# R: Using several criteria for the Aggregate function

I am searching for a solution how to use the aggregate function to sum up a column given several criteria in other columns. R should select a range in a column and executean operation in the same rows considering the value from another row.

The practical problem I am trying to solve is following: I got a list of electricity load measured every 15 minutes of a the day for every day over 2 years. It looks like this:

01-01-2010 00:00-00:15 1234

01-01-2010 00:15-00:30 2313

01-01-2010 ...

01-01-2010 23:30-23:45 2341

...

31-12-2011 23:30-23:45 2347

My aim is to compute the so called "Peak-Load" and the "Off-Peak-Load" The Peak is from 8 am to 8 pm. Off-Peak is the Opposite. So I want to calculate the Peak and Off-Peak for every day. Hence, I need aggregate for every day 8:00 to 20:00 and calculate the remaining load of the day.

I am also hap

best, F

-

I think your mental model of a heirarchy here is making this way too complicated. You don't have to subset by day and then by peak/off-peak. Just subset jointly.

Using `ddply`:

``````dat <- data.frame(date=rep(seq(5),5),time=runif(25),load=rnorm(25))
library(plyr)
dat\$peak <- dat\$time<.5

> ddply(dat, .(date,peak), function(x) mean(x\$load) )
date  peak           V1
1     1 FALSE -1.064166845
2     1  TRUE  0.172868201
3     2 FALSE  0.638594830
4     2  TRUE  0.045538051
5     3 FALSE  0.201264770
6     3  TRUE  0.054019462
7     4 FALSE  0.722268759
8     4  TRUE -0.490305933
9     5 FALSE  0.003411591
10    5  TRUE  0.628566966
``````

Using `aggregate`:

``````> aggregate(dat\$load, list(dat\$date,dat\$peak), mean )
Group.1 Group.2            x
1        1   FALSE -1.064166845
2        2   FALSE  0.638594830
3        3   FALSE  0.201264770
4        4   FALSE  0.722268759
5        5   FALSE  0.003411591
6        1    TRUE  0.172868201
7        2    TRUE  0.045538051
8        3    TRUE  0.054019462
9        4    TRUE -0.490305933
10       5    TRUE  0.628566966
``````

And just for the fun of it, benchmarks

First, using 5x5 entries as above:

``````> microbenchmark(
+   ddply(dat, .(date,peak), function(x) mean(x\$load) ),
+   )
Unit: milliseconds
expr      min       lq   median       uq      max
1 aggregate(dat\$load, list(dat\$date, dat\$peak), mean) 1.323438 1.376635 1.445769 1.549663 2.853348
2 ddply(dat, .(date, peak), function(x) mean(x\$load)) 4.057177 4.292442 4.386289 4.534728 6.864962
``````

Next using 500x500 entries

``````> m
Unit: milliseconds
expr      min       lq   median       uq      max
1 aggregate(dat\$load, list(dat\$date, dat\$peak), mean) 558.9524 570.7354 590.4633 599.4404 634.3201
2 ddply(dat, .(date, peak), function(x) mean(x\$load)) 317.7781 348.1116 361.7118 413.4490 503.8540
``````

50x50 benchmarks

``````n <- 50
dat\$peak <- dat\$time<.5

library(plyr)
library(microbenchmark)
library(data.table)
DT <- as.data.table(dat)
m <- microbenchmark(
That compares the two methods by repeating the same call 100 times (`microbenchmark`'s default is `times=100L`) on a 25 row data.frame. Not sure what you're saying. –  Matt Dowle May 18 '12 at 12:47
Cool. Since it's Friday, for fun, feel like adding this to the mix? `DT[,.Internal(mean(load)),keyby=list(date,peak)]`, where `DT=as.data.table(dat)` is done first outside timing. I've made the `.Internal` bit automatic in 1.8.1 (not yet committed) but with 1.8.0 on CRAN you have to write it manually (as per wiki item 3). –  Matt Dowle May 18 '12 at 13:34