vpts
)R base functions for inspecting a time series of vertical profiles (vpts
)
object.
# S3 method for vpts
summary(object, ...)is.vpts(x)
# S3 method for vpts
dim(x)
For is.vpts()
: TRUE
for an object of class vpts
, otherwise
FALSE
.
For dim.vpts()
: number of datetimes, heights and quantities in a
time series of vertical profiles (vpts
).
A vpts
object.
Additional arguments affecting the summary produced.
A vpts
object.
NA
: Maps to nodata
in the ODIM convention: value to denote areas void
of data (never radiated).
NaN
: Maps to undetect
in the ODIM convention: denote areas below the
measurement detection threshold (radiated but nothing detected). The value is
also used when there are too few datapoints to calculate a quantity.
0
: Maps to 0
in the ODIM convention: denote areas where the quantity
has a measured value of zero (radiated and value zero detected or inferred).
A time series of vertical profiles contains time-ordered vertical profiles
(vp)
of a single radar. This time series can be regular (vp
are
equally spaced in time) or irregular (time steps between vp
are of
unequal length), indicated in the field regular
. Irregular time series can
be projected onto a regular time grid with regularize_vpts()
. A time series
of vertical profile (vp
) object is a list containing:
radar
: Radar identifier.
datetime
: Nominal times of the profiles (named dates
in bioRad <
0.4.0) in UTC.
height
: Lowest height of the height bins in the profiles in m above sea
level.
daterange
: Minimum and maximum nominal time of the profiles in UTC.
timesteps
: Time differences between the profiles. Element i
gives the
difference between profile i
and i+1
.
data
: A list of quantities, each containing a datetime
by height
matrix with the values. Use get_quantity()
to access these and see
summary.vp()
for a description of available quantities.
attributes
: List of the vertical profile's what
, where
, and how
attributes, copied from the first profile.
regular
: Logical indicating whether the time series is regular or not.
bind_into_vpts()
read_vpts()
filter_vpts()
regularize_vpts()
example_vpts
get_quantity()
plot.vp()
as.data.frame.vpts()
[vpts()
# Check if an object is of class vpts
is.vpts(example_vpts)
# Get summary info
example_vpts # Same as summary(example_vpts) or print(example_vpts)
# Get dimensions
dim(example_vpts)
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