printlogo
ETH Zuerich - Homepage
Computer Engineering and Networks Laboratory (TIK)
 

Publication Details for Inproceedings "Evolutionary Algorithms for Multiobjective Optimization"

 

 Back

 New Search

 

Authors: Eckart Zitzler
Group: Computer Engineering
Type: Inproceedings
Title: Evolutionary Algorithms for Multiobjective Optimization
Year: 2002
Pub-Key: Zitz2002a
Book Titel: Evolutionary Methods for Design, Optimisation, and Control
Pages: 19-26
Keywords: EMO
Publisher: CIMNE, Barcelona, Spain
Abstract: Multiple, often conflicting objectives arise naturally in most real-world optimization scenarios. As evolutionary algorithms possess several characteristics due to which they are well suited to this type of problem, evolution-based methods have been used for multiobjective optimization for more than a decade. Meanwhile evolutionary multiobjective optimization has become established as a separate subdiscipline combining the fields of evolutionary computation and classical multiple criteria decision making. In this paper, the basic principles of evolutionary multiobjective optimization are discussed from an algorithm design perspective. The focus is on the major issues such as fitness assignment, diversity preservation, and elitism in general rather than on particular algorithms. Different techniques to implement these strongly related concepts will be discussed, and further important aspects such as constraint handling and preference articulation are treated as well. Finally, two applications will presented and some recent trends in the field will be outlined.
Resources: [BibTeX] [Paper as PDF]

 

 Back

 New Search