Produktbild: Tang, K: Multiobjective Optimization Methodology

Tang, K: Multiobjective Optimization Methodology A Jumping Gene Approach

Aus der Reihe Industrial Electronics

Fr. 229.00

inkl. gesetzl. MwSt., Versandkostenfrei


Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

10.05.2012

Abbildungen

16 page color insert - 19 color figures follows page 148 1053 equations 49 Tables, black and white 86 Illustrations, black and white

Verlag

Taylor and Francis

Seitenzahl

280

Maße (L/B/H)

16.1/24.1/2.2 cm

Gewicht

235 g

Sprache

Englisch

ISBN

978-1-4398-9919-9

Beschreibung

Zitat

This is an interesting and practical book. It is easy to read [and] provides good background information ... [and] cutting-edge technologies to solve the challenging multi-objective optimization problems. -Mo-Yuen Chow, North Carolina State University

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

10.05.2012

Abbildungen

16 page color insert - 19 color figures follows page 148 1053 equations 49 Tables, black and white 86 Illustrations, black and white

Verlag

Taylor and Francis

Seitenzahl

280

Maße (L/B/H)

16.1/24.1/2.2 cm

Gewicht

235 g

Sprache

Englisch

ISBN

978-1-4398-9919-9

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  • Produktbild: Tang, K: Multiobjective Optimization Methodology
  • Introduction Background on Genetic Algorithms Organization of Chapters References Overview of Multiobjective Optimization Classification of Optimization Methods Multiobjective Algorithms References Jumping Gene Computational Approach Biological Background Overview of Computational Gene Transposition Jumping Gene Genetic Algorithms Real-Coding Jumping Operations Simulation Results References Theoretical Analysis of Jumping Gene Operations Overview of Schema Models Exact Schema Theorem for Jumping Gene Transposition Theorems of Equilibrium and Dynamical Analysis Simulation Results and Analysis Discussion References Performance Measures on Jumping Gene Convergence Metric: Generational Distance Convergence Metric: Deb and Jain Convergence Metric Diversity Metric: Spread Diversity Metric: Extreme Nondominated Solution Generation Binary epsilon-Indicator Statistical Test Using Performance Metrics Jumping Gene Verification and Results References Radio-To-Fiber Repeater Placement in Wireless Local-Loop Systems Introduction Path Loss Model Mathematical Formulation Chromosome Representation Jumping Gene Transposition Chromosome Repairing Results and Discussion References Resource Management in WCDMA Introduction Mathematical Formulation Chromosome Representation Initial Population Jumping Gene Transposition Mutation Ranking Rule Results and Discussion Discussion of Real-Time Implementation References Base Station Placement in WLANs Introduction Path Loss Model Mathematical Formulation Chromosome Representation Jumping Gene Transposition Chromosome Repairing Results and Discussion References Conclusions Reference Appendices Appendix A: Proofs of Lemmas in Chapter 4 Appendix B: Benchmark Test Functions Appendix C: Chromosome Representation Appendix D: Design of the Fuzzy PID Controller