<p><P>Arguably, many industrial optimization problems are of the multiobjective type. The present work, after providing a survey of the state of the art in multiobjective optimization, gives new insight into this important mathematical field by consequently taking up the viewpoint of differential ge
Multiobjective optimization methodology : a jumping gene approach
β Scribed by K S Tang; et al
- Publisher
- CRC Press
- Year
- 2012
- Leaves
- 260
- Series
- Industrial electronics series
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
"Complex design problems are often governed by a number of performance merits. These markers gauge how good the design is going to be, but can conflict with the performance requirements that must be met. The challenge is reconciling these two requirements. This book introduces a newly developed jumping gene algorithm, designed to address the multi-functional objectives problem and supplies a viably adequate solution Read more...
β¦ Table of Contents
Content: 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
Abstract: "Complex design problems are often governed by a number of performance merits. These markers gauge how good the design is going to be, but can conflict with the performance requirements that must be met. The challenge is reconciling these two requirements. This book introduces a newly developed jumping gene algorithm, designed to address the multi-functional objectives problem and supplies a viably adequate solution in speed. The text presents various multi-objective optimization techniques and provides the technical know-how for obtaining trade-off solutions between solution spread and convergence"--
"Discovered by Nobel Laureate, Barbara McClintock in her work on the corn plants in the nineteen fifties, the phenomenon of Jumping Genes has been traditionally applied in the bio-science and bio-medical fields. Being the first of its kind to introduce the topic of jumping genes outside bio-science/medical areas, this book stands firmly on evolutionary computational ground. Requiring substantial engineering insight and endeavor so that the essence of jumping genes algorithm can be brought out convincingly as well as in scientific style, it has to show its robustness to withstand the unavoidable comparison amongst all the existing algorithms in various theories, practices, and applications. As a new born algorithm, it should undoubtedly carry extra advantages for its uses, where other algorithms could fail or have low capacity"
π SIMILAR VOLUMES
<p><P>Network models are critical tools in business, management, science and industry. <EM>Network Models and Optimization: Multiobjective Genetic Algorithm Approach</EM> presents an insightful, comprehensive, and up-to-date treatment of multiple objective genetic algorithms to network optimization
<p><P>Network models are critical tools in business, management, science and industry. <EM>Network Models and Optimization: Multiobjective Genetic Algorithm Approach</EM> presents an insightful, comprehensive, and up-to-date treatment of multiple objective genetic algorithms to network optimization
<p><P>Multiobjective optimization deals with solving problems having not only one, but multiple, often conflicting, criteria. Such problems can arise in practically every field of science, engineering and business, and the need for efficient and reliable solution methods is increasing. The task is c