**1) ts.** Since this is a regularly spaced time series, convert it to a `ts`

series and then aggregate it from frequency 24 to frequency 1:

```
> aggregate(ts(x2[, 2], freq = 24), 1, mean)
```

giving:

```
Time Series:
Start = 1
End = 4
Frequency = 1
[1] 108.5 132.5 156.5 180.5
```

**2) zoo.** Here it is using zoo. The zoo package can also handle irregularly spaced series (if we needed to extend this). Below `day.hour`

is the day number (1, 2, 3, 4) plus the hour as a fraction of the day so that `floor(day.hour)`

is just the day number:

```
> library(zoo)
> day.hour <- seq(1, length = length(x2[, 2]), by = 1/24)
> z <- zoo(x2[, 2], day.hour)
> aggregate(z, floor, mean)
1 2 3 4
108.5 132.5 156.5 180.5
```

If `zz`

is the output then `coredata(zz)`

and `time(zz)`

are the values and times, respectively, as ordinary vectors.