Generates simulated realisations from a fitted Poisson point process model on a linear network.
# S3 method for lppm
simulate(object, nsim=1, ...,
new.coef=NULL,
progress=(nsim > 1),
drop=FALSE)A list of length nsim containing simulated point patterns
(objects of class "lpp") on the same linear network as the
original data used to fit the model.
The result also belongs to the class "solist", so that it can be
plotted, and the class "timed", so that the total computation
time is recorded.
Fitted point process model on a linear network.
An object of class "lppm".
Number of simulated realisations.
Logical flag indicating whether to print progress reports for the sequence of simulations.
New values for the canonical parameters of the model.
A numeric vector of the same length as coef(object).
Arguments passed to predict.lppm
to determine the spatial resolution of the image of the fitted intensity
used in the simulation.
Logical. If nsim=1 and drop=TRUE, the
result will be a point pattern, rather than a list
containing a point pattern.
Adrian Baddeley Adrian.Baddeley@curtin.edu.au
, Rolf Turner rolfturner@posteo.net
and Ege Rubak rubak@math.aau.dk
This function is a method for the generic function
simulate for the class "lppm" of fitted
point process models on a linear network.
Only Poisson process models are supported so far.
Simulations are performed by rpoislpp.
lppm,
rpoislpp,
simulate
fit <- lppm(unmark(chicago) ~ y)
simulate(fit)[[1]]
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