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RMmodel

Covariance and Variogram Models in RandomFields (RM commands)


Description

Summary of implemented covariance and variogram models

Details

To generate a covariance or variogram model for use within RandomFields, calls of the form

RM_name_(..., var, scale, Aniso, proj)

can be used, where _name_ has to be replaced by a valid model name.

  • ... can take model specific arguments.

  • var is the optional variance argument v,

  • scale the optional scale argument s,

  • Aniso an optional anisotropy matrix A or given by RMangle, and

  • proj is the optional projection.

With φ denoting the original model, the transformed model is C(h) = v * φ(A*h/s). See RMS for more details.

RM_name_ must be a function of class RMmodelgenerator. The return value of all functions RM_name_ is of class RMmodel.

The following models are available (cf. RFgetModelNames):

Basic stationary and isotropic models

RMcauchy Cauchy family
RMexp exponential model
RMgencauchy generalized Cauchy family
RMgauss Gaussian model
RMgneiting differentiable model with compact support
RMmatern Whittle-Matern model
RMnugget nugget effect model
RMspheric spherical model
RMstable symmetric stable family or powered exponential model
RMwhittle Whittle-Matern model, alternative parametrization

Variogram models (stationary increments/intrinsically stationary)

RMfbm fractal Brownian motion

Basic Operations

RMmult, * product of covariance models
RMplus, + sum of covariance models or variograms

Others

RMtrend trend
RMangle defines a 2x2 anisotropy matrix by rotation and stretch arguments.

Author(s)

References

  • Chiles, J.-P. and Delfiner, P. (1999) Geostatistics. Modeling Spatial Uncertainty. New York: Wiley.

  • Schlather, M. (1999) An introduction to positive definite functions and to unconditional simulation of random fields. Technical report ST 99-10, Dept. of Maths and Statistics, Lancaster University.

  • Schlather, M. (2011) Construction of covariance functions and unconditional simulation of random fields. In Porcu, E., Montero, J.M. and Schlather, M., Space-Time Processes and Challenges Related to Environmental Problems. New York: Springer.

  • Yaglom, A.M. (1987) Correlation Theory of Stationary and Related Random Functions I, Basic Results. New York: Springer.

  • Wackernagel, H. (2003) Multivariate Geostatistics. Berlin: Springer, 3nd edition.

See Also

RM for an overview over more advanced classes of models
RC, RF, RP, RR, R., RFcov, RFformula, RMmodelsAdvanced, RMmodelsAuxiliary, trend modelling

Examples

RFoptions(seed=0) ## *ANY* simulation will have the random seed 0; set
##                   RFoptions(seed=NA) to make them all random again

## an example of a simple model
model <- RMexp(var=1.6, scale=0.5) + RMnugget(var=0) #exponential + nugget
plot(model)

RandomFields

Simulation and Analysis of Random Fields

v3.3.10
GPL (>= 3)
Authors
Martin Schlather [aut, cre], Alexander Malinowski [aut], Marco Oesting [aut], Daphne Boecker [aut], Kirstin Strokorb [aut], Sebastian Engelke [aut], Johannes Martini [aut], Felix Ballani [aut], Olga Moreva [aut], Jonas Auel[ctr], Peter Menck [ctr], Sebastian Gross [ctr], Ulrike Ober [ctb], Paulo Ribeiro [ctb], Brian D. Ripley [ctb], Richard Singleton [ctb], Ben Pfaff [ctb], R Core Team [ctb]
Initial release

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