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You searched IISERK - Subject: Computernetwerken.
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Call Number 629.8/36
Author Lewis, Frank L.
Title Neuro-fuzzy control of industrial systems with actuator nonlinearities [electronic resource] / F.L. Lewis, J. Campos, R. Selmic.
Publication Philadelphia, Pa. : Society for Industrial and Applied Mathematics (SIAM, 3600 Market Street, Floor 6, Philadelphia, PA 19104), 2002.
Material Info. 1 electronic text (xiv, 244 p.) : ill., digital file.
Series Frontiers in applied mathematics ; 24
Series Frontiers in applied mathematics ; 24.
Summary Note Neural networks and fuzzy systems are model free control design approaches that represent an advantage over classical control when dealing with complicated nonlinear actuator dynamics. Neuro-Fuzzy Control of Industrial Systems with Actuator Nonlinearities brings neural networks and fuzzy logic together with dynamical control systems. Each chapter presents powerful control approaches for the design of intelligent controllers to compensate for actuator nonlinearities such as time delay, friction, deadzone, and backlash that can be found in all industrial motion systems, plus a thorough development, rigorous stability proofs, and simulation examples for each design. In the final chapter, the authors develop a framework to implement intelligent control schemes on actual systems.
Summary Note Rigorous stability proofs are further verified by computer simulations, and appendices contain the computer code needed to build intelligent controllers for real-time applications. Neural networks capture the parallel processing and learning capabilities of biological nervous systems, and fuzzy logic captures the decision-making capabilities of human linguistics and cognitive systems.
Notes Includes bibliographical references (p. 233-240) and index.
Notes Background on Neural Networks and Fuzzy Logic Systems -- Background on Dynamical Systems and Industrial Actuators -- Neurocontrol of Systems with Friction -- Neural and Fuzzy Control of Systems with Deadzones -- Neural Control of Systems with Backlash -- Fuzzy Logic Control of Vehicle Active Suspension -- Neurocontrol Using the Adaptive Critic Architecture -- Neurocontrol of Telerobotic Systems with Time Delays -- Implementation of Neural Network Control Systems -- Appendix A: C Code for Neural Network Friction Controller -- Appendix B: C Code for Continuous-Time Neural Network Deadzone Controller -- Appendix C: C Code for Discrete-Time Neural Network Backlash Controller -- Appendix D: Versatile Real-Time Executive Code for Implementation of Neural Network Backstepping Controller on ATB1000 Tank Gun Barrel.
ISBN 9780898717563 (electronic bk.)
Subject Adaptive control systems.
Subject Fuzzy systems.
Subject Nonlinear theories.
Subject Industrial systems
Subject Adaptive control systems
Subject Fuzzy systems
Subject Nonlinear theories
Added Entry Campos, J.
Added Entry Selmic, R.
Added Entry Society for Industrial and Applied Mathematics.
Date Year, Month, Day:01405141
Link SIAM

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