This unique book develops the application of experimental
statistical designs and analysis to discrete-event simulation
modeling. It takes a practical perspective and orients the reader
with examples of the role of simulation in modeling a system. The
stages and steps for applying simulation are discussed by focusing
on the important role of statistics. Examples are given about how
to design an experiment using techniques such as classical designs,
group screening, polynomial decomposition, and Taguchi designs.
Using the statistical techniques discussed, a sound simulation
model can be built and adequately tested before implementation.
The book also shows how simulation results can be generalized by
discussing in full the growing emphasis on simulation metamodeling.
Examples of this approach are presented to show that reliable and
simple models could be easily obtained. Furthermore, such models
are applied within a decision framework to optimize the system of
interest. This expands the power of simulation from being purely
descriptive of the system to being a prescriptive model. The reader
is exposed to potential problems and how such problems may be
harnessed. Although the book discusses statistical techniques, it
is written so as to be comprehensible to anyone with a basic
background in statistics. The book is a good resource for
consultants and simulation practitioners; it can also be used as a
textbook for classes in simulation.
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