Event-Based State Estimation: A Stochastic Perspective
Springer | Mathematics | December 21, 2015 | ISBN-10: 3319266047 | 208 pages | pdf | 4.06 mb
Springer | Mathematics | December 21, 2015 | ISBN-10: 3319266047 | 208 pages | pdf | 4.06 mb
by Dawei Shi (Author), Ling Shi (Author), Tongwen Chen (Author)
Treats both theoretical and practical aspects of event-triggered sampling and data scheduling
Provides know-how that can improve process energy efficiency and reduce communications costs
Uses extensive illustrative examples to help readers master new techniques
Offers a self-contained presentation, from a contextualized literature review to a discussion of open problems
From the Back Cover
This book explores event-based estimation problems. It shows how several stochastic approaches are developed to maintain estimation performance when sensors perform their updates at slower rates only when needed.
The self-contained presentation makes this book suitable for readers with no more than a basic knowledge of probability analysis, matrix algebra and linear systems. The introduction and literature review provide information, while the main content deals with estimation problems from four distinct angles in a stochastic setting, using numerous illustrative examples and comparisons. The text elucidates both theoretical developments and their applications, and is rounded out by a review of open problems.
This book is a valuable resource for researchers and students who wish to expand their knowledge and work in the area of event-triggered systems. At the same time, engineers and practitioners in industrial process control will benefit from the event-triggering technique that reduces communication costs and improves energy efficiency in wireless automation applications.
Number of Illustrations and Tables
5 illus., 32 in colour
Topics
Control
Probability Theory and Stochastic Processes
Power Electronics, Electrical Machines and Networks
Systems Theory, Control
More info and Hardcover at Springer
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