Advanced methods for fault diagnosis and fault-tolerant control
Title:
Advanced methods for fault diagnosis and fault-tolerant control
ISBN:
9783662620045
Personal Author:
Edition:
1st ed. 2021.
Publication Information New:
Berlin, Heidelberg : Springer Berlin Heidelberg : Imprint: Springer, 2021.
Physical Description:
XXIII, 658 p. 28 illus. online resource.
Contents:
Basic requirements on fault detection and estimation -- Basic methods for fault detection and estimation in static and dynamic processes -- Feedback control, observer, and residual generation -- Fault detection and estimation for linear time-varying systems -- Detection and isolation of multiplicative faults in uncertain systems -- Analysis, parameterisation and optimal design of nonlinear observer-based fault detection systems -- Data-driven fault detection methods for large-scale and distributed systems -- Alternative test statistics and data-driven fault detection methods -- Application of randomised algorithms to assessment and design of fault diagnosis systems -- Performance-based fault-tolerant control -- Performance degradation monitoring and recovering -- Data-driven fault-tolerant control schemes.
Abstract:
After the first two books have been dedicated to model-based and data-driven fault diagnosis respectively, this book addresses topics in both model-based and data-driven thematic fields with considerable focuses on fault-tolerant control issues and application of machine learning methods. The major objective of the book is to study basic fault diagnosis and fault-tolerant control problems and to build a framework for long-term research efforts in the fault diagnosis and fault-tolerant control domain. In this framework, possibly unified solutions and methods can be developed for general classes of systems. The book is composed of six parts. Besides Part I serving as a common basis for the subsequent studies, Parts II - VI are dedicated to five different thematic areas, including model-based fault diagnosis methods for linear time-varying systems, nonlinear systems and systems with model uncertainties, statistical and data-driven fault diagnosis methods, assessment of fault diagnosis systems, as well as fault-tolerant control with a strong focus on performance degradation monitoring and recovering. These parts are self-contained and so structured that they can also be used for self-study on the concerned topics. The content Basic requirements on fault detection and estimation - Basic methods for fault detection and estimation in static and dynamic processes - Feedback control, observer, and residual generation - Fault detection and estimation for linear time-varying systems - Detection and isolation of multiplicative faults in uncertain systems - Analysis, parameterisation and optimal design of nonlinear observer-based fault detection systems - Data-driven fault detection methods for large-scale and distributed systems - Alternative test statistics and data-driven fault detection methods - Application of randomised algorithms to assessment and design of fault diagnosis systems - Performance-based fault-tolerant control - Performance degradation monitoring and recovering - Data-driven fault-tolerant control schemes The target groups This book would be valuable for graduate and PhD students as well as for researchers and engineers in the field. The author Prof. Dr.-Ing. Steven X. Ding is a professor and the head of the Institute for Automatic Control and Complex Systems (AKS), University of Duisburg-Essen, Germany. His research interests are model-based and data-driven fault diagnosis, control and fault-tolerant systems as well as their applications in industry with a focus on automotive systems, chemical processes and renewable energy systems.
Added Corporate Author:
Language:
English