how to convert by the minute data to hourly average data in R

I have one week of data with a reading every 5 seconds. An example of data is below.

``````9/1/2012 00:00:00    1
9/1/2012 00:00:05    2
9/1/2012 00:00:10    3
``````

I want to calculate the hourly average for each day. Then make a multi-line plot of "average hourly reading vs. hour" with lines representing different dates.

The one I have here is for weekly average

``````data\$date = as.POSIXct(strptime(data\$date,
format = "%d/%m/%Y %H:%M","GMT"))
means <- aggregate(data["nox"], format(data["date"],"%Y-%U"),
mean, na.rm = TRUE)
``````

For daily average, it is

``````data\$date = as.POSIXct(strptime(data\$date,
format = "%d/%m/%Y %H:%M","GMT"))
means <- aggregate(data["nox"], format(data["date"],"%Y-%j"),
mean, na.rm = TRUE)
``````

Any one knows how to calculate the hourly average for each day.

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migrated from stats.stackexchange.comSep 11 '12 at 4:39

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Somebody in another question wanted to know why I couldn't guess their object name and instead used 'dat'. In this instance I changed it to 'dat' because I refuse to use either 'data' or 'df' as dataframe names because they are both function names. –  BondedDust Sep 11 '12 at 5:36
–  naught101 Sep 11 '12 at 5:57
I've decided you should not pick my format answer and instead choose @mrdwad's answer (whatever it's deficiencies might be in formatting). The cut.POSIXt solution is much more flexible because it allows variable hour or minute intervals, eg, "15 mins". –  BondedDust Sep 11 '12 at 7:02

It would only require changing your format specification in the by-vector:

``````hr.means <- aggregate(dat["V1"], format(dat["date"],"%Y-%m-%d %H"),
mean, na.rm = TRUE)
hr.means
#---------
date V2
1 2012-01-09 00  2
``````
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I think that's supposed to be a `%H`, right? –  Ananda Mahto Sep 11 '12 at 5:18
Right you are... Guess I should have tested it. –  BondedDust Sep 11 '12 at 5:18

I like @DWin's answer, but I had also remembered seeing once a help file for `?cut.Date` which can also be used in this case. I've made up some data so you can see the results over a few hours:

``````set.seed(1)
data <- data.frame(date = seq(from = ISOdatetime(2012, 01, 01, 00, 00, 00),
length.out = 4320, by=5),
nox = sample(1:20, 4320, replace=TRUE))

hr.means <- aggregate(data["nox"],
list(hour = cut(data\$date, breaks="hour")),
mean, na.rm = TRUE)
hr.means
#                  hour      nox
# 1 2012-01-01 00:00:00 10.60694
# 2 2012-01-01 01:00:00 10.13194
# 3 2012-01-01 02:00:00 10.33333
# 4 2012-01-01 03:00:00 10.38194
# 5 2012-01-01 04:00:00 10.51111
# 6 2012-01-01 05:00:00 10.26944
``````
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I was expecting a longer set of labels than the format answer would produce but instead got shorter ones (and puzzling different than what you show). Not ideal IMO. –  BondedDust Sep 11 '12 at 5:43
I get with my example: 2012-01-09 ... (no hour or time designation at all.) With your example I get: 2012-01-01 00:00:00 (superfluous minutes and seconds) –  BondedDust Sep 11 '12 at 6:36
@DWin, when I run your code with my sample data, I get the same results, but the first column is named "`date`", and the first row looks like `1 2012-01-01 00 10.60694`. –  Ananda Mahto Sep 11 '12 at 6:40
@DWin, sorry, one more comment: yes, there are superfluous minutes and seconds in my output--that's from using `cut.Date` and is why I had said I like your answer more! ;-) –  Ananda Mahto Sep 11 '12 at 6:44
As noted above: I like yours better, now that I understand the true Power of the Cut. –  BondedDust Sep 11 '12 at 7:04