Practical Genetic Algorithms – Randy L. Haupt, Sue Ellen Haupt

practical genetic algorithms second edition pdf,practical genetic algorithms second edition,practical genetic algorithms haupt,practical genetic algorithms matlab code,practical genetic algorithms 2nd edition,practical genetic algorithms randy l haupt,practical handbook of genetic algorithms,practical applications of genetic algorithms,practical genetic algorithms pdf,the practical handbook of genetic algorithms applications,the practical handbook of genetic algorithms applications pdf,practical aspects of genetic algorithms,practical genetic algorithms haupt pdf,practical handbook of genetic algorithms pdf,practical uses of genetic algorithms
* This book deals with the fundamentals of genetic algorithms and their applications in a variety of different areas of engineering and science
* Most significant update to the second edition is the MATLAB codes that accompany the text
* Provides a thorough discussion of hybrid genetic algorithms
* Features more examples than first edition
Preface to First Edition.
List of Symbols.
1. Introduction to Optimization.
1.1 Finding the Best Solution.
1.2 Minimum-Seeking Algorithms.
1.3 Natural Optimization Methods.
1.4 Biological Optimization: Natural Selection.
1.5 The Genetic Algorithm.
2. The Binary Genetic Algorithm.
2.1 Genetic Algorithms: Natural Selection on a Computer.
2.2 Components of a Binary Genetic Algorithm.
2.3 A Parting Look.
3. The Continuous Genetic Algorithm.
3.1 Components of a Continuous Genetic Algorithm.
3.2 A Parting Look.
4. Basic Applications.
4.1 “Mary Had a Little Lamb”.
4.2 Algorithmic Creativity-Genetic Art.
4.3 Word Guess.
4.4 Locating an Emergency Response Unit.
4.5 Antenna Array Design.
4.6 The Evolution of Horses.
4.7 Summary.
5. An Added Level of Sophistication.
5.1 Handling Expensive Cost Functions.
5.2 Multiple Objective Optimization.
5.3 Hybrid GA.
5.4 Gray Codes.
5.5 Gene Size.
5.6 Convergence.
5.7 Alternative Crossovers for Binary GAs.
5.8 Population.
5.9 Mutation.
5.10 Permutation Problems.
5.11 Selling GA Parameters.
5.12 Continuous versus Binary GA.
5.13 Messy Genetic Algorithms.
5.14 Parallel Genetic Algorithms.
6. Advanced Applications.
6.1 Traveling Salespersons Problem.
6.2 Locating an Emergency Response Unit Revisited.
6.3 Decoding a Secret Message.
6.4 Robot Trajectory Planning.
6.5 Stealth Design.
6.6 Building Dynamical Inverse Models-The Linear Case.
6.7 Building Dynamical Inverse Models-The Nonlinear Case.
6.8 Combining GAs with Simulations-Air Pollution Receptor Modeling.
6.9 Combining Methods Neural Nets with GAs.
6.10 Solving High-Order Nonlinear Partial Differential Equations.
7. More Natural Optimization Algorithms.
7.1 Simulated Annealing.
7.2 Particle Swarm Optimization (PSO).
7.3 Ant Colony Optimization (ACO).
7.4 Genetic Programming (GP).
7.5 Cultural Algorithms.
7.6 Evolutionary Strategies.
7.7 The Future of Genetic Algorithms.
Appendix I: Test Functions.
Appendix II: MATLAB Code.
Appendix III. High-Performance Fortran Code.