Learn R Programming

RandomFields (version 3.1.12)

RMwhittlematern: Whittle-Matern Covariance Model

Description

RMmatern is a stationary isotropic covariance model belonging to the Matern family. The corresponding covariance function only depends on the distance $r \ge 0$ between two points.

The Whittle model is given by $$C(r)=W_{\nu}(r)=2^{1- \nu} \Gamma(\nu)^{-1}r^{\nu}K_{\nu}(r)$$ where $\nu > 0$ and $K_\nu$ is the modified Bessel function of second kind.

The Matern model is given by $$C(r) = \frac{2^{1-\nu}}{\Gamma(\nu)} (\sqrt{2\nu}r)^\nu K_\nu(\sqrt{2\nu}r)$$

Usage

RMwhittle(nu, notinvnu, var, scale, Aniso, proj)

RMmatern(nu, notinvnu, var, scale, Aniso, proj)

Arguments

nu
a numerical value called smoothness parameter; should be greater than 0.
notinvnu
logical, if not given the model is defined as above. (default). See the Notes.
var,scale,Aniso,proj
optional arguments; same meaning for any RMmodel. If not passed, the above covariance function remains unmodified.

Value

  • The function return an object of class RMmodel

Details

RMwhittle and RMmatern are two alternative parametrizations of the same covariance function. The Matern model should be preferred as this model seperates the effects of scaling parameter and the shape parameter.

This Whittle-Matern model is the model of choice if the smoothness of a random field is to be parametrized: the sample paths of a Gaussian random field with this covariance structure are $m$ times differentiable if and only if $\nu > m$ (see Gelfand et al., 2010, p. 24).

Furthermore, the fractal dimension (see also RFfractaldim) D of the Gaussian sample paths is determined by $\nu$: we have $$D = d + 1 - \nu, \nu \in (0,1)$$ and $D = d$ for $\nu > 1$ where $d$ is the dimension of the random field (see Stein, 1999, p. 32).

If $\nu=0.5$ the Matern model equals RMexp.

For $\nu$ tending to $\infty$ a rescaled Gaussian model RMgauss appears as limit of the Matern model.

For generalisations see section seealso.

References

Covariance function
  • Chiles, J.-P. and Delfiner, P. (1999)Geostatistics. Modeling Spatial Uncertainty.New York: Wiley.
  • Gelfand, A. E., Diggle, P., Fuentes, M. and Guttorp, P. (eds.) (2010)Handbook of Spatial Statistics.Boca Raton: Chapman & Hall/CRL.
  • Guttorp, P. and Gneiting, T. (2006) Studies in the history of probability and statistics. XLIX. On the Matern correlation family.Biometrika93, 989--995.
  • Handcock, M. S. and Wallis, J. R. (1994) An approach to statistical spatio-temporal modeling of meteorological fields.JASA89, 368--378.
  • Stein, M. L. (1999)Interpolation of Spatial Data -- Some Theory for Kriging.New York: Springer.

Tail correlation function (for $\nu \in (0,1/2]$)

  • Strokorb, K., Ballani, F., and Schlather, M. (2014) Tail correlation functions of max-stable processes: Construction principles, recovery and diversity of some mixing max-stable processes with identical TCF.Extremes,Submitted.

See Also

Examples

Run this code
RFoptions(seed=0) ## *ANY* simulation will have the random seed 0; set
##                   RFoptions(seed=NA) to make them all random again
StartExample()
x <- seq(0, 1, len=100)
model <- RMwhittle(nu=1, Aniso=matrix(nc=2, c(1.5, 3, -3, 4)))
plot(model, dim=2, xlim=c(-1,1))
z <- RFsimulate(model=model, x, x)
plot(z)
FinalizeExample()

Run the code above in your browser using DataLab