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Example Of Data

I have the following data that is a time series collection of rain gauge readings. The Time Stamp is each time the rain gauge makes an increased count, and the Volume is the amount of rain added to the bucket. I need to aggregate the data into a few different categories of Hourly, 6 Hours, daily, weekly on the total amount of rain added to the bucket. I tried using some of the other data aggregation methods posted around StachOverflow but they assume normal collection intervals. I am not very good with R so forgive me if this is a super easy edit to code that has already been posted.

I know the data is a snap shot from excel but that was just so it would format nicely for visual purpose in this forum because I can't figure out how to post a table

Attached is the CSV of the data

Data File Here

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It looks like you have one minute timestep. Why not fill the gaps with 0's and use one of the other methods you found? –  Matthew Plourde Apr 8 '13 at 19:10
    
Are you looking for rolling averages or the aggregates from some time-zero? You'll probably want to use some "Cumulative Sums" with tests to define where to break near 6 hours, etc. –  igelkott Apr 8 '13 at 19:11
    
Want to Sum the values, as for filling with zeros there are some with multiple measures per minute like 6:33 and 6:34 at the end. –  DanTheMan Apr 8 '13 at 19:19
1  
@DanTheMan aggregate those first, then fill the gaps. Duplicate timestamps would seem like a mistake anyway. Perhaps you want to consider if those duplicates should be dropped. –  Matthew Plourde Apr 8 '13 at 19:20
2  
See the zoo-read and zoo-faq vignettes in the zoo package for discussion of reading in data, aggregating and setting up a grid. Note that you will need read.zoo(..., aggregate = sum)` to take into account the non-unique times. –  G. Grothendieck Apr 8 '13 at 19:32

1 Answer 1

up vote 1 down vote accepted

An option is to use package Lubridate:

library(lubridate)
timeseries <- read.csv("project1.csv", sep=",", header=T, dec=".")
timeseries[,1] <- mdy_hm(timeseries[,1])

The dates have been converted into POSIXct, which is widely recognized in R. Next the dates are rounded to the nearest unit. The unit can be set to for instance: hours, days, months, etc. The rounded dates are stored in a new data.frame which is then joined with the original data.frame. The last step is to aggregate the values to the rounded dates.

rdate <- ceiling_date(x=timeseries[,1],unit="hour")
temp <- cbind(rdate,timeseries)
timeseries_hour <- aggregate(x=temp[3],by=list(temp[,1]),FUN=sum)

Part of the result:

head(timeseries_hour)
          Group.1 Ppt..Amount
1 1996-05-02 01:00:00        0.03
2 1996-05-02 02:00:00        0.02
3 1996-05-02 05:00:00        0.01
4 1996-05-02 06:00:00        0.04
5 1996-05-02 07:00:00        0.38
6 1996-05-02 08:00:00        0.13
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This would work but it is rounding hours down, so 1:04 and 1:19 are getting counted in the first hour when these are the 2nd hour. Need to figure out how to get it to not round down. Also "timeseries[,1] <- dmy_hm(timeseries[,1])" keeps erroring out. –  DanTheMan Apr 9 '13 at 18:43
    
you can try to use 'ceiling_date(x=timeseries[,1],unit="hour")' instead of 'round_date(x=timeseries[,1],unit="hour")'. Can you show what kind of error you get? –  Timror Apr 9 '13 at 20:25

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