Covariance Model for binary field based on Gaussian field
RMschlather
gives
the tail correlation function of the extremal Gaussian
process, i.e.
C(h) = 1 - √{ (1-φ(h)/φ(0)) / 2 }
where φ is the covariance of a stationary Gaussian field.
RMschlather(phi, var, scale, Aniso, proj)
This model yields the tail correlation function of the field
that is returned by RPschlather
.
RMschlather
returns an object of class RMmodel
.
Martin Schlather, schlather@math.uni-mannheim.de, https://www.wim.uni-mannheim.de/schlather/
RFoptions(seed=0) ## *ANY* simulation will have the random seed 0; set ## RFoptions(seed=NA) to make them all random again ## This example considers an extremal Gaussian random field ## with Gneiting's correlation function. ## first consider the covariance model and its corresponding tail ## correlation function model <- RMgneiting() plot(model, model.tail.corr.fct=RMschlather(model), xlim=c(0, 5)) ## the extremal Gaussian field with the above underlying ## correlation function that has the above tail correlation function x <- seq(0, 10, 0.1) z <- RFsimulate(RPschlather(model), x) plot(z) ## Note that in RFsimulate R-P-schlather was called, not R-M-schlather. ## The following lines give a Gaussian random field with correlation ## function equal to the above tail correlation function. z <- RFsimulate(RMschlather(model), x) plot(z)
Please choose more modern alternatives, such as Google Chrome or Mozilla Firefox.