Please note: In order to keep Hive up to date and provide users with the best features, we are no longer able to fully support Internet Explorer. The site is still available to you, however some sections of the site may appear broken. We would encourage you to move to a more modern browser like Firefox, Edge or Chrome in order to experience the site fully.

Biologically-Inspired Optimisation Methods : Parallel Algorithms, Systems and Applications, Paperback / softback Book

Biologically-Inspired Optimisation Methods : Parallel Algorithms, Systems and Applications Paperback / softback

Edited by Andrew Lewis, Sanaz Mostaghim, Marcus Randall

Part of the Studies in Computational Intelligence series

Paperback / softback

Description

Throughout the evolutionary history of this planet, biological systems have been able to adapt, survive and ?ourish despite the turmoils and upheavals of the environment.

This ability has long fascinated and inspired people to emulate and adapt natural processes for application in the arti?cial world of human endeavours.

The realm of optimisation problems is no exception. In fact, in recent years biological systems have been the inspiration of the majority of meta-heuristic search algorithms including, but not limited to, genetic algorithms,particle swarmoptimisation, ant colony optimisation and extremal optimisation.

This book presentsa continuum ofbiologicallyinspired optimisation,from the theoretical to the practical.

We begin with an overview of the ?eld of biologically-inspired optimisation, progress to presentation of theoretical analysesandrecentextensionstoavarietyofmeta-heuristicsand?nallyshow application to a number of real-worldproblems.

As such, it is anticipated the book will provide a useful resource for reseachers and practitioners involved in any aspect of optimisation problems.

The overviewof the ?eld is provided by two works co-authored by seminal thinkers in the ?eld.

Deb's "Evolution's Niche in Multi-Criterion Problem Solving", presents a very comprehensive and complete overview of almost all major issues in Evolutionary Multi-objective Optimisation (EMO).

This chapter starts with the original motivation for developing EMO algorithms and provides an account of some successful problem domains on which EMO has demonstrated a clear edge over their classical counterparts.

Information

Save 13%

£129.99

£112.49

Item not Available
 
Free Home Delivery

on all orders

 
Pick up orders

from local bookshops

Information

Also in the Studies in Computational Intelligence series  |  View all