Muutke küpsiste eelistusi

E-raamat: Handbook of AI-based Metaheuristics [Taylor & Francis e-raamat]

Edited by (MIT World Peace University, Pune, India), Edited by (Universite Paris-Est Creteil, France)
  • Formaat: 398 pages, 54 Tables, black and white; 48 Line drawings, color; 23 Line drawings, black and white; 48 Illustrations, color; 23 Illustrations, black and white
  • Sari: Advances in Metaheuristics
  • Ilmumisaeg: 02-Sep-2021
  • Kirjastus: CRC Press
  • ISBN-13: 9781003162841
  • Taylor & Francis e-raamat
  • Hind: 304,67 €*
  • * hind, mis tagab piiramatu üheaegsete kasutajate arvuga ligipääsu piiramatuks ajaks
  • Tavahind: 435,24 €
  • Säästad 30%
  • Formaat: 398 pages, 54 Tables, black and white; 48 Line drawings, color; 23 Line drawings, black and white; 48 Illustrations, color; 23 Illustrations, black and white
  • Sari: Advances in Metaheuristics
  • Ilmumisaeg: 02-Sep-2021
  • Kirjastus: CRC Press
  • ISBN-13: 9781003162841
"At the heart of the optimization domain are mathematical modelling of the problem and the solution methodologies. In recent times, the problems are becoming larger, with growing complexity. Such problems are becoming cumbersome when handled by traditional optimization methods. This has motivated researchers to resort to Artificial Intelligence (AI) based nature-inspired solution methodologies or algorithms. The Handbook of AI-based Metaheuristics provides a wide-ranging reference to the theoretical and mathematical formulations of metaheuristics, including bio-inspired, swarm-based, socio-cultural and physics-based methods or algorithms; their testing and validation, along with detailed illustrative solutions and applications, as well as newly devised metaheuristic algorithms. The book will be a valuable reference to researchers from industry and academia, as well as Masters and PhD students around the globe working in the metaheuristics and applications domain"--

This book provides a wide-ranging reference to the theoretical and mathematical formulations of metaheuristics, including bio-inspired, swarm-based, socio-cultural and physics-based methods or algorithms; their testing and validation, along with detailed illustrative solutions and applications, as well as newly devised metaheuristic algorithms.



At the heart of the optimization domain are mathematical modelling of the problem and the solution methodologies. In recent times, the problems are becoming larger, with growing complexity. Such problems are becoming cumbersome when handled by traditional optimization methods. This has motivated researchers to resort to Artificial Intelligence (AI) based nature-inspired solution methodologies or algorithms.

The Handbook of AI-based Metaheuristics provides a wide-ranging reference to the theoretical and mathematical formulations of metaheuristics, including bio-inspired, swarm-based, socio-cultural and physics-based methods or algorithms; their testing and validation, along with detailed illustrative solutions and applications, as well as newly devised metaheuristic algorithms.

The book will be a valuable reference to researchers from industry and academia, as well as Masters and PhD students around the globe working in the metaheuristics and applications domain.

Preface ix
Editors xv
List of Contributors
xvii
SECTION I Bio-Inspired Methods
Chapter 1 Brain Storm Optimization Algorithm
3(18)
Marwa Sharawi
Mohammadreza Gholami
Mohammed El-Abd
Chapter 2 Fish School Search: Account for the First Decade
21(22)
Carmelo Jose Abanez Bastos-Filho
Fernando Buarque de Lima-Neto
Anthony Jose da Cunha Carneiro Lins
Marcelo Gomes Pereira de Lacerda
Mariana Gomes da Motta Macedo
Clodomir Joaquim de Santana Junior
Hugo Valadares Siqueira
Rodrigo Cesar Lira da Silva
Hugo Amorim Neto
Breno Auguslo de Melo Menezes
Isabela Maria Carneiro Albuquerque
Jodo Batista Monteiro Filho
Murilo Rebelo Pontes
Jodo Luiz Vilar Dias
Chapter 3 Marriage in Honey Bees Optimization in Continuous Domains
43(30)
Jing Liu
Sreenatha Anavatti
Matthew Garratt
Hussein A. Abbassr
Chapter 4 Structural Optimization Using Genetic Algorithm
73(46)
Ravindra Desai
SECTION II Physics and Chemistry-Based Methods
Chapter 5 Gravitational Search Algorithm: Theory, Literature Review, and Applications
119(32)
Amin Hashemi
Mohammad Bagher Dowlatshahi
Hossein Nezamabadi-pour
Chapter 6 Stochastic Diffusion Search
151(50)
Andrew Owen Martin
SECTION III Socio-inspired Methods
Chapter 7 The League Championship Algorithm: Applications and Extensions
201(18)
All Husseinzadeh Kashan
Alireza Balavand
Somayyeh Karimiyan
Fariba Soleimani
Chapter 8 Cultural Algorithms for Optimization
219(20)
Carlos Artemio Coello Coello
Ma Guadalupe Castillo Tapia
Chapter 9 Application of Teaching-Learning-Based Optimization on Solving of Time Cost Optimization Problems
239(24)
Vedat Togan
Tayfun Dede
Hasan Basri Baraga
Chapter 10 Social Learning Optimization
263(20)
Yue-Jiao Gong
Chapter 11 Constraint Handling in Multi-Cohort Intelligence Algorithm
283(18)
Apoorva S. Shastri
Anand J. Kulkarni
SECTION IV Swarm-Based Methods
Chapter 12 Bee Colony Optimization and Its Applications
301(22)
Dusan Teodorovic
Tatjana Davidovic
Milica Selmic
Milos Nikolic
Chapter 13 A Bumble Bees Mating Optimization Algorithm for the Location Routing Problem with Stochastic Demands
323(18)
Magdalene Marinaki
Yannis Marinakis
Chapter 14 A Glowworm Swarm Optimization Algorithm for the Multi-Objective Energy Reduction Multi-Depot Vehicle Routing Problem
341(20)
Emmanouela Rapanaki
Iraklis-Dimitrios Psychas
Magdalene Marinaki
Yannis Marinakis
Chapter 15 Monarch Butterfly Optimization
361(32)
Liwen Xie
Gai-Ge Wang
Index 393
Patrick Siarry is a Professor of Automatics and Informatics at the University of Paris-Est Créteil, where he leads the Image and Signal Processing team in the Laboratoire Images, Signaux et Systèmes Intelligents (LiSSi).

Anand J Kulkarni is Associate Professor at the Symbiosis Center for Research and Innovation, Symbiosis International (Deemed University).