interpolate time series of multiple tables

I want to lineary interpolate the colums "date", "time" and "temp" from an original 5 to an 1 second interval for multiple tables in R:

old:

``````date         time     temp
1 22.05.11 16:00:00 23.653
2 22.05.11 16:00:05 23.541
...
``````

new:

``````date         time     temp
1 22.05.11 16:00:00 23.653
2 22.05.11 16:00:01 23.631
3 22.05.11 16:00:02 23.609
...
``````

How can I do this? Thanks for any help.

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migrated from stats.stackexchange.comJun 29 '11 at 12:43

This question came from our site for people interested in statistics, machine learning, data analysis, data mining, and data visualization.

This is easy to do with `na.approx` and/or `na.spline` from the `zoo` package.

``````# example data
set.seed(21)
z <- zoo(23+runif(10), seq(Sys.time(),length.out=10,by=5))
# merge your data with an empty zoo object that has an index value for
# every period you're interested in.
y <- merge(z, zoo(order.by=seq(start(z), end(z), by=1)))
xa <- na.approx(y)
xs <- na.spline(y)
plot(merge(xa,xs))

# To convert your existing data.frame to a zoo object:
z <- zoo(Data\$temp,
as.POSIXct(paste(Data\$date, Data\$time), format="%d.%m.%y %H:%M:%S"))
y <- merge(z, zoo(order.by=seq(start(z), end(z), by=1)))
xa <- na.approx(y)
xs <- na.spline(y)
plot(merge(xa,xs))
# Convert back to data.frame
dfxa <- data.frame(date=format(index(xa), "%d.%m.%y"),
time=format(index(xa), "%H:%M:%S"), temp=coredata(xa))
``````
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z is a value here, while my data is a table, so i´m not quite sure how to implement that here... –  tomtomme Jun 29 '11 at 15:32
I added code to show you how to convert your data.frame (I doubt you're really using a `table` object) to a zoo object. –  Joshua Ulrich Jun 29 '11 at 16:02
Thank you very much! That worked great! –  tomtomme Jun 30 '11 at 10:19