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Issues of Fault Diagnosis for Dynamic Systems

  • Ron J. Patton
  • Paul M. Frank
  • Robert N. Clark

Table of contents

  1. Front Matter
    Pages I-XXV
  2. R. J. Patton, P. M. Frank, R. N. Clark
    Pages 1-13
  3. José Ragot, Didier Maquin, Frédéric Kratz
    Pages 51-85
  4. Dirk van Schrick, Peter C. Müller
    Pages 219-244
  5. M. Staroswiecki, J. P. Cassar, P. Declerck
    Pages 245-283
  6. Feza Kerestecioğlu, Martin B. Zarrop
    Pages 315-338
  7. Hong-Yue Zhang, Han-Guo Zhang, Jie Chen, Ron J. Patton, Bruce K. Walker
    Pages 435-460
  8. Kouamana Bousson, Jean-Philippe Steyer, Boutaib Dahhou, Louise Travé-Massuyès
    Pages 517-546
  9. E. B. Martin, A. J. Morris
    Pages 547-565
  10. Back Matter
    Pages 567-597

About this book

Introduction

Since the time our first book Fault Diagnosis in Dynamic Systems: The­ ory and Applications was published in 1989 by Prentice Hall, there has been a surge in interest in research and applications into reliable methods for diag­ nosing faults in complex systems. The first book sold more than 1,200 copies and has become the main text in fault diagnosis for dynamic systems. This book will follow on this excellent record by focusing on some of the advances in this subject, by introducing new concepts in research and new application topics. The work cannot provide an exhaustive discussion of all the recent research in fault diagnosis for dynamic systems, but nevertheless serves to sample some of the major issues. It has been valuable once again to have the co-operation of experts throughout the world working in industry, gov­ emment establishments and academic institutions in writing the individual chapters. Sometimes dynamical systems have associated numerical models available in state space or in frequency domain format. When model infor­ mation is available, the quantitative model-based approach to fault diagnosis can be taken, using the mathematical model to generate analytically redun­ dant alternatives to the measured signals. When this approach is used, it becomes important to try to understand the limitations of the mathematical models i. e. , the extent to which model parameter variations occur and the effect of changing the systems point of operation.

Keywords

Monitoring Normal Signal actor algorithms logic modeling sensor

Editors and affiliations

  • Ron J. Patton
    • 1
  • Paul M. Frank
    • 2
  • Robert N. Clark
    • 3
  1. 1.School of EngineeringUniversity of HullEast YorkshireUK
  2. 2.GH Duisberg, FB9/MRTGerhard-Mercator UniversitätDuisbergGermany
  3. 3.Department of Aeronautics and AstronauticsUniversity of WashingtonSeattleUSA

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