Evolutionary Optimization Algorithms
Auteur : Q. H. Badar Altaf
This comprehensive reference text discusses evolutionary optimization techniques, to find optimal solutions for single and multi-objective problems.
The text presents each evolutionary optimization algorithm along with its history and other working equations. It also discusses variants and hybrids of optimization techniques. The text presents step-by-step solution to a problem and includes software?s like MATLAB and Python for solving optimization problems. It covers important optimization algorithms including single objective optimization, multi objective optimization, Heuristic optimization techniques, shuffled frog leaping algorithm, bacteria foraging algorithm and firefly algorithm.
Aimed at senior undergraduate and graduate students in the field of electrical engineering, electronics engineering, mechanical engineering, and computer science and engineering, this text:
- Provides step-by-step solution for each evolutionary optimization algorithm.
- Provides flowcharts and graphics for better understanding of optimization techniques.
- Discusses popular optimization techniques include particle swarm optimization and genetic algorithm.
- Presents every optimization technique along with the history and working equations.
- Includes latest software like Python and MATLAB.
Date de parution : 10-2021
15.6x23.4 cm
Thèmes d’Evolutionary Optimization Algorithms :
Mots-clés :
Grey Wolf Optimizer; Gravitational Search Algorithm; Shuffled Frog Leaping Algorithm; Objective Function Value; Hybrid PSO; Objective Function; TLBO; Firefly Algorithm; Worst Frog; PSO; Bat Algorithm; Humpback Whales; Onlooker Bees; Food Source Position; Trial Vector; Mutant Vector; Comprehensive Learning PSO; Scout Bees; Memetic Evolution; Child Chromosomes; Target Vector; Teacher Phase; Simple Hill Climbing; Hill Climbing; Alpha Wolf