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I have zoo objects that look like:

head(obs)

      Index pp
1932-01-01  0
1932-01-02  0.2
1932-01-03  0

and I want to split the index into 3 columns (years, months and days in separate columns) so I can do some analyses per day of month using ddply.

I don't know if it makes any difference but my dates were created using:

dates <- as.Date(CET[,1], "%d-%m-%Y")
obs <- xts(CET[,2], dates)

where CET is the original file with dates in column 1 and pp in column 2.

Thanks for helping!

share|improve this question
up vote 12 down vote accepted

1) columns. We can use lubridate's year/month/day or chron's month.day.year:

1a) columns via lubridate

library(zoo)
z <- zoo(1:1000, as.Date("1932-01-01") + 0:999)

library(lubridate)
tt <- time(z)
zz <- cbind(z, year = year(tt), month = month(tt), day = day(tt))

1b) columns via chron

library(zoo)
z <- zoo(1:1000, as.Date("1932-01-01") + 0:999)

library(chron)
zz <- with(month.day.year(time(z)), zoo(cbind(z, day, month, year)))

2) aggregate. However, we do not really need to create columns in the first place. We can just use aggregate.zoo directly with the original zoo object, z, using lubridate or chron or just using yearmon from zoo depending on what it is that you want to do:

2a) aggregate using lubridate

library(zoo)
z <- zoo(1:1000, as.Date("1932-01-01") + 0:999)

library(lubridate)
aggregate(z, day, mean)
aggregate(z, month, mean)
aggregate(z, year, mean)

2b) aggregate using chron

library(zoo)
z <- zoo(1:1000, as.Date("1932-01-01") + 0:999)

library(chron)
mdy <- month.day.year(time(z))

aggregate(z, mdy$day, mean)
aggregate(z, mdy$month, mean)
aggregate(z, mdy$year, mean)

# or
ct <- as.chron(time(z))

aggregate(z, days(ct), mean)
aggregate(z, months(ct), mean)
aggregate(z, years(ct), mean)

# days(ct) and years(ct) can actually
# be shortened to just days and years within the above context
# (and that would work for months too except they would be out of order)
aggregate(z, days, mean)
aggregate(z, years, mean)

2c) aggregate using yearmon

If we wish to summarize each year/month rather than lumping all January months together, all February months together, etc. then we need neither chron nor lubridate but rather can use zoo's yearmon:

library(zoo)
z <- zoo(1:1000, as.Date("1932-01-01") + 0:999)

aggregate(z, yearmon, mean)
share|improve this answer
dtstr <- as.character( index(CET))

CET$yr <- sapply(strsplit(dtstr, "-") , "[", 1)
CET$mon <- sapply(strsplit(dtstr, "-") , "[", 2)
CET$dt <- sapply(strsplit(dtstr, "-") , "[", 3)
share|improve this answer
    
thanks DWin, index(CET) doesn't work (Error: could not find function "Index") but changing to dtstr <- as.character( CET[,1]), works! – sbg Jul 1 '11 at 17:25
1  
Glad it got you where you need. Note: The function is spelled index, not Index – 42- Jul 1 '11 at 17:49

You can try:

CET$year <- format(CET[,1], "%Y") # year
CET$month <- format(CET[,1], "%m") # month
CET$day <- format(CET[,1], "%d") # day
share|improve this answer
1  
thanks but it doesn't work: Error in format.default(structure(as.character(x), names = names(x), dim = dim(x), : invalid 'trim' argument – sbg Jul 1 '11 at 16:45
2  
It seems like your dates were factors. You can use the str() function to make sure that you dates are actually dates. – Manuel Ramón Jul 1 '11 at 16:54
require(lubridate)
maindata1 <- cbind(maindata1, day=day(maindata1$Date), month=month(maindata1$date), year=year(maindata1$date))
share|improve this answer
1  
Please add some explanation about the code, and not just a code dump. – Bhargav Rao Nov 27 '15 at 10:27

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