# The hourly mean for a time series in R [duplicate]

Possible Duplicate:
The hourly mean in time series

I have a time series:

It is data that is measured every 30min, so I have 536 days with

``````n=25728.
``````

It is a `ts` with one column and `freq=48`. I would like to calculate the mean for every 30min.

So for example:

``````First 30min:
ts[1]+t[49]+t[97]+t[145]+.../536 days

Second 30min:
t[2]+t[50]+t[98]+..../536 days
``````

What is the best code?

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## marked as duplicate by GSee, Roman Luštrik, Paul Hiemstra, BenBarnes, JustinAug 22 '12 at 14:22

First, please post a reproducible version of your data or a sample of the data using `dput(mydata)`- it makes the question much easier to answer. Secondly, what code have you tried so far? – David Robinson Aug 21 '12 at 16:14
Reproducible data is especially important when the title says "hourly" and the question says "30min" – GSee Aug 21 '12 at 16:55

To achieve this effect you can use `aggregate` or `tapply`, see also:

Calculate monthly average of ts object

Some example code:

``````time_series = runif(72)
# Create a ts object
time_ts = ts(time_series, frequency = 24)
# Calculate the mean
> tapply(time_ts, cycle(time_ts), mean)
1         2         3         4         5         6         7         8
0.2954238 0.6791355 0.6113670 0.5775792 0.3614329 0.4414882 0.6206761 0.2079882
9        10        11        12        13        14        15        16
0.6238492 0.4069143 0.6333607 0.5254185 0.6685191 0.3629751 0.3715500 0.2637383
17        18        19        20        21        22        23        24
0.2730713 0.3170541 0.6053016 0.6550780 0.4031117 0.6857810 0.4492246 0.4795785
> aggregate(as.numeric(time_ts), list(hour = cycle(time_ts)), mean)
hour         x
1     1 0.2954238
2     2 0.6791355
3     3 0.6113670
4     4 0.5775792
``````
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