This package contains various functions to be used for simulation education, including: simple Monte Carlo simulation functions; queueing simulation functions with optional animation; variate generation functions capable of producing independent streams and antithetic variates; separate functions for visualizing/animating (a) event-driven simulation details of a single-server queue model, (b) a Lehmer random-number generator, (c) random variate generation via acceptance-rejection, (d) generation of a non-homogeneous Poisson process via thinning, and (e) random variate generation for various discrete and continuous distributions; and functions to compute time-persistent statistics. The package also contains two queueing data sets (one fabricated, one real-world) to facilitate input modeling.
This is an example showing use of the ssq function in
our package to simulate a simple M/M/1 queue, passing in a custom
exponential interarrival function defined using our vexp
variate generator, and then plotting the number in the system across
time, with superimposed time-averaged statistics computed using
meanTPS and sdTPS:
## ssq example code
library(simEd)
myArrFcn <- function() { vexp(1, rate = 1 / 0.95, stream = 1) }
output <- ssq(maxArrivals = 100, seed = 8675309, interarrivalFcn = myArrFcn,
saveNumInSystem = TRUE, showOutput = FALSE)
avg <- meanTPS(output$numInSystemT, output$numInSystemN)
sd <- sdTPS(output$numInSystemT, output$numInSystemN)
plot(output$numInSystemT, output$numInSystemN, type = "s", main = "M/M/1 Queue",
bty = "l", las = 1, xlab = "time", ylab = "number in system")
abline(h = avg, lwd = 2, col = "red")
abline(h = c(avg - sd, avg + sd), lwd = 2, lty = "dotted", col = "red")Install the current version of simEd from CRAN using
install.packages("simEd").
Note that the simEd package depends on Josef Leydold’s
rstream package, a wrapper of Pierre L’Ecuyer’s “mrg32k3a”
random number generator, to provide independent streams of uniform(0,1)
random numbers. The simEd package also depends on the
shape package, used in producing animations. If either of
the rstream or shape package is not already
installed, the previous step will install them automatically.
The goal of this package is to facilitate use of R for an introductory course in discrete-event simulation.
This package contains animation functions for visualizing:
ssqvis;lehmer;accrej;thinning.This package contains variate generators capable of independent
streams (based on Josef Leydold’s rstream package) and
antithetic variates for four discrete and eleven continuous
distributions:
vbinom, vgeom,
vnbinom, vpois,vbeta, vcauchy,
vchisq, vexp, vgamma,
vlnorm, vlogis, vnorm,
vt, vunif, vweibullAll of the variate generators use inversion, and are therefore monotone and synchronized.
The package contains functions to visualize variate generation for the same four discrete and eleven continuous distributions:
ibinom, igeom,
inbinom, ipois,ibeta, icauchy,
ichisq, iexp, igamma,
ilnorm, ilogis, inorm,
it, iunif, iweibullThe package contains functions that implement Monte Carlo simulation approaches for estimating probabilities in two different dice games:
galileocrapsThe package also contains functions that are event-driven simulation implementations of a single-server single-queue system and of a multiple-server single-queue system:
ssqmsqBoth queueing functions are extensible in allowing the user to provide custom arrival and service process functions. Both functions provide animation.
The package contains four functions primarily for visualizing simulation concepts:
ssqvislehmeraccrejthinningThe package contains three functions for computing time-persistent statistics:
meanTPSsdTPSquantileTPSThe package also masks two functions from the stats
package:
set.seed, which explicitly calls the stats
version in addition to setting up seeds for the independent streams in
the package;sample, which provides capability to use independent
streams and antithetic variates.Finally, the package provides two queueing data sets to facilitate input modeling:
queueTrace, which contains 1000 arrival times and 1000
service times (all fabricated) for a single-server queueing system;tylersGrill, which contains 1434 arrival times and 110
(sampled) service times corresponding to actual data collected during
one business day at Tyler’s Grill at the University of Richmond.