12 CST" "2013-01-01 11:12:13 CST"
R> times - times[1]
Time differences in secs
[1]     0  3661  7322 10983
attr(,"tzone")
[1] ""
R> as.numeric(times - times[1])
[1]     0  3661  7322 10983
R> 
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What you are looking at is not really time, but an elapsed time. There are data types for elapsed time. In base R, the difftime class does this.

tms <- c("2:06:00", "3:34:30", "4:12:59", "08:09:10",
         "09:10:11", "10:11:12", "11:12:13")

ta <- as.difftime(tms)

which displays as

> ta
Time differences in hours
[1]  2.100000  3.575000  4.216389  8.152778  9.169722 10.186667 11.203611
attr(,"tzone")
[1] ""
> format(ta)
[1] " 2.100000 hours" " 3.575000 hours" " 4.216389 hours" " 8.152778 hours" " 9.169722 hours"
[6] "10.186667 hours" "11.203611 hours"

You can do math with this as well by converting to numeric.

> 42.2/as.numeric(ta)
[1] 20.095238 11.804196 10.008564  5.176150  4.602102  4.142670  3.766643

The lubridate package also has types that deal with elapsed time, specifically duration.

library("lubridate")
ti <- as.duration(as.difftime(tms))

which displays as

> ti
[1] 7560s (~2.1 hours)    12870s (~3.58 hours)  15179s (~4.22 hours)  29350s (~8.15 hours) 
[5] 33011s (~9.17 hours)  36672s (~10.19 hours) 40333s (~11.2 hours) 

and you can do math with is after converting to numeric (here, seconds rather than hours)

> 42.2/as.numeric(ti)
[1] 0.005582011 0.003278943 0.002780157 0.001437819 0.001278362 0.001150742 0.001046290
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