simulate
can be used to generate simulated data sets and/or to simulate the state process.## S3 method for class 'pomp':
simulate(object, nsim = 1, seed = NULL, params,
states = FALSE, obs = FALSE, times, t0, \dots)
pomp
.nsim
times ncol(xstart)
.seed
.
the random seed to use.
The RNG will be restored to its original state afterward.params
is not given, then the contents of the params
slot of object
will be used, if they exitimes
specifies the times at which simulated observations will be made.
t0
specifies the start time (the time at which the initial conditions hold).
The default for times
is is times=time(object,t0=FALS
states=FALSE
and obs=FALSE
(the default), a list of nsim
pomp
objects is returned.
Each has a simulated data set, together with the parameters used (in slot params
) and the state trajectories also (in slot states
).
If times
is specified, then the simulated observations will be at times times
.
If nsim=1
, then a single pomp
object is returned (and not a singleton list). If states=TRUE
and obs=FALSE
, simulated state trajectories are returned as a rank-3 array with dimensions nvar
x (ncol(params)*nsim)
x ntimes
.
Here, nvar
is the number of state variables and ntimes
the length of the argument times
.
The measurement process is not simulated in this case.
If states=FALSE
and obs=TRUE
, simulated observations are returned as a rank-3 array with dimensions nobs
x (ncol(params)*nsim)
x ntimes
.
Here, nobs
is the number of observables.
If both states=TRUE
and obs=TRUE
, then a named list is returned.
It contains the state trajectories and simulated observations as above.
rprocess
and rmeasure
functions, respectively.
This makes it possible for the user to write highly optimized code for these potentially expensive computations.data(ou2)
x <- simulate(ou2,seed=3495485,nsim=10)
x <- simulate(ou2,seed=3495485,nsim=10,states=TRUE,obs=TRUE)
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