# R: How to handle times without dates?

I have data which includes `Date` as well as `Time enter` and `Time exit`. These latter two contain data like this: `08:02`, `12:02`, `23:45` etc.

I would like to manipulate the `Time eXXX` data - for example, substract `Time enter` from `Time exit` to work out duration, or plot the distributions of `Time enter` and `Time exit`, e.g. to see if most entries are before 10:00, or if most exits are after 17:00.

All the packages I've looked at require a date to precede the time, e.g. `01/02/2012 12:33`.

Is this possible, or should I simply append an identical date to every time for the sake of calculations? This seem a bit messy!

• Dec 11, 2021 at 12:50

Use the `"times"` class found in the chron package:

``````library(chron)

Enter <- c("09:12", "17:01")
Enter <- times(paste0(Enter, ":00"))

Exit <-  c("10:15", "18:11")
Exit <- times(paste0(Exit, ":00"))

Exit - Enter # durations

sum(Enter < "10:00:00") # no entering before 10am
mean(Enter < "10:00:00") # fraction entering before 10am

sum(Exit >  "17:00:00") # no exiting after 5pm
mean(Exit >  "17:00:00") # fraction exiting after 5pm

table(cut(hours(Enter), breaks = c(0, 10, 17, 24))) # Counts for indicated hours
## (0,10] (10,17] (17,24]
##      1       1       0

table(hours(Enter))  # Counts of entries each hour
## 9 17
## 1  1

stem(hours(Enter), scale = 2)
## The decimal point is at the |

##   9 | 0
##  10 |
##  11 |
##  12 |
##  13 |
##  14 |
##  15 |
##  16 |
##  17 | 0
``````

Graphics:

``````tab <- c(table(Enter), -table(Exit))  # Freq at each time.  Enter is pos; Exit is neg.
plot(times(names(tab)), tab, type = "h", xlab = "Time", ylab = "Freq")
abline(v = c(10, 17)/24, col = "red", lty = 2) # vertical red lines
abline(h = 0)  # X axis
``````

Thanks for the feedback and sorry for the confusion I have edited it a bit to clarify.

New Edit:

First, `chron` package and `strptime` with fixed format both work well as demonstrated in other answers. I just want to introduce `lubridate` a little bit since it's easier to use, and flexible with time format.

Example data

``````df <- data.frame(TimeEnterChar = c(rep("07:58", 10), "08:02", "08:03", "08:05", "08:10", "09:00"),
TimeExitChar  = c("16:30", "16:50", "17:00", rep("17:02", 10), "17:30", "18:59"),
stringsAsFactors = F)
``````

If all you want is to count how many entry time were later than 8:00, then you can compare the character directly. Below would should 5 entry time were later.

``````sum(df\$TimeEnterChar > "08:00")
``````

If you want more, personally, I like `lubridate` package when dealing with time data, especially timestamps with dates although it's not the focus of this post at all.

``````library(lubridate)
# Convert character to a "Period" class by lubridate, shows in form of H M S
df\$TimeEnterTime <- hm(df\$TimeEnterChar)
df\$TimeExitTime  <- hm(df\$TimeExitChar)

sum(df\$TimeEnterTime > hm("08:00"))
``````

You can still compare the time.

A little more about using them as numeric: I assume only minute-level time is wanted. Thus, I divided number of seconds by 60 to get number of minutes.

``````df\$DurationMinute <- as.numeric( df\$TimeExitTime - df\$TimeEnterTime )/60
hist(df\$DurationMinute, breaks = seq(500, 600, 5))

TimeEnterChar TimeExitChar TimeEnterTime TimeExitTime DurationMinute
1         07:58        16:30     7H 58M 0S   16H 30M 0S            512
2         07:58        16:50     7H 58M 0S   16H 50M 0S            532
3         07:58        17:00     7H 58M 0S    17H 0M 0S            542
4         07:58        17:02     7H 58M 0S    17H 2M 0S            544
5         07:58        17:02     7H 58M 0S    17H 2M 0S            544
6         07:58        17:02     7H 58M 0S    17H 2M 0S            544
``````

You can simply plot a histogram to see the distribution of time duration between entry and exit.

You can also look at the distribution of entry/exit time. But some effort is needed to convert the axis.

``````df\$TimeEnterNumMin <- as.numeric(df\$TimeEnterTime) / 60
df\$TimeExitNumMin  <- as.numeric(df\$TimeExitTime) / 60

hist(df\$TimeEnterNumMin, breaks = seq(0, 1440, 60), xaxt = 'n', main = "Whole by 1hr")
axis(side = 1, at = seq(0, 1440, 60), labels = paste0(seq(0, 24, 1), ":00"))

hist(df\$TimeEnterNumMin, breaks = seq(420, 600, 15), xaxt = 'n', main = "Morning by 15min")
axis(side = 1, at = seq(420, 600, 60), labels = paste0(seq(7, 10, 1), ":00"))
``````

I did not polish the plot, nor make the axis flexible. Please do based on your needs. Hopefully, it helps.

Below is old useless post: (no need to read. kept so that comments don't look weird)

Came across a similar issue and was inspired by this post. @G. Grothendieck and @David Arenburg provided great answers for transforming the time.

For comparison, I feel forcing the time into numeric helps. Instead of comparing `"11:22:33"` with `"9:00:00"`, comparing `as.numeric(hms("11:22:33"))` (which is `40953` seconds) and `as.numeric(hms("9:00:00"))` (`32400`) would be much easier.

``````as.numeric(hms("11:22:33")) > as.numeric(hms("9:00:00"))  &  as.numeric(hms("11:22:33")) < as.numeric(hms("17:00:00"))
[1] TRUE
``````

The above example shows 11:22:33 is between 9AM and 5PM.

To extract just time from the date or POSIXct object, `substr("2013-10-01 11:22:33 UTC", 12, 19)` should work, although it looks stupid to change a time object to string/character and back to time again.

Converting the time to numeric should work for plotting as @G. Grothendieck descirbed. You can convert the numbers back to time as needed for x axis labels.

• I don't see the point of your answer. `hms("11:22:33") > hms("9:00:00") & hms("11:22:33") < hms("17:00:00")` works nicely, why do you feel that wrapping each individual piece in `as.numeric` is better? Aug 20, 2018 at 15:05
• @Gregor You are absolutely right. I guess the reason why I did so initially was that I was thinking of converting it back to time format for plotting. Now I realize I can just use `hour(hms("11:22:33"))` instead of doing the math. Thanks! Aug 20, 2018 at 15:16
• I'd recommend deleting this answer. It doesn't seem to add anything useful---just distracts from the other answers. If I'm wrong and there is something useful here, then the answer should be edited to highlight that. Mar 28, 2019 at 16:52

Would something like that work?

``````SubstracTimes <-  function(TimeEnter, TimeExit){
(as.numeric(format(strptime(TimeExit, format ="%H:%M"), "%H")) +
as.numeric(format(strptime(TimeExit, format ="%H:%M"), "%M"))/60) -
(as.numeric(format(strptime(TimeEnter, format ="%H:%M"), "%H")) +
as.numeric(format(strptime(TimeEnter, format ="%H:%M"), "%M"))/60)
}
``````

Testing:

``````TimeEnter <- "08:02"
TimeExit <- "12:02"
SubstracTimes(TimeEnter, TimeExit)
> SubstracTimes(TimeEnter, TimeExit)
[1] 4
``````
• This works for adding/subtracting, and returns decimal hours (i.e. 3.5 rather than 3:30). For plotting, perhaps I could manually assign values to bins in order to plot frequency of enter against time. Mar 26, 2014 at 11:57
• Maybe provide some example dataset and explain exactly what you want to plot and what is the expected result Mar 26, 2014 at 12:01