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Creates a variogram plot
# S3 method for gstatVariogram
plot(x, model = NULL, ylim, xlim, xlab = "distance",
ylab = attr(x, "what"), panel = vgm.panel.xyplot, multipanel = TRUE,
plot.numbers = FALSE, scales, ids = x$id, group.id = TRUE, skip,
layout, ...)
# S3 method for variogramMap
plot(x, np = FALSE, skip, threshold, ...)
# S3 method for StVariogram
plot(x, model = NULL, ..., col = bpy.colors(), xlab, ylab,
map = TRUE, convertMonths = FALSE, as.table = TRUE, wireframe = FALSE,
diff = FALSE, all = FALSE)
object obtained from the method variogram, possibly containing directional or cross variograms, space-time variograms and variogram model information
in case of a single variogram: a variogram model, as obtained from vgm or fit.variogram, to be drawn as a line in the variogram plot; in case of a set of variograms and cross variograms: a list with variogram models; in the spatio-temporal case, a single or a list of spatio-temporal models that will be plotted next to each other for visual comparison.
numeric; vector of length 2, limits of the y-axis
numeric; vector of length 2, limits of the x-axis
character; x-axis label
character; y-axis label
panel function
logical; if TRUE, directional variograms are plotted in different panels, if FALSE, directional variograms are plotted in the same graph, using color, colored lines and symbols to distinguish them
logical or numeric; if TRUE, plot number of point pairs next to each plotted semivariance symbol, if FALSE these are omitted. If numeric, TRUE is assumed and the value is passed as the relative distance to be used between symbols and numeric text values (default 0.03).
optional argument that will be passed to xyplot
in
case of the plotting of variograms and cross variograms; use the value
list(relation = "same")
if y-axes need to share scales
ids of the data variables and variable pairs
logical; control for directional multivariate variograms: if TRUE, panels divide direction and colors indicate variables (ids), if FALSE panels divide variables/variable pairs and colors indicate direction
logical; can be used to arrange panels, see xyplot
integer vector; can be used to set panel layout: c(ncol,nrow)
logical (only for plotting variogram maps); if TRUE, plot number of point pairs, if FALSE plot semivariances
semivariogram map values based on fewer point pairs than threshold will not be plotted
any arguments that will be passed to the panel plotting functions
(such as auto.key
in examples below)
colors to use
logical; if TRUE, plot space-time variogram map
logical; if TRUE, yearmon
time lags will
be unit converted and plotted as (integer) months, and no longer match the
numeric representation of yearmon
, which has years as unit
controls the plotting order for multiple panels, see xyplot
for details.
logical; if TRUE, produce a wireframe plot
logical; if TRUE, plot difference between model and sample variogram; ignores all
.
logical; if TRUE, plot sample and model variogram(s) in single wireframes.
returns (or plots) the variogram plot
Please note that in the spatio-temporal case the levelplot and wireframe plots use the spatial distances averaged for each time lag avgDist
. For strongly varying spatial locations over time, please check the distance columns dist
and avgDist
of the spatio-temporal sample variogram. The lattice::cloud
function is one option to plot irregular 3D data.
# NOT RUN {
library(sp)
data(meuse)
coordinates(meuse) = ~x+y
vgm1 <- variogram(log(zinc)~1, meuse)
plot(vgm1)
model.1 <- fit.variogram(vgm1,vgm(1,"Sph",300,1))
plot(vgm1, model=model.1)
plot(vgm1, plot.numbers = TRUE, pch = "+")
vgm2 <- variogram(log(zinc)~1, meuse, alpha=c(0,45,90,135))
plot(vgm2)
# the following demonstrates plotting of directional models:
model.2 <- vgm(.59,"Sph",926,.06,anis=c(0,0.3))
plot(vgm2, model=model.2)
g = gstat(NULL, "zinc < 200", I(zinc<200)~1, meuse)
g = gstat(g, "zinc < 400", I(zinc<400)~1, meuse)
g = gstat(g, "zinc < 800", I(zinc<800)~1, meuse)
# calculate multivariable, directional variogram:
v = variogram(g, alpha=c(0,45,90,135))
plot(v, group.id = FALSE, auto.key = TRUE) # id and id pairs panels
plot(v, group.id = TRUE, auto.key = TRUE) # direction panels
# variogram maps:
plot(variogram(g, cutoff=1000, width=100, map=TRUE),
main = "(cross) semivariance maps")
plot(variogram(g, cutoff=1000, width=100, map=TRUE), np=TRUE,
main = "number of point pairs")
# }
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