Fuzzy Logic, Neural Networks, and Genetic Algorithms /
First Statement of Responsibility
edited by Da Ruan.
.PUBLICATION, DISTRIBUTION, ETC
Place of Publication, Distribution, etc.
Boston, MA :
Name of Publisher, Distributor, etc.
Imprint: Springer,
Date of Publication, Distribution, etc.
1997.
CONTENTS NOTE
Text of Note
1: Basic Principles and Methodologies -- 1 Introduction to Fuzzy Systems, Neural Networks, and Genetic Algorithms -- 2 A Fuzzy Neural Network for Approximate Fuzzy Reasoning -- 3 Novel Neural Algorithms for Solving Fuzzy Relation Equations -- 4 Methods for Simplification of Fuzzy Models -- 5 A New Approach of Neurofuzzy Learning Algorithm -- 2: Data Analysis and Information Systems -- 6 Neural Networks in Intelligent Data Analysis -- 7 Data-Driven Identification of Key Variables -- 8 Applications of Intelligent Techniques in Process Analysis -- 9 Neurofuzzy-Chaos Engineering for Building Intelligent Adaptive Information Systems -- 10 A Sequential Training Strategy for Locally Recurrent Neural Networks -- 3: Nonlinear Systems and System Identification -- 11 Adaptive Genetic Programming for System Identification -- 12 Nonlinear System Identification with Neurofuzzy Methods -- 13 A Genetic Algorithm for Mixed-Integer Optimisation in Power and Water System Design and Control -- 14 Soft Computing Based Signal Prediction, Restoration, and Filtering.
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SUMMARY OR ABSTRACT
Text of Note
Intelligent Hybrid Systems: Fuzzy Logic, Neural Networks, and Genetic Algorithms is an organized edited collection of contributed chapters covering basic principles, methodologies, and applications of fuzzy systems, neural networks and genetic algorithms. All chapters are original contributions by leading researchers written exclusively for this volume. This book reviews important concepts and models, and focuses on specific methodologies common to fuzzy systems, neural networks and evolutionary computation. The emphasis is on development of cooperative models of hybrid systems. Included are applications related to intelligent data analysis, process analysis, intelligent adaptive information systems, systems identification, nonlinear systems, power and water system design, and many others. Intelligent Hybrid Systems: Fuzzy Logic, Neural Networks, and Genetic Algorithms provides researchers and engineers with up-to-date coverage of new results, methodologies and applications for building intelligent systems capable of solving large-scale problems.