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I am new to R but have turned to it to solve a problem with a large data set I am trying to process. Currently I have a 4 columns of data (Y values) set against minute-interval timestamps (month/day/year hour:min) (X values) as below:

    timestamp          tr            tt         sr         st  
1   9/1/01 0:00   1.018269e+02   -312.8622   -1959.393   4959.828  
2   9/1/01 0:01   1.023567e+02   -313.0002   -1957.755   4958.935  
3   9/1/01 0:02   1.018857e+02   -313.9406   -1956.799   4959.938  
4   9/1/01 0:03   1.025463e+02   -310.9261   -1957.347   4961.095  
5   9/1/01 0:04   1.010228e+02   -311.5469   -1957.786   4959.078

The problem I have is that some timestamp values are missing - e.g. there may be a gap between 9/1/01 0:13 and 9/1/01 0:27 and such gaps are irregular through the data set. I need to put several of these series into the same database and because the missing values are different for each series, the dates do not currently align on each row.

I would like to generate rows for these missing timestamps and fill the Y columns with blank values (no data, not zero), so that I have a continuous time series.

I'm honestly not quite sure where to start (not really used R before so learning as I go along!) but any help would be much appreciated. I have thus far installed chron and zoo, since it seems they might be useful.


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Take a look at this question: stackoverflow.com/questions/16742725/adding-missing-rows –  Thomas May 28 '13 at 8:33
I actually found that earlier and must have closed the tab by accident before I could read it! I'll have a play with what they suggest. Thanks! :) –  James A May 28 '13 at 8:51
@Thomas If I load my data as follows: > # set Home directory > home = setwd(Sys.getenv("HOME")); > > # make path to the csv file > fpath = file.path(home, "Desktop", "at0901.csv"); > # read the csv file > at0901 = read.csv(fpath, header=TRUE); I then try to convert the 'timestamp' column to POSIXct values as per the post recommended, but get the following: ts$timestamp <- as.POSIXct(ts$timestamp, format="%m/%d/%y %H:%M") Error in ts$timestamp : object of type 'closure' is not subsettable Apologies for my cluelessness - I have been thrown this project with very prior coding knowledge! –  James A May 28 '13 at 11:05

2 Answers 2

up vote 6 down vote accepted

I think the easiest thing ist to set Date first as already described, convert to zoo, and then just set a merge:

df$timestamp<-as.POSIXct(df$timestamp,format="%m/%d/%y %H:%M")

df1.zoo<-zoo(df[,-1],df[,1]) #set date to Index

df2 <- merge(df1.zoo,zoo(,seq(start(df1.zoo),end(df1.zoo),by="min")), all=TRUE)

Start and end are given from your df1 (original data) and you are setting by - e.g min - as you need for your example. all=TRUE sets all missing values at the missing dates to NAs.

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This worked for me - I now have a complete time series with NAs for the missing Y values. Thank you so much! –  James A May 29 '13 at 6:03
# some made-up data
originaldf <- data.frame(timestamp=c("9/1/01 0:00","9/1/01 0:01","9/1/01 0:03","9/1/01 0:04"),
    tr = rnorm(4,0,1),
    tt = rnorm(4,0,1))

originaldf$minAsPOSIX <- as.POSIXct(originaldf$timestamp, format="%m/%d/%y %H:%M", tz="GMT")

# Generate vector of all minutes
ndays <- 1 # number of days to generate
minAsNumeric <- 60*60*24*243 + seq(0,60*60*24*ndays,by=60)

# convert those minutes to POSIX
minAsPOSIX <- as.POSIXct(minAsNumeric, origin="2001-01-01", tz="GMT")

# new df
newdf <- merge(data.frame(minAsPOSIX),originaldf,all.x=TRUE, by="minAsPOSIX")
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Superb, let me dig through that and see if I can understand what's going on and how I can modify it to do what I need. Looks clear (relatively speaking!). Thank you! –  James A May 28 '13 at 11:47
Great! If you find the answer helpful, I'd appreciate you accepting the answer by checking the gray mark to the left. All the best, -Thomas –  Thomas May 28 '13 at 11:57
This looks like it will work - no errors, just a few issues. I actually messed up the date format in my original post - it should be %y-%m-%d %H:%M. Regardless, I've edited the code to account for this, and the new timestamps are coming out a little wrong. For example, using data for 2009-01-01 to 2009-01-31 (January 1st to 31st 2009), I get the following as the result in 'newdf': 1 2009-09-01 00:00:00 <NA> NA NA NA NA - in other words, it is getting the timestamps confused (setting month from 01 to 09) and filling all of the columns with NA even when Y values should be available. –  James A May 29 '13 at 5:29
The code I'm using (trying to process data for all of January 2009) is: # set timestamps as POSIXct values at0901mod2$minAsPOSIX <- as.POSIXct(at0901mod2$timestamp, format="%y-%m-%d %H:%M", tz="") # Generate vector of all minutes ndays <- 31 # number of days to generate minAsNumeric <- 60*60*24*243 + seq(0,60*60*24*ndays,by=60) # convert those minutes to POSIX minAsPOSIX <- as.POSIXct(minAsNumeric, origin="2001-01-01", tz="") # new df newdf <- merge(data.frame(minAsPOSIX),at0901mod2,all.x=TRUE, by="minAsPOSIX") –  James A May 29 '13 at 5:55

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