Methods relying on square roots of the covariance matrix
Sequential method relying on square roots of the covariance matrix
RPsequential(phi, boxcox, back_steps, initial)
phi |
object of class |
boxcox |
the one or two parameters of the box cox transformation.
If not given, the globally defined parameters are used.
See |
back_steps |
Number of previous instances on which
the algorithm should condition.
If less than one then the number of previous instances
equals Default: |
initial |
First, N=(number of spatial points) * Default: |
RPsequential
is programmed for spatio-temporal models
where the field is modelled sequentially in the time direction
conditioned on the previous k instances.
For k=5 the method has its limits for about 1000 spatial
points. It is an approximative method. The larger k the
better.
It also works for certain grids where the last dimension should
contain the highest number of grid points.
RPsequential
returns an object of class RMmodel
.
Martin Schlather, schlather@math.uni-mannheim.de, https://www.wim.uni-mannheim.de/schlather/
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.
RFoptions(seed=0) ## *ANY* simulation will have the random seed 0; set ## RFoptions(seed=NA) to make them all random again model <- RMgauss(var=10, s=10) + RMnugget(var=0.01) plot(model, xlim=c(-25, 25)) z <- RFsimulate(model=RPsequential(model), 0:10, 0:10, n=4) plot(z)
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