Dismiss
Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

# Truncate zoo time series to nearest 10 minutes

I have a zoo time series as follows:

``````>> head(ww)
(11/22/08 11:37:00) (11/22/08 12:07:00) (11/22/08 12:22:00) (11/22/08 12:37:00)
0.087114            0.055422            0.055250            0.059483
(11/22/08 12:52:00) (11/22/08 13:07:00)
0.057896            0.061808
``````

As you can see, the times are 11:37, 12:07, 12:22 etc. I would like to change these times to the nearest whole multiple of ten minutes - for example XX:10, XX:20. In this case 11:37 would become 11:40, 12:07 would become 12:10 and 12:22 would become 12:20.

I have found the how to aggregate it to the nearest minute:

``````wholemin <- function(x) trunc(x, units="minutes")
result = aggregate(r, wholemin, head, 1)
``````

But I can't use `trunc` to aggregate to anything other than seconds, minutes, hours etc.

How should I go about doing this?

For ease of examples, the output of `dput(head(ww)` is below:

``````structure(c(0.087114, 0.055422, 0.05525, 0.059483, 0.057896,
0.061808), index = structure(c(14205.4840277778, 14205.5048611111,
14205.5152777778, 14205.5256944444, 14205.5361111111, 14205.5465277778
), format = structure(c("m/d/y", "h:m:s"), .Names = c("dates",
"times")), origin = structure(c(1, 1, 1970), .Names = c("month",
"day", "year")), class = c("chron", "dates", "times")), class = "zoo")
``````
-

``````to10 <- function(tt) trunc(tt + as.numeric(times("00:05:00")), units = "00:10:00")
and see the examples in `?trunc.times` and `?aggregate.zoo` .
Thanks. That's what I was looking for. You might want to point out that `read.zoo()` takes everything as factors by default, so casting the data to be numeric really helps. – Alexander Janssen Mar 18 '13 at 18:54
Not for me. For example this gives me numeric data and index: `str(read.zoo(text = "1 1"))` . – G. Grothendieck Mar 18 '13 at 20:48