Introduction to Nature-Inspired Optimization Introduction to Nature-Inspired Optimization

Introduction to Nature-Inspired Optimization

    • $164.99
    • $164.99

Publisher Description

Introduction to Nature-Inspired Optimization brings together many of the innovative mathematical methods for non-linear optimization that have their origins in the way various species behave in order to optimize their chances of survival. The book describes each method, examines their strengths and weaknesses, and where appropriate, provides the MATLAB code to give practical insight into the detailed structure of these methods and how they work.

Nature-inspired algorithms emulate processes that are found in the natural world, spurring interest for optimization. Lindfield/Penny provide concise coverage to all the major algorithms, including genetic algorithms, artificial bee colony algorithms, ant colony optimization and the cuckoo search algorithm, among others. This book provides a quick reference to practicing engineers, researchers and graduate students who work in the field of optimization.



- Applies concepts in nature and biology to develop new algorithms for nonlinear optimization

- Offers working MATLAB® programs for the major algorithms described, applying them to a range of problems

- Provides useful comparative studies of the algorithms, highlighting their strengths and weaknesses

- Discusses the current state-of-the-field and indicates possible areas of future development

GENRE
Science & Nature
RELEASED
2017
10 August
LANGUAGE
EN
English
LENGTH
256
Pages
PUBLISHER
Academic Press
SELLER
Elsevier Ltd.
SIZE
24.2
MB
Optimization Techniques and Applications with Examples Optimization Techniques and Applications with Examples
2018
Meta-heuristic and Evolutionary Algorithms for Engineering Optimization Meta-heuristic and Evolutionary Algorithms for Engineering Optimization
2017
Evolutionary Algorithms Evolutionary Algorithms
2017
Evolutionary Computation with Biogeography-based Optimization Evolutionary Computation with Biogeography-based Optimization
2017
Foundations of Genetic Algorithms 2001 (FOGA 6) Foundations of Genetic Algorithms 2001 (FOGA 6)
2001
Guided Randomness in Optimization, Volume 1 Guided Randomness in Optimization, Volume 1
2015
Numerical Methods Numerical Methods
2018
Numerical Methods Numerical Methods
2012