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I have an hourly weather data in the following format:

Date,DBT
01/01/2000 01:00,30
01/01/2000 02:00,31
01/01/2000 03:00,33
...
...
12/31/2000 23:00,25

What I need is a daily aggregate of max, min, ave like this:

Date,MaxDBT,MinDBT,AveDBT
01/01/2000,36,23,28
01/02/2000,34,22,29
01/01/2000,32,25,30
...
...
12/31/2000,35,9,20

How to do this in R?

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6  
next time, provide the data tables in a readible format, eg using dput() or giving runnable code that provides the data as I showed in my answer. –  Joris Meys Mar 4 '11 at 23:51

3 Answers 3

up vote 14 down vote accepted

1) This can be done compactly using zoo:

L <- "Date,DBT
01/01/2000 01:00,30
01/01/2000 02:00,31
01/01/2000 03:00,33
12/31/2000 23:00,25"

library(zoo)
stat <- function(x) c(min = min(x), max = max(x), mean = mean(x))
z <- read.zoo(text = L, header = TRUE, sep = ",", format = "%m/%d/%Y", aggregate = stat)

This gives:

> z
           min max     mean
2000-01-01  30  33 31.33333
2000-12-31  25  25 25.00000

2) here is a solution that only uses core R:

DF <- read.csv(text = L)
DF$Date <- as.Date(DF$Date, "%m/%d/%Y")
aggregate(DBT ~ Date, DF, stat) # same stat as in zoo solution 

The last line gives:

        Date  DBT.min  DBT.max DBT.mean
1 2000-01-01 30.00000 33.00000 31.33333
2 2000-12-31 25.00000 25.00000 25.00000

EDIT: (1) Since this first appeared the text= argument to read.zoo was added in the zoo package. (2) minor improvements.

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@Grothendieck : +1 I never realized you could just drop the hourly information by not specifying it in the as.Date(). –  Joris Meys Mar 6 '11 at 22:51

Using strptime(), trunc() and ddply() from the plyr package :

#Make the data
ZZ <- textConnection("Date,DBT
01/01/2000 01:00,30
01/01/2000 02:00,31
01/01/2000 03:00,33
12/31/2000 23:00,25")
dataframe <- read.csv(ZZ,header=T)
close(ZZ)

# Do the calculations
dataframe$Date <- strptime(dataframe$Date,format="%m/%d/%Y %H:%M")
dataframe$day <- trunc(dataframe$Date,"day")

require(plyr)

ddply(dataframe,.(day),
      summarize,
      aveDBT=mean(DBT),
      maxDBT=max(DBT),
      minDBT=min(DBT)
)

gives

         day   aveDBT maxDBT minDBT
1 2000-01-01 31.33333     33     30
2 2000-12-31 25.00000     25     25

To clarify :

strptime converts the character to dates according to the format. To see how you can specify the format, see ?strptime. trunc will then truncate these date-times to the specified unit, which is day in this case.

ddply will evaluate the function summarize within the dataframe after splitting it up according to day. everything after summarize are arguments that are passed to the function summarize.

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1  
Do you really need the wrapper around summarize ? –  Sacha Epskamp Mar 4 '11 at 23:51
    
@Sacha : indeed, no need for that, thx for the correction. It's getting late here... –  Joris Meys Mar 5 '11 at 0:02

There is also a nice package called HydroTSM. It uses zoo objects and can convert to other aggregates in time

The function in your case is subdaily2daily. You can choose if the aggregation should be based on min / max / mean...

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