# Moving average and moving quarterly data

I have a daily time series data and wish to construct a daily moving average and create a quarterly data frame. As an example the first data set (of the example data) should include daily data for the months January, February and March, while the second series should be February, March and April. Similarly, the last data set should be that of October, November and December. I wish to do this for the variables “tmpd, pm10median and so2median” in the sample data. How can I achieve this?

library(gamair)
data(chicago)
chicago\$date<-seq(from=as.Date("1987-01-01"), to=as.Date("2000-12-31"),length=5114)
data<- chicago[,c("date","tmpd", "pm10median", "so2median" )]
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What have you tried? –  agstudy Feb 2 '13 at 18:44
Well, to be honest nothing useful to solve the issue. I have tried to create moving average, with this: library(zoo) data\$rollmean <- rollmean(data\$tmpd, 2, fill = NA). But that is not my main concern. –  Meso Feb 2 '13 at 18:55

Using xts package , you can do something like this

library(xts)
dat.ts <- xts(x=data[,-1],                   ## create an xts object
order.by=as.Date(data[,1]))    ## coerce the index to date
dat.quart <- apply.quarterly(dat.ts,mean)    ## apply for each quarter

To show some rows:

tmpd pm10median  so2median
1987-03-31 33.60556         NA         NA
1987-06-30 62.19231         NA -0.3283393
1987-09-30 71.31522         NA -1.9137842
1987-12-31 41.09783         NA         NA
1988-03-31 27.06593         NA         NA
1988-06-30 60.48352         NA         NA
1999-09-30 71.01087   2.697414 -0.4532943
1999-12-31 42.86957   1.565251 -0.4035715
2000-03-31 34.74725  -4.704813  0.2392453
2000-06-30 59.07692         NA -0.5426823
2000-09-30 69.67391         NA -1.9221470
2000-12-31 36.59783         NA -0.2387025

UPDATE

It looks that the OP wants to split the Moving average series by quarter.

dat.ts <- xts(x=data[,-1],                   ## create an xts object
order.by=as.Date(data[,1]))    ## coerce the index to date
dat.m <- rollmean(dat.ts,k=2)                ## compute the MA
ep <- endpoints(dat.m, "quarters")           ## create an index
## this split the seriers by quarter
xx <- sapply(1:(length(ep) - 1), function(y) {
dat.m[(ep[y] + 1):ep[y + 1]]
})
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Thanks for that. But what I wish to have is running daily means for three consecutive months, not the quarterly mean. In essence I want to have 10 separate daily data for Jan-March, Feb-April, March-May etc until Oct -December. –  Meso Feb 2 '13 at 19:46
Just to understand, here in dat.ts(begin 1-Jan) , for Jan-March you will get how much values? –  agstudy Feb 2 '13 at 20:15
I will get 90 values (daily mean values corresponding to the three months). –  Meso Feb 2 '13 at 20:29
@user1754610 90 values..value1= mean(...?), value2 = mean(..?)? can you develop? –  agstudy Feb 2 '13 at 20:33
As an example the new values I want to get for tmpd for the first for days 1 to 5 are: NA 32.25, 33.00, 31.00 30.50, 36.00, 36.00,37.25. This results from the running average of 2 consecutive days of tmpd. –  Meso Feb 4 '13 at 8:13