Iterative Learning Control for Deterministic Systems is part of the
new Advances in Industrial Control series, edited by Professor M.J.
Grimble and Dr. M.A. Johnson of the Industrial Control Unit, University
of Strathclyde. The material presented in this book addresses the
analysis and design of learning control systems. It begins with an
introduction to the concept of learning control, including a
comprehensive literature review. The text follows with a complete and
unifying analysis of the learning control problem for linear LTI systems
using a system-theoretic approach which offers insight into the nature
of the solution of the learning control problem. Additionally, several
design methods are given for LTI learning control, incorporating a
technique based on parameter estimation and a one-step learning control
algorithm for finite-horizon problems. Further chapters focus upon
learning control for deterministic nonlinear systems, and a time-varying
learning controller is presented which can be applied to a class of
nonlinear systems, including the models of typical robotic manipulators.
The book concludes with the application of artificial neural networks to
the learning control problem. Three specific ways to neural nets for
this purpose are discussed, including two methods which use
backpropagation training and reinforcement learning. The appendices in
the book are particularly useful because they serve as a tutorial on
artificial neural networks.