# How to create a chron sequence where time records are equally distributed (consistent delta t)

I have the following functions. `CreateChronVector` does exactly what it implies. The resulting vector is in hourly intervals by default. The `RoundHour` function rounds up a chron vector to the hour.

``````CreateChronVector  <-  function(chronFrom, chronTo, frequency = "hourly")  {
library(chron)
datesFrom <- dates(chronFrom)
timesFrom <- (chronFrom - dates(chronFrom))
datesTo <- dates(chronTo)
timesTo <- (chronTo - dates(chronTo))
if ((timesFrom != 0 || timesTo != 0) && frequency == "daily") {
print("Error: The indicated dates have hour components while the given frequency is daily.")
}
else {
if (timesTo == 0 && frequency == "hourly") {
timesTo <- 23/24
}
if (frequency == "hourly") {
chronFrom <- chron(dates = datesFrom, times = timesFrom,
format = c(dates = "m/d/y", times = "h:m:s"))
chronTo <- chron(dates = datesTo, times = timesTo,
format = c(dates = "m/d/y", times = "h:m:s"))
dateVector <- seq(chronFrom, chronTo, by = 1/24)
}
else if (frequency == "daily") {
dateVector <- seq(datesFrom, datesTo)
}
return(dateVector)
}
}

RoundHour  <- function(x)  {
res <-  trunc(x,'hours', eps=1e-17)
res <-  ifelse((x-res) > 0.5/24, res+1/24, res)
return(as.chron(res))
}
``````

The problem I'm facing is that the intervals are not consistent. As an example, the code below returns two different interval sizes:

``````unique(diff(CreateChronVector(as.chron('2010-01-01'), as.chron('2010-01-01'))))
``````

Similarly, using my rounding function does not correct the problem:

``````unique(diff(RoundHour(CreateChronVector(as.chron('2010-01-01'), as.chron('2010-01-01')))))
``````

I'm sure this problem has to do with round-off errors. I have been trying to play with the trunc function and its eps parameter, but no luck.

-
`chron` uses floating point so you can't really expect the intervals to be EXACTLY the same. The difference between the interval lengths will be negligibly small which should be good enough. –  G. Grothendieck Feb 25 '13 at 23:32
Do you need to use chron? In xts you can do all this very easily. –  Chinmay Patil Feb 26 '13 at 3:56
Thanks for the suggestion of xts @geektrader. I just printed the vignette. Looks pretty promising! –  JAponte Feb 27 '13 at 16:59
@geektrader, I tried xts. It looks like a pretty good time series class but unfortunately it coherts everything into an internal matrix, which doesn't support mixing types for different columns. I have some numeric columns and some categorical variables (characters) for categorization of outliers or different states of the system, etc. –  JAponte Mar 1 '13 at 14:16

Taking the point from @G. Grothendieck, you can see what he is talking about if you try this:

``````hours <- 1:23
dateVector <- sapply(hours , function(x){ chron( dates = "01/01/10" , times = paste0(x,":00:00") ) } )
[1] 14610.04166666666606034 14610.08333333333393966 14610.12500000000000000
[4] 14610.16666666666606034 14610.20833333333393966 14610.25000000000000000
unique(diff(dateVector))
[1] 0.04166666666787932626903 0.04166666666606033686548
``````

So you can't really do it because these numbers can't be represented exactly in floating point, but is there a reason this matters to you?

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I receive raw data from different sources with date/time values. I want to round up these to the hour to be able to merge them into the same data.frame and perform some time series analysis. When I round up the values, there is the possibility that we end up with missing records, which results in an irregular time series. That's why I first use CreateChronVector, to get a data.frame with all the required date/time values, which I then merge with the final result. But since there are subtle differences in the time value, the merge tends to duplicate time records. –  JAponte Feb 26 '13 at 14:55
@JAponte What format is your time data in? Is it as above? A numeric type specifying a number and fraction of days passed since an origin date? –  Simon O'Hanlon Feb 26 '13 at 18:40
it's in chron format. Your example fits well to my situation. I tried rounding the number of digits to 7, but I still have the same issue. `unique(diff(round(dateVector, 7)))` –  JAponte Feb 27 '13 at 21:28

You can use `xts` package. Once you have your data in `xts` object, you can use `align.time` function to "round up" time index. Almost all the timeseries analysis is very convenient in `xts`

PS: If you give reproducible example of your data I will update the answer with an example.

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Here is an example of my kind of data. I need to mix categorical and numeric variables in one data structure because I need to keep track of outliers and state of the system: `x<-xts(data.frame(A=1:24,B=letters[1:24]), chron(rep(0, 24), (0:23)/24))` –  JAponte Mar 1 '13 at 14:24
@Japonte why not convert categorical variables to numerical equivalent to do slicing and dicing of time series and then convert result back to data frame. –  Chinmay Patil Mar 1 '13 at 18:53