Evolutionary Intelligence: An Introduction to Theory and Applications with MatlabSpringer Science & Business Media, 15 мая 2008 г. - Всего страниц: 584 This book provides a highly accessible introduction to evolutionary computation. It details basic concepts, highlights several applications of evolutionary computation, and includes solved problems using MATLAB software and C/C++. This book also outlines some ideas on when genetic algorithms and genetic programming should be used. The most difficult part of using a genetic algorithm is how to encode the population, and the author discusses various ways to do this. |
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Стр. xii
... Representation . . . . . Evaluation / Fitness Function . 31 31 32 34 36 36 37 2.6 Population Initialization 37 2.7 Selection . . . 38 2.7.1 Rank Based Fitness Assignment 39 2.7.2 Multi - objective Ranking 2.7.3 Roulette Wheel selection ...
... Representation . . . . . Evaluation / Fitness Function . 31 31 32 34 36 36 37 2.6 Population Initialization 37 2.7 Selection . . . 38 2.7.1 Rank Based Fitness Assignment 39 2.7.2 Multi - objective Ranking 2.7.3 Roulette Wheel selection ...
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... Representation . . 3.8 Genetic Algorithm Parameters . 3.8.1 Multi - Parameters 8888888 83 84 86 86 86 3.8.2 Concatenated , Multi - Parameter , Mapped , Fixed - Point Coding 87 3.8.3 Exploitable Techniques 3.9 Schema Theorem and ...
... Representation . . 3.8 Genetic Algorithm Parameters . 3.8.1 Multi - Parameters 8888888 83 84 86 86 86 3.8.2 Concatenated , Multi - Parameter , Mapped , Fixed - Point Coding 87 3.8.3 Exploitable Techniques 3.9 Schema Theorem and ...
Стр. xiv
... Representation . 3.16.6 Illustration 5 - Constrained Problem 3.16.7 Illustration 6 – Maximum of any given Function Summary Review Questions ... Genetic Programming Concepts Introduction 132 . 136 143 158 161 167 169 171 171 4.2 A Brief ...
... Representation . 3.16.6 Illustration 5 - Constrained Problem 3.16.7 Illustration 6 – Maximum of any given Function Summary Review Questions ... Genetic Programming Concepts Introduction 132 . 136 143 158 161 167 169 171 171 4.2 A Brief ...
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... Representation and Specific Operators 471 9.3.4 Parallel Genetic Algorithms for JSSP 473 9.3.5 Computational Results . . . . 475 9.3.6 Comparison of PGA Models .. 477 9.4 Parallel Genetic Algorithm for Graph Coloring Problem 479 9.4.1 ...
... Representation and Specific Operators 471 9.3.4 Parallel Genetic Algorithms for JSSP 473 9.3.5 Computational Results . . . . 475 9.3.6 Comparison of PGA Models .. 477 9.4 Parallel Genetic Algorithm for Graph Coloring Problem 479 9.4.1 ...
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Содержание
Introduction to Evolutionary Computation | 1 |
Summary | 30 |
Principles of Evolutionary Algorithms | 31 |
Genetic Algorithms with Matlab | 77 |
NonConvex Function | 132 |
Genetic Programming Concepts | 171 |
Parallel Genetic Algorithms | 219 |
Applications of Evolutionary Algorithms | 249 |
Genetic Programming Applications | 367 |
Applications of Parallel Genetic Algorithm | 445 |
Appendix A Glossary | 503 |
Appendix B Abbreviations | 517 |
Programming Based on a New Constrainthandling Scheme | 530 |
Appendix D MATLAB Toolboxes | 533 |
Appendix F Ga Source Codes in C Language | 547 |
Appendix G EC ClassCode Libraries and Software Kits | 559 |
with Evolutionary Algorithms | 282 |
Applications of Genetic Algorithms | 297 |
Bibliography | 569 |
Другие издания - Просмотреть все
Evolutionary Intelligence: An Introduction to Theory and Applications with ... S. Sumathi,T. Hamsapriya,P. Surekha Недоступно для просмотра - 2009 |
Evolutionary Intelligence: An Introduction to Theory and Applications with ... S. Sumathi,T. Hamsapriya,P. Surekha Недоступно для просмотра - 2008 |
Часто встречающиеся слова и выражения
adaptive annealing application approach average best individual binary chosen chromosome complex components constraints convergence created crossover crossover operator data types defined demes distributed domain encoding evaluation evolution evolution strategies evolutionary algorithm Evolutionary Computation Evolutionary Programming evolved example fingerprint fitness function fitness value Fuzzy genes genetic algorithm genetic operators genetic programming genotype global optimization grammar graph implementation initial population input integer iteration length MATLAB maximum method migration mutation operator mutation rate neural network neuron node objective function offspring optimal solution optimization problems output parameters parents parse tree performance plot possible probability processors produce random randomly recombination representation represented reproduction rules scheduling schema search space segmentation sequence shown in Figure simulated simulated annealing solve step strategies string structure subpopulations Table takeImage target techniques terminal tion topology tournament selection variables vector waveform