<journal article>
Evaluation of sequential, multi-objective, and parallel interactive genetic algorithms for multi-objective optimization problems

Creator
Language
Publisher
Date
Source Title
Vol
Issue
First Page
Last Page
Publication Type
Access Rights
Rights
Abstract We propose a sequential interactive genetic algorithm (IGA), multi-objective IGA and parallel IGA, and evaluate them with both simulated and real users. Combining human evaluation with an optimization... system for engineering design enables us to embed domainspecific knowledge that is frequently hard to describe, i.e. subjective criteria, and design preferences. We introduce a new IGA technique to extend the previously introduced sequential single objective GA and multi-objective GA, viz. parallel IGA. Experimental evaluation of three algorithms with a multi-objective manufacturing plant layout design task shows that the multi-objective IGA and the parallel IGA clearly provide better results than the sequential IGA, and that the multi-objective IGA gives the most diverse results and fastest convergence to a stable set of qualitatively optimum solutions, although the parallel IGA provides the best quantitative fitness convergence.
Keywords: innovative design, subjectivity, evolutionary computing
show more

Hide fulltext details.

pdf JBioPhysChem pdf 320 KB 312  

Details

Record ID
Peer-Reviewed
Subject Terms
ISSN
Created Date 2017.05.24
Modified Date 2021.10.06

People who viewed this item also viewed