I have a zoo object which consists of a timestamped (to the second) timeseries. The timeseries is irregular in that the time intervals between the values are not regularly spaced.
I would like to transform the irregularly spaced timeseries object into a regularly spaced one, where the time intervals between values is a constant - say 15 minutes, and are "real world" clock times.
Some sample data may help illustrate further
# Sample data 2011-05-05 09:30:04 101.32 2011-05-05 09:30:14 100.09 2011-05-05 09:30:19 99.89 2011-05-05 09:30:35 89.66 2011-05-05 09:30:45 95.16 2011-05-05 09:31:12 100.28 2011-05-05 09:31:50 100.28 2011-05-05 09:32:10 98.28
I'd like to aggregate them (using my custom function) for every specified time period (e.g. 30 second time bucket) such that the output looks like the table presented below.
The key is that I want to aggregate every 30 seconds by clock time NOT 30 seconds starting from my first observation time. Naturally, the first time bucket would be the first time bucket for which I have a recorded observation (i.e. row) in the data to be aggregated.
2011-05-05 09:30:00 101.32 2011-05-05 09:30:30 89.66 2011-05-05 09:31:00 100.28
In the example given, my custom aggregate function simply returns the first value in the 'set' of 'selected rows' to aggregate over.