# [R+zoo]: Operations on time series with different temporal resolutions

I have two time series (sensor data) with different temporal resolutions. A time series from the class "xts / zoo" (TS1) includes hourly values and the other time series (TS2) has a better temporal resolution (one observation every 10 minutes). I.e. for TS1 I have 24 data points (observations) per day and for TS2 I have 144 data points per day.

When I calculate `TS1-TS2` for one day I get a result with 24 data points (low temporal resolution). What I would like to achieve is to obtain a result with 144 data points (as TS2, better temporal resolution).

Is it possible to achieve this in R?

P.S.:

That's no a trivial problem because in an hourly interval I just have one observation from TS1 and 6 observations from TS2, so I could imagine this problem can be solved if one draws a fit line between every two points of TS1 and calculate the difference between the line and the data points from TS2. But I know no R Function to do this.

-

You can approximate missing values using `na.approx` for linear/constant approx or na.spline for polynomial one.

``````## new index to be used
new.index <-
seq(min(index(TS1)),max(index(TS1)), by=as.difftime(10,units='mins'))
## linear approx
TS1.new  <- na.approx(merge(TS1 ,xts(NULL,new.index)))
``````

Now you can susbtract your ts, (even if maybe you should check that they have same start dates)

``````TS2-TS1.new
``````
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Or `na.locf` to use the same value for the whole of each hour, if linear interpolation feels wrong for your application. (And going the other way, `na.spline` tries to fit a curve instead of a straight line.) –  Darren Cook Nov 4 '13 at 23:56