05094nam 2200721Ia 450 991045355540332120200520144314.097866119563701-281-95637-6981-281-073-0(CKB)1000000000538123(EBL)1679316(SSID)ssj0000161591(PQKBManifestationID)11155014(PQKBTitleCode)TC0000161591(PQKBWorkID)10198288(PQKB)10694958(SSID)ssj0000297330(PQKBManifestationID)12115701(PQKBTitleCode)TC0000297330(PQKBWorkID)10332713(PQKB)24810909(MiAaPQ)EBC1679316(WSP)00004177(Au-PeEL)EBL1679316(CaPaEBR)ebr10255772(CaONFJC)MIL195637(OCoLC)879023390(EXLCZ)99100000000053812320010812d2001 uy 0engur|n|---|||||txtccrGenetic fuzzy systems[electronic resource] evolutionary tuning and learning of fuzzy knowledge bases /Oscar Cordón ... [et al.]Singapore ;River Edge, NJ World Scientificc20011 online resource (489 p.)Advances in fuzzy systems ;v. 19Description based upon print version of record.981-02-4017-1 981-02-4016-3 Includes bibliographical references (p. 425-456) and index.Foreword; Preface; Contents; Chapter 1 Fuzzy Rule-Based Systems; 1.1 Framework: Fuzzy Logic and Fuzzy Systems; 1.2 Mamdani Fuzzy Rule-Based Systems; 1.3 Takagi-Sugeno-Kang Fuzzy Rule-Based Systems; 1.4 Generation of the Fuzzy Rule Set; 1.5 Applying Fuzzy Rule-Based Systems; Chapter 2 Evolutionary Computation; 2.1 Conceptual Foundations of Evolutionary Computation; 2.2 Genetic Algorithms; 2.3 Other Evolutionary Algorithms; Chapter 3 Introduction to Genetic Fuzzy Systems; 3.1 Soft Computing; 3.2 Hybridisation in Soft Computing; 3.3 Integration of Evolutionary Algorithms and Fuzzy Logic3.4 Genetic Fuzzy SystemsChapter 4 Genetic Tuning Processes; 4.1 Tuning of Fuzzy Rule-Based Systems; 4.2 Genetic Tuning of Scaling Functions; 4.3 Genetic Tuning of Membership Functions of Mamdani Fuzzy Rule-Based Systems; 4.4 Genetic Tuning of TSK Fuzzy Rule Sets; Chapter 5 Learning with Genetic Algorithms; 5.1 Genetic Learning Processes. Introduction; 5.2 The Michigan Approach. Classifier Systems; 5.3 The Pittsburgh Approach; 5.4 The Iterative Rule Learning Approach; Chapter 6 Genetic Fuzzy Rule-Based Systems Based on the Michigan Approach; 6.1 Basic Features of Fuzzy Classifier Systems6.2 Fuzzy Classifier Systems for Learning Rule Bases6.3 Fuzzy Classifier Systems for Learning Fuzzy Rule Bases; Chapter 7 Genetic Fuzzy Rule-Based Systems Based on the Pittsburgh Approach; 7.1 Coding Rule Bases as Chromosomes; 7.2 Multi-chromosome Genomes (Coding Knowledge Bases); 7.3 Examples; Chapter 8 Genetic Fuzzy Rule-Based Systems Based on the Iterative Rule Learning Approach; 8.1 Coding the Fuzzy Rules; 8.2 Learning Fuzzy Rules under Competition; 8.3 Post-Processing: Refining Rule Bases under Cooperation; 8.4 Inducing Cooperation in the Fuzzy Rule Generation Stage; 8.5 ExamplesChapter 9 Other Genetic Fuzzy Rule-Based System Paradigms9.1 Designing Fuzzy Rule-Based Systems with Genetic Progamming; 9.2 Genetic Selection of Fuzzy Rule Sets; 9.3 Learning the Knowledge Base via the Genetic Derivation of the Data Base; 9.4 Other Genetic-Based Machine Learning Approaches; Chapter 10 Other Kinds of Evolutionary Fuzzy Systems; 10.1 Genetic Fuzzy Neural Networks; 10.2 Genetic Fuzzy Clustering; 10.3 Genetic Fuzzy Decision Trees; Chapter 11 Applications; 11.1 Classification; 11.2 System Modelling; 11.3 Control Systems; 11.4 Robotics; Bibliography; Acronyms; IndexIn recent years, a great number of publications have explored the use of genetic algorithms as a tool for designing fuzzy systems. Genetic Fuzzy Systems explores and discusses this symbiosis of evolutionary computation and fuzzy logic. The book summarizes and analyzes the novel field of genetic fuzzy systems, paying special attention to genetic algorithms that adapt and learn the knowledge base of a fuzzy-rule-based system. It introduces the general concepts, foundations and design principles of genetic fuzzy systems and covers the topic of genetic tuning of fuzzy systems. It also introduces tAdvances in fuzzy systems ;v. 19.Fuzzy systemsGeneticsMathematical modelsElectronic books.Fuzzy systems.GeneticsMathematical models.006.31Cordón Oscar501266MiAaPQMiAaPQMiAaPQBOOK9910453555403321Genetic fuzzy systems1446750UNINA