In this monograph the authors develop a theory for the robust control of
discrete-time stochastic systems, subjected to both independent random
perturbations and to Markov chains. Such systems are widely used to
provide mathematical models for real processes in fields such as
aerospace engineering, communications, manufacturing, finance and
economy. The theory is a continuation of the authors' work presented in
their previous book entitled "Mathematical Methods in Robust Control of
Linear Stochastic Systems" published by Springer in 2006.
Key features:
- Provides a common unifying framework for discrete-time stochastic
systems corrupted with both independent random perturbations and with
Markovian jumps which are usually treated separately in the control
literature;
- Covers preliminary material on probability theory, independent random
variables, conditional expectation and Markov chains;
- Proposes new numerical algorithms to solve coupled matrix algebraic
Riccati equations;
- Leads the reader in a natural way to the original results through a
systematic presentation;
- Presents new theoretical results with detailed numerical examples.
The monograph is geared to researchers and graduate students in advanced
control engineering, applied mathematics, mathematical systems theory
and finance. It is also accessible to undergraduate students with a
fundamental knowledge in the theory of stochastic systems.