variogramST(formula, locations, data, ..., tlags = 0:15, cutoff,
width = cutoff/15, boundaries = seq(0, cutoff, width),
progress = interactive(), pseudo = TRUE, assumeRegular=FALSE, na.omit=FALSE)locations or data
must be provided.STFDF, STSDF or STIDF containing the variable.variogram function. In case of using data of type STIDF, the argument tunit is recommended to set the temporal unit of the tlags. Additionally, twindow can be passed to control the temporal window used for temporal distance calculations. This builds on the property of xts being ordered and only the next twindow instances are considered. This avoids the need of huge temporal distance matrices. The default uses twice the number as the average difference goes into the temporal cutoff.data is of class STIDF the actual temporal boundaries with time unit given by tunit otherwise the same unit as diff on the index of the time slot will generate is assumed.cutoff is divided into 15 equal lags.NA values in the spatio-temporal variogram be dropped? In case where complete rows or columns in the variogram consists of NA only, plot might produce a distorted picture.np, dist and gamma the spatio-temporal fields,
timelag, spacelag and avgDist, the first of which indicates the time lag
used, the second and third different spatial lags. spacelag is the midpoint in the spatial
lag intervals as passed by the parameter boundaries, whereas avgDist is the average
distance between the point pairs found in a distance interval over all temporal lags (i.e. the
averages of the values dist per temporal lag.) To compute variograms for space lag $h$ and
time lag $t$, the pseudo cross variogram $(Z_i(s)-Z_i+t(s+h))^2$ is averaged over all time
lagged observation sets $Z_i$ and $Z_i+t$ available (weighted by the number of pairs involved).
Cressie, N., C. Wikle, 2011, Statistics for Spatio-temporal Data, Wiley.
Pebesma, E.J., 2004. Multivariable geostatistics in S: the gstat package. Computers \& Geosciences, 30: 683-691.
plot.StVariogram,
for variogram models: vgmST,
to fit a spatio-temporal variogram model to a spatio-temporal sample variogram:
fit.StVariogram
# The following spatio-temporal variogram has been calcualted through
# vv = variogram(PM10~1, r5to10, width=20, cutoff = 200, tlags=0:5)
# in the vignette "st".
data(vv)
str(vv)
plot(vv)
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