Nature-inspired Metaheuristic AlgorithmsLuniver Press, 2010 - 148 halaman Modern metaheuristic algorithms such as particle swarm optimization and cuckoo search start to demonstrate their power in dealing with tough optimization problems and even NP-hard problems. This book reviews and introduces the state-of-the-art nature-inspired metaheuristic algorithms for global optimization, including ant and bee algorithms, bat algorithm, cuckoo search, differential evolution, firefly algorithm, genetic algorithms, harmony search, particle swarm optimization, simulated annealing and support vector machines. In this revised edition, we also include how to deal with nonlinear constraints. Worked examples with implementation have been used to show how each algorithm works. This book is thus an ideal textbook for an undergraduate and/or graduate course as well as for self study. As some of the algorithms such as the cuckoo search and firefly algorithms are at the forefront of current research, this book can also serve as a reference for researchers. |
Isi
Random Walks and Lévy Flights | 11 |
Simulated Annealing | 21 |
How to Deal With Constraints | 29 |
Genetic Algorithms | 41 |
Differential Evolution | 47 |
Ant and Bee Algorithms | 53 |
Swarm Optimization | 63 |
Harmony Search | 73 |
Edisi yang lain - Lihat semua
Istilah dan frasa umum
2010 Luniver Press ant colony optimization ants bats bee algorithms behaviour best solutions colony optimization components computing convergence crossover cuckoo search current best current global best developed differential evolution Edition by Xin-She efficient equality constraints evaluations example exploration Find the current firefly algorithm food source foraging frequency Gaussian genetic algorithms global optimization harmony search heuristic IEEE implementation inequality initial Lévy distribution Lévy flights light intensity locations Markov chain mathematical microbats minimize mutation Nature-Inspired Metaheuristic Algorithms nectar nest neural networks nonlinear number of iterations optimal solution optimiza optimization algorithm optimization problems output parameters particle swarm optimization pheromone pheromone concentration pitch adjusting population probability programming pseudo code random variable random walk randomly rithms route search algorithm search space selection shown in Fig simulated annealing solve strategy support vector machine Swarm Intelligence Tabu search temperature tion typically Update worth pointing Xin-She Yang CopyrightcO
