variog {geoR} | R Documentation |
Compute Empirical Variograms
Description
Computes sample (empirical) variograms with options for the classical or robust
estimators. Output can be returned as a binned variogram
, a
variogram cloud
or a smoothed variogram
. Data
transformation (Box-Cox) is allowed.
“Trends” can be specified and are fitted by ordinary least
squares in which case the variograms are computed using the
residuals.
Usage
variog(geodata, coords = geodata$coords, data = geodata$data,
uvec = "default", breaks = "default",
trend = "cte", lambda = 1,
option = c("bin", "cloud", "smooth"),
estimator.type = c("classical", "modulus"),
nugget.tolerance, max.dist, pairs.min = 2,
bin.cloud = FALSE, direction = "omnidirectional", tolerance = pi/8,
unit.angle = c("radians","degrees"), angles = FALSE, messages, ...)
Arguments
geodata |
a list containing element |
coords |
an |
data |
a vector or matrix with data values.
If a matrix is provided, each column is regarded as one variable or realization.
Defaults to |
uvec |
a vector with values used to define the variogram binning. Only
used when |
breaks |
a vector with values to define the variogram binning. Only
used when |
trend |
specifies the mean part of the model.
See documentation of |
lambda |
values of the Box-Cox transformation parameter.
Defaults to |
option |
defines the output type: the options |
estimator.type |
|
nugget.tolerance |
a numeric value. Points which are separated by a distance less than this value are considered co-located. Defaults to zero. |
max.dist |
a numerical value defining the maximum distance for the variogram. Pairs of locations separated for distance larger than this value are ignored for the variogram calculation. If not provided defaults takes the maximum distance among all pairs of data locations. |
pairs.min |
a integer number defining the minimum numbers of
pairs for the bins.
For |
bin.cloud |
logical. If |
direction |
a numerical value for the directional (azimuth) angle. This
used to specify directional variograms. Default defines the
omnidirectional variogram. The value must be in the interval
|
tolerance |
numerical value for the tolerance angle, when
computing directional variograms. The value must be in the interval
|
unit.angle |
defines the unit for the specification of angles in
the two previous arguments. Options are |
angles |
Logical with default to |
messages |
logical. Indicates whether status messages should be printed on the screen (or output device) while the function is running. |
... |
arguments to be passed to the function |
Details
Variograms are widely used in geostatistical analysis for exploratory purposes, to estimate covariance parameters and/or to compare theoretical and fitted models against sample variograms.
Estimators
The two estimators currently implemented are:
-
classical (method of moments) estimator:
\gamma(h) = \frac{1}{2N_h} \sum_{i=1}^{N_h}[Y(x_{i+h}) - Y(x_i)]^2
Hawkins and Cressie's modulus estimator
\gamma(h) = \frac{[\frac{1}{N_h}\sum_{i=1}^{N_h}|Y(x_{i+h}) - Y(x_i)|^{\frac{1}{2}}]^4}{0.914 + \frac{0.988}{N_h}}
Defining the bins
The defaults
If arguments breaks
and uvec
are not provided, the
binning is defined as follows:
read the argument
max.dist
. If not provided it is set to the maximum distance between the pairs of points.the center of the bins are initially defined by the sequence
u = seq(0, max.dist, l = 13)
.the interval spanned by each bin is given by the mid-points between the centers of the bins.
If an vector is passed to the argument breaks
its elements are
taken as the limits of the bins (classes of distance) and the argument uvec
is ignored.
Variations on the default
The default definition of the bins is different for some particular
cases.
if there are coincident data locations the bins follows the default above but one more bin is added at the origin (distance zero) for the collocated points.
if the argument
nugget.tolerance
is provided the separation distance between all pairs in the interval[0, nugget.tolerance]
are set to zero. The first bin distance is set to zero (u[1] = 0
). The remaining bins follows the default.if a scalar is provided to the argument
uvec
the default number of bins is defined by this number.if a vector is provided to the argument
uvec
, its elements are taken as central points of the bins.
Value
An object of the class
variogram
which is a
list with the following components:
u |
a vector with distances. |
v |
a vector with estimated variogram values at distances given
in |
n |
number of pairs in each bin, if
|
sd |
standard deviation of the values in each bin. |
bins.lim |
limits defining the interval spanned by each bin. |
ind.bin |
a logical vector indicating whether the number of
pairs in each bin is greater or equal to the value in the argument
|
var.mark |
variance of the data. |
beta.ols |
parameters of the mean part of the model fitted by ordinary least squares. |
output.type |
echoes the |
max.dist |
maximum distance between pairs allowed in the variogram calculations. |
estimator.type |
echoes the type of estimator used. |
n.data |
number of data. |
lambda |
value of the transformation parameter. |
trend |
trend specification. |
nugget.tolerance |
value of the nugget tolerance argument. |
direction |
direction for which the variogram was computed. |
tolerance |
tolerance angle for directional variogram. |
uvec |
lags provided in the function call. |
call |
the function call. |
Author(s)
Paulo J. Ribeiro Jr. paulojus@leg.ufpr.br,
Peter J. Diggle p.diggle@lancaster.ac.uk.
References
Cressie, N.A.C (1993) Statistics for Spatial Data. New York: Wiley.
Further information on the package geoR can be found at:
http://www.leg.ufpr.br/geoR/.
See Also
variog4
for more on computation of
directional variograms,
variog.model.env
and variog.mc.env
for
variogram envelopes,
variofit
for variogram based
parameter estimation and
plot.variogram
for graphical output.
Examples
#
# computing variograms:
#
# binned variogram
vario.b <- variog(s100, max.dist=1)
# variogram cloud
vario.c <- variog(s100, max.dist=1, op="cloud")
#binned variogram and stores the cloud
vario.bc <- variog(s100, max.dist=1, bin.cloud=TRUE)
# smoothed variogram
vario.s <- variog(s100, max.dist=1, op="sm", band=0.2)
#
#
# plotting the variograms:
par(mfrow=c(2,2))
plot(vario.b, main="binned variogram")
plot(vario.c, main="variogram cloud")
plot(vario.bc, bin.cloud=TRUE, main="clouds for binned variogram")
plot(vario.s, main="smoothed variogram")
# computing a directional variogram
vario.0 <- variog(s100, max.dist=1, dir=0, tol=pi/8)
plot(vario.b, type="l", lty=2)
lines(vario.0)
legend("topleft", legend=c("omnidirectional", expression(0 * degree)), lty=c(2,1))