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gstat (version 1.1-5)

fit.StVariogram: Fit a spatio-temporal sample variogram to a sample variogram

Description

Fits a spatio-temporal variogram of a given type to spatio-temporal sample variogram.

Usage

fit.StVariogram(object, model, ...,  method = "L-BFGS-B",
	lower, upper, fit.method = 6, stAni=NA, wles)

Arguments

object

The spatio-temporal sample variogram. Typically output from variogramST

model

The desired spatio-temporal model defined through vgmST.

further arguments passed to optim. extractParNames provides the parameter structure of spatio-temporal variogram models that help to provide sensible upper and lower limits.

lower

Lower limits used by optim. If missing, the smallest well defined values are used (mostly near 0).

upper

Upper limits used by optim. If missing, the largest well defined values are used (mostly Inf).

method

fit method, pass to optim

fit.method

an integer between 0 and 13 determine the fitting routine (i.e. weighting of the squared residuals in the LSE). Values 0 to 6 correspond with the pure spatial version (see fit.variogram). See the details section for the meaning of the other values (partly experimental).

stAni

The spatio-temporal anisotropy that is used in the weighting. Might be missing if the desired spatio-temporal variogram model does contain a spatio-temporal anisotropy parameter (this might cause bad convergence behaviour). The default is NA and will be understood as identity (1 temporal unit = 1 spatial unit). As this only in very few cases a valid assumption, a warning is issued.

wles

Should be missing; only for backwards compatibility, wles = TRUE corresponds to fit.method = 1 and wles = FALSE corresponds to fit.method = 6.

Value

Returns a spatio-temporal variogram model, as S3 class StVariogramModel. It carries the temporal and spatial unit as attributes "temporal unit" and "spatial unit" in order to allow krigeST to adjust for different units. The units are obtained from the provided empirical variogram. Further attributes are the optim output "optim.output" and the always not weighted mean squared error "MSE".

Details

The following list summarizes the meaning of the fit.method argument which is essential a weighting of the squared residuals in the least-squares estimation. Please note, that weights based on the models gamma value might fail to converge properly due to the dependence of weights on the variogram estimate:

fit.method = 0

no fitting, however the MSE between the provided variogram model and sample variogram surface is calculated.

fit.method = 1

Number of pairs in the spatio-temporal bin: \(N_j\)

fit.method = 2

Number of pairs in the spatio-temporal bin divided by the square of the current variogram model's value: \(N_j/\gamma(h_j, u_j)^2\)

fit.method = 3

Same as fit.method = 1 for compatibility with fit.variogram but as well evaluated in R.

fit.method = 4

Same as fit.method = 2 for compatibility with fit.variogram but as well evaluated in R.

fit.method = 5

Reserved for REML for compatibility with fit.variogram, not yet implemented.

fit.method = 6

No weights.

fit.method = 7

Number of pairs in the spatio-temporal bin divided by the square of the bin's metric distance. If stAni is not specified, the model's parameter is used to calculate the metric distance across space and time: \(N_j/(h_j^2 + {\rm stAni}^2\cdot u_j^2)\)

fit.method = 8

Number of pairs in the spatio-temporal bin divided by the square of the bin's spatial distance. \(N_j/h_j^2\). Note that the 0 distances are replaced by the smallest non-zero distances to avoid division by zero.

fit.method = 9

Number of pairs in the spatio-temporal bin divided by the square of the bin's temporal distance. \(N_j/u_j^2\). Note that the 0 distances are replaced by the smallest non-zero distances to avoid division by zero.

fit.method = 10

Reciprocal of the square of the current variogram model's value: \(1/\gamma(h_j,u_j)^2\)

fit.method = 11

Reciprocal of the square of the bin's metric distance. If stAni is not specified, the model's parameter is used to calculate the metric distance across space and time: \(1/(h_j^2 + {\rm stAni}^2\cdot u_j^2)\)

fit.method = 12

Reciprocal of the square of the bin's spatial distance. \(1/h_j^2\). Note that the 0 distances are replaced by the smallest non-zero distances to avoid division by zero.

fit.method = 13

Reciprocal of the square of the bin's temporal distance. \(1/u_j^2\). Note that the 0 distances are replaced by the smallest non-zero distances to avoid division by zero.

See also Table 4.2 in the gstat manual for the original spatial version.

See Also

fit.variogram for the pure spatial case. extractParNames helps to understand the parameter structure of spatio-temporal variogram models.

Examples

Run this code
# NOT RUN {
# separable model: spatial and temporal sill will be ignored
# and kept constant at 1-nugget respectively. A joint sill is used.
# }
# NOT RUN {
separableModel <- vgmST("separable", 
                        method = "Nelder-Mead", # no lower & upper needed
                        space=vgm(0.9,"Exp", 123, 0.1),
                        time =vgm(0.9,"Exp", 2.9, 0.1),
                        sill=100)

data(vv)
separableModel <- fit.StVariogram(vv, separableModel,
                                  method="L-BFGS-B",
                                  lower=c(10,0,0.01,0,1),
                                  upper=c(500,1,20,1,200))
plot(vv, separableModel)
# }
# NOT RUN {
 # dontrun
# }

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