Evolutionary Algorithms for Multi-Objective Optimization: Performance Assessments and Comparisons

被引:184
作者
K.C. Tan
T.H. Lee
E.F. Khor
机构
关键词
evolutionary algorithms; multi-objective optimization; Pareto optimality; survey;
D O I
10.1023/A:1015516501242
中图分类号
学科分类号
摘要
Evolutionary techniques for multi-objective(MO) optimization are currently gainingsignificant attention from researchers invarious fields due to their effectiveness androbustness in searching for a set of trade-offsolutions. Unlike conventional methods thataggregate multiple attributes to form acomposite scalar objective function,evolutionary algorithms with modifiedreproduction schemes for MO optimization arecapable of treating each objective componentseparately and lead the search in discoveringthe global Pareto-optimal front. The rapidadvances of multi-objective evolutionaryalgorithms, however, poses the difficulty ofkeeping track of the developments in this fieldas well as selecting an existing approach thatbest suits the optimization problem in-hand.This paper thus provides a survey on variousevolutionary methods for MO optimization. Manywell-known multi-objective evolutionaryalgorithms have been experimented with andcompared extensively on four benchmark problemswith different MO optimization difficulties.Besides considering the usual performancemeasures in MO optimization, e.g., the spreadacross the Pareto-optimal front and the abilityto attain the global trade-offs, the paper alsopresents a few metrics to examinethe strength and weakness of each evolutionaryapproach both quantitatively and qualitatively.Simulation results for the comparisons areanalyzed, summarized and commented.
引用
收藏
页码:251 / 290
页数:39
相关论文
共 95 条
[11]  
Vincke P.(1995)An overview of evolutionary algorithms in multiobjective optimization Evolutionary Computation 3 1-16
[12]  
Mareschal B.(1998)Multiobjective optimization and multiple constraint handling with evolutionary algorithms - Part I: A unified formulation IEEE Trans. On System, Man, and Cybernetics-Part A: System and Humans 28 26-37
[13]  
Coello Coello C. A.(1993)Using genetic algorithms to explore pattern recognition in the immune system Evolutionary Computation 1 191-211
[14]  
Cvetkoviż D.(1997)On improving physical selectivity in the treatment of cancer: A systems modelling and optimization approach Control Engineering Practice 5 1739-1745
[15]  
Parmee I. C.(1992)Genetic search strategies in multicriterion optimal design Journal of Structural Optimization 4 99-107
[16]  
Deb K.(1999)Distributed genetic algorithm with a new sharing approach in multiobjective optimization problems IEEE International Conference on Evolutionary Computation 1 69-76
[17]  
Deb K.(1994)A niched Pareto genetic algorithm for multiobjective optimisation IEEE international Conference on Evolutionary Computation 1 82-87
[18]  
Fitzpatrick J. M.(1967)Liniejnaja modiel z nieskolkimi celevymi funkcjami Ekonomika i matematiceckije Metody 3 397-406
[19]  
Grefenstette J. J.(1997)A genetic algorithm approach to Chinese handwriting normalization IEEE Transactions on Systems, Man, and Cybernetics - Part B: Cybernetics 27 999-1007
[20]  
Fonseca C. M.(2000)Distributed reinforcement learning for multiple objective optimization problems IEEE International Conference on Evolutionary Computation 1 188-194