Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have an xts series with a year of precipitation data:

str(data_prec)
An ‘xts’ object from 2011-01-01 to 2011-12-31 23:55:00 containing:
  Data: num [1:105125, 1] 0 0 0 0 0 0 0 0 0 0 ...
  Indexed by objects of class: [POSIXct,POSIXt] TZ: 
  xts Attributes:  
List of 2
 $ tclass: chr [1:2] "POSIXct" "POSIXt"
 $ tzone : chr ""

Part of data looks like:

2011-12-15 05:15:00, 0
2011-12-15 05:20:00, 0
2011-12-15 05:25:00, 0.1
2011-12-15 05:30:00, 1.2
2011-12-15 05:31:00, 0.2
2011-12-15 05:32:00, 0.6
2011-12-15 05:33:00, 0.1
2011-12-15 05:35:00, 0.1
2011-12-15 05:36:00, 0
2011-12-15 05:37:00, 0.6
2011-12-15 05:40:00, 0
2011-12-15 05:45:00, 0
2011-12-15 05:50:00, 0.1

I need to have my data at each five minutes, by summing the previous data. I've tried to use aggregate, to.minutes5 and merge without success. I don't know what I'm doing wrong. This is the closest way I've reached:

align.time(period.sum(data_prec,endpoints(data_prec,"minutes",k=5)),300)

That gave me:

2011-12-15 05:15:00, 0
2011-12-15 05:20:00, 0
2011-12-15 05:25:00, 0      
2011-12-15 05:30:00, 0.1    
2011-12-15 05:35:00, 2.1    
2011-12-15 05:40:00, 0.7    
2011-12-15 05:45:00, 0
2011-12-15 05:50:00, 0      
2011-12-15 05:55:00, 0.1
2011-12-15 06:00:00, 0

This is what I'm looking for:

2011-12-15 05:15:00, 0
2011-12-15 05:20:00, 0
2011-12-15 05:25:00, 0.1
2011-12-15 05:30:00, 1.2
2011-12-15 05:35:00, 1.0
2011-12-15 05:40:00, 0.6
2011-12-15 05:45:00, 0
2011-12-15 05:50:00, 0.1
2011-12-15 05:55:00, 0
2011-12-15 06:00:00, 0

Thanks for any suggestion.

share|improve this question

1 Answer 1

up vote 2 down vote accepted

You aren't treating the times consistently. By design, the :00 of a minute is the start of that minute - e.g. 12:00:00 belongs to the 12:00:00 - 12:59:59.999999 range, aka 12th hour.

So you will need to move your times back a fraction of time to make it the way that I think you are expecting it to be. That said, your 'hoped for' result isn't consistent either (see the addition below my solution):

solution

.index(x) <- .index(x) - 1
align.time(period.sum(x, endpoints(x,"mins",k=5)))
                [,1]
2011-12-15 05:15:00  0.0
2011-12-15 05:20:00  0.0
2011-12-15 05:25:00  0.1
2011-12-15 05:30:00  1.2
2011-12-15 05:35:00  1.0
2011-12-15 05:40:00  0.6
2011-12-15 05:45:00  0.0
2011-12-15 05:50:00  0.1

your issue

sum(data_prec)  # the sample data you gave (well, not really gave in reproducible form)
[1] 3.0

# your addition
0.1 + 1.2 + 1 + 0.7 + .1
[1] 3.1

HTH

share|improve this answer
    
Thanks @Jeff_R, that's what I was looking for. Epic fail not sum right. Sorry! (I edited the question). –  Migue Jul 6 '12 at 0:20

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.