Linear Control Theory Linear Control Theory
Automation and Control Engineering

Linear Control Theory

Structure, Robustness, and Optimization

    • ¥34,800
    • ¥34,800

発行者による作品情報

Successfully classroom-tested at the graduate level, Linear Control Theory: Structure, Robustness, and Optimization covers three major areas of control engineering (PID control, robust control, and optimal control). It provides balanced coverage of elegant mathematical theory and useful engineering-oriented results.

The first part of the book develops results relating to the design of PID and first-order controllers for continuous and discrete-time linear systems with possible delays. The second section deals with the robust stability and performance of systems under parametric and unstructured uncertainty. This section describes several elegant and sharp results, such as Kharitonov’s theorem and its extensions, the edge theorem, and the mapping theorem. Focusing on the optimal control of linear systems, the third part discusses the standard theories of the linear quadratic regulator, Hinfinity and l1 optimal control, and associated results.

Written by recognized leaders in the field, this book explains how control theory can be applied to the design of real-world systems. It shows that the techniques of three term controllers, along with the results on robust and optimal control, are invaluable to developing and solving research problems in many areas of engineering.

ジャンル
職業/技術
発売日
2018年
10月3日
言語
EN
英語
ページ数
924
ページ
発行者
CRC Press
販売元
Taylor & Francis Group
サイズ
72.2
MB
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