05261nam 2200601 a 450 991013904990332120200520144314.01-118-53482-41-118-53481-61-299-40270-41-118-53480-8(CKB)2550000001017908(EBL)1160768(DLC) 2013007336(Au-PeEL)EBL1160768(CaPaEBR)ebr10680770(CaONFJC)MIL471520(CaSebORM)9781118534816(MiAaPQ)EBC1160768(OCoLC)828193875(EXLCZ)99255000000101790820130220d2013 uy 0engur|n|---|||||rdacontentrdamediardacarrierComputational intelligence[electronic resource] synergies of fuzzy logic, neural networks and evolutionary computing /Nazmul Siddique, Hojjat Adeli1st editionChichester [England] John Wiley & Sons Inc.20131 online resource (534 p.)Description based upon print version of record.1-118-33784-0 Includes bibliographical references and index.COMPUTATIONAL INTELLIGENCE: SYNERGIES OF FUZZY LOGIC, NEURAL NETWORKS AND EVOLUTIONARY COMPUTING; Contents; Foreword; Preface; Acknowledgements; 1 Introduction to Computational Intelligence; 1.1 Computational Intelligence; 1.2 Paradigms of Computational Intelligence; 1.3 Approaches to Computational Intelligence; 1.3.1 Fuzzy Logic; 1.3.2 Neural Networks; 1.3.3 Evolutionary Computing; 1.3.4 Learning Theory; 1.3.5 Probabilistic Methods; 1.3.6 Swarm Intelligence; 1.4 Synergies of Computational Intelligence Techniques; 1.5 Applications of Computational Intelligence1.6 Grand Challenges of Computational Intelligence1.7 Overview of the Book; 1.8 MATLAB® Basics; References; 2 Introduction to Fuzzy Logic; 2.1 Introduction; 2.2 Fuzzy Logic; 2.3 Fuzzy Sets; 2.4 Membership Functions; 2.4.1 Triangular MF; 2.4.2 Trapezoidal MF; 2.4.3 Gaussian MF; 2.4.4 Bell-shaped MF; 2.4.5 Sigmoidal MF; 2.5 Features of MFs; 2.5.1 Support; 2.5.2 Core; 2.5.3 Fuzzy Singleton; 2.5.4 Crossover Point; 2.6 Operations on Fuzzy Sets; 2.7 Linguistic Variables; 2.7.1 Features of Linguistic Variables; 2.8 Linguistic Hedges; 2.9 Fuzzy Relations; 2.9.1 Compositional Rule of Inference2.10 Fuzzy If-Then Rules2.10.1 Rule Forms; 2.10.2 Compound Rules; 2.10.3 Aggregation of Rules; 2.11 Fuzzification; 2.12 Defuzzification; 2.13 Inference Mechanism; 2.13.1 Mamdani Fuzzy Inference; 2.13.2 Sugeno Fuzzy Inference; 2.13.3 Tsukamoto Fuzzy Inference; 2.14 Worked Examples; 2.15 MATLAB® Programs; References; 3 Fuzzy Systems and Applications; 3.1 Introduction; 3.2 Fuzzy System; 3.3 Fuzzy Modelling; 3.3.1 Structure Identification; 3.3.2 Parameter Identification; 3.3.3 Construction of Parameterized Membership Functions; 3.4 Fuzzy Control; 3.4.1 Fuzzification; 3.4.2 Inference Mechanism3.4.3 Rule Base3.4.4 Defuzzification; 3.5 Design of Fuzzy Controller; 3.5.1 Input/Output Selection; 3.5.2 Choice of Membership Functions; 3.5.3 Creation of Rule Base; 3.5.4 Types of Fuzzy Controller; 3.6 Modular Fuzzy Controller; 3.7 MATLAB® Programs; References; 4 Neural Networks; 4.1 Introduction; 4.2 Artificial Neuron Model; 4.3 Activation Functions; 4.4 Network Architecture; 4.4.1 Feedforward Networks; 4.5 Learning in Neural Networks; 4.5.1 Supervised Learning; 4.5.2 Unsupervised Learning; 4.6 Recurrent Neural Networks; 4.6.1 Elman Networks; 4.6.2 Jordan Networks; 4.6.3 Hopfield Networks4.7 MATLAB® ProgramsReferences; 5 Neural Systems and Applications; 5.1 Introduction; 5.2 System Identification and Control; 5.2.1 System Description; 5.2.2 System Identification; 5.2.3 System Control; 5.3 Neural Networks for Control; 5.3.1 System Identification for Control Design; 5.3.2 Neural Networks for Control Design; 5.4 MATLAB® Programs; References; 6 Evolutionary Computing; 6.1 Introduction; 6.2 Evolutionary Computing; 6.3 Terminologies of Evolutionary Computing; 6.3.1 Chromosome Representation; 6.3.2 Encoding Schemes; 6.3.3 Population; 6.3.4 Evaluation (or Fitness) Functions6.3.5 Fitness ScalingComputational Intelligence: Synergies of Fuzzy Logic, Neural Networks and Evolutionary Computing presents an introduction to some of the cutting edge technological paradigms under the umbrella of computational intelligence. Computational intelligence schemes are investigated with the development of a suitable framework for fuzzy logic, neural networks and evolutionary computing, neuro-fuzzy systems, evolutionary-fuzzy systems and evolutionary neural systems. Applications to linear and non-linear systems are discussed with examples. Key features: Covers all the aspectComputational intelligenceComputational intelligence.006.3Siddique N. H911205Adeli Hojjat1950-784299MiAaPQMiAaPQMiAaPQBOOK9910139049903321Computational intelligence2040716UNINA