timeAverage | R Documentation |
Function to flexibly aggregate or expand data frames by different time periods, calculating vector-averaged wind direction where appropriate. The averaged periods can also take account of data capture rates.
timeAverage(
mydata,
avg.time = "day",
data.thresh = 0,
statistic = "mean",
type = "default",
percentile = NA,
start.date = NA,
end.date = NA,
interval = NA,
vector.ws = FALSE,
fill = FALSE,
progress = TRUE,
...
)
mydata |
A data frame containing a |
avg.time |
This defines the time period to average to. Can be
“sec”, “min”, “hour”, “day”, “DSTday”,
“week”, “month”, “quarter” or “year”. For much
increased flexibility a number can precede these options followed by a
space. For example, a timeAverage of 2 months would be Note that |
data.thresh |
The data capture threshold to use (%). A value of zero
means that all available data will be used in a particular period
regardless if of the number of values available. Conversely, a value of 100
will mean that all data will need to be present for the average to be
calculated, else it is recorded as |
statistic |
The statistic to apply when aggregating the data; default is
the mean. Can be one of “mean”, “max”, “min”,
“median”, “frequency”, “sum”, “sd”,
“percentile”. Note that “sd” is the standard deviation,
“frequency” is the number (frequency) of valid records in the period
and “data.cap” is the percentage data capture. “percentile”
is the percentile level (%) between 0-100, which can be set using the
“percentile” option — see below. Not used if |
type |
|
percentile |
The percentile level used when |
start.date |
A string giving a start date to use. This is sometimes
useful if a time series starts between obvious intervals. For example, for
a 1-minute time series that starts “2009-11-29 12:07:00” that needs
to be averaged up to 15-minute means, the intervals would be
“2009-11-29 12:07:00”, “2009-11-29 12:22:00” etc. Often,
however, it is better to round down to a more obvious start point e.g.
“2009-11-29 12:00:00” such that the sequence is then
“2009-11-29 12:00:00”, “2009-11-29 12:15:00” ...
|
end.date |
A string giving an end date to use. This is sometimes useful
to make sure a time series extends to a known end point and is useful when
|
interval |
The This option can sometimes be useful with |
vector.ws |
Should vector averaging be carried out on wind speed if
available? The default is |
fill |
When time series are expanded i.e. when a time interval is less
than the original time series, data are ‘padded out’ with |
progress |
Show a progress bar when many groups make up |
... |
Additional arguments for other functions calling
|
This function calculates time averages for a data frame. It also treats wind direction correctly through vector-averaging. For example, the average of 350 degrees and 10 degrees is either 0 or 360 - not 180. The calculations therefore average the wind components.
When a data capture threshold is set through data.thresh
it is
necessary for timeAverage
to know what the original time interval of
the input time series is. The function will try and calculate this interval
based on the most common time gap (and will print the assumed time gap to the
screen). This works fine most of the time but there are occasions where it
may not e.g. when very few data exist in a data frame or the data are monthly
(i.e. non-regular time interval between months). In this case the user can
explicitly specify the interval through interval
in the same format as
avg.time
e.g. interval = "month"
. It may also be useful to set
start.date
and end.date
if the time series do not span the
entire period of interest. For example, if a time series ended in October and
annual means are required, setting end.date
to the end of the year
will ensure that the whole period is covered and that data.thresh
is
correctly calculated. The same also goes for a time series that starts later
in the year where start.date
should be set to the beginning of the
year.
timeAverage
should be useful in many circumstances where it is
necessary to work with different time average data. For example, hourly air
pollution data and 15-minute meteorological data. To merge the two data sets
timeAverage
can be used to make the meteorological data 1-hour means
first. Alternatively, timeAverage
can be used to expand the hourly
data to 15 minute data - see example below.
For the research community timeAverage
should be useful for dealing
with outputs from instruments where there are a range of time periods used.
It is also very useful for plotting data using timePlot
. Often
the data are too dense to see patterns and setting different averaging
periods easily helps with interpretation.
Returns a data frame with date in class POSIXct
.
David Carslaw
See timePlot
that plots time series data and uses
timeAverage
to aggregate data where necessary.
## daily average values
daily <- timeAverage(mydata, avg.time = "day")
## daily average values ensuring at least 75 % data capture
## i.e. at least 18 valid hours
## Not run: daily <- timeAverage(mydata, avg.time = "day", data.thresh = 75)
## 2-weekly averages
## Not run: fortnight <- timeAverage(mydata, avg.time = "2 week")
## make a 15-minute time series from an hourly one
## Not run:
min15 <- timeAverage(mydata, avg.time = "15 min", fill = TRUE)
## End(Not run)
# average by grouping variable
## Not run:
dat <- importAURN(c("kc1", "my1"), year = 2011:2013)
timeAverage(dat, avg.time = "year", type = "site")
# can also retain site code
timeAverage(dat, avg.time = "year", type = c("site", "code"))
# or just average all the data, dropping site/code
timeAverage(dat, avg.time = "year")
## End(Not run)
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