A self-contained introduction to adaptive inverse controlNow featuring a revised preface that emphasizes the coverage of both control systems and signal processing, this reissued edition of Adaptive Inverse Control takes a novel approach that is not available in any other book.Written by two pioneer
Adaptive Inverse Control: A Signal Processing Approach, Reissue Edition
β Scribed by Mohamed E. El?Hawary(eds.)
- Publisher
- Wiley-IEEE Press
- Year
- 2007
- Tongue
- English
- Leaves
- 520
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
A self-contained introduction to adaptive inverse control
Now featuring a revised preface that emphasizes the coverage of both control systems and signal processing, this reissued edition of Adaptive Inverse Control takes a novel approach that is not available in any other book.
Written by two pioneers in the field, Adaptive Inverse Control presents methods of adaptive signal processing that are borrowed from the field of digital signal processing to solve problems in dynamic systems control. This unique approach allows engineers in both fields to share tools and techniques. Clearly and intuitively written, Adaptive Inverse Control illuminates theory with an emphasis on practical applications and commonsense understanding. It covers: the adaptive inverse control concept; Weiner filters; adaptive LMS filters; adaptive modeling; inverse plant modeling; adaptive inverse control; other configurations for adaptive inverse control; plant disturbance canceling; system integration; Multiple-Input Multiple-Output (MIMO) adaptive inverse control systems; nonlinear adaptive inverse control systems; and more.
Complete with a glossary, an index, and chapter summaries that consolidate the information presented, Adaptive Inverse Control is appropriate as a textbook for advanced undergraduate- and graduate-level courses on adaptive control and also serves as a valuable resource for practitioners in the fields of control systems and signal processing.Content:
Chapter 1 The Adaptive Inverse Control Concept (pages 1β39):
Chapter 2 Wiener Filters (pages 40β58):
Chapter 3 Adaptive LMS Filters (pages 59β87):
Chapter 4 Adaptive Modeling (pages 88β110):
Chapter 5 Inverse Plant Modeling (pages 111β137):
Chapter 6 Adaptive Inverse Control (pages 138β159):
Chapter 7 Other Configurations for Adaptive Inverse Control (pages 160β208):
Chapter 8 Plant Disturbance Canceling (pages 209β257):
Chapter 9 System Integration (pages 258β269):
Chapter 10 Multiple?Input Multiple?Output (MIMO) Adaptive Inverse Control Systems (pages 270β302):
Chapter 11 Nonlinear Adaptive Inverse Control (pages 303β329):
Chapter 12 Pleasant Surprises (pages 330β338):
π SIMILAR VOLUMES
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