Stochastic processes are mathematical models of random phenomena
that evolve according to prescribed dynamics. Processes commonly
used in applications are Markov chains in discrete and continuous
time, renewal and regenerative processes, Poisson processes, and
Brownian motion. This volume gives an in-depth description of the
structure and basic properties of these stochastic processes. A
main focus is on equilibrium distributions, strong laws of large
numbers, and ordinary and functional central limit theorems for
cost and performance parameters. Although these results differ for
various processes, they have a common trait of being limit theorems
for processes with regenerative increments. Extensive examples and
exercises show how to formulate stochastic models of systems as
functions of a system s data and dynamics, and how to represent and
analyze cost and performance measures. Topics include stochastic
networks, spatial and space-time Poisson processes, queueing,
reversible processes, simulation, Brownian approximations, and
varied Markovian models.
The technical level of the volume is between that of
introductory texts that focus on highlights of applied stochastic
processes, and advanced texts that focus on theoretical aspects of
processes."
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