DocumentCode
768694
Title
Rank-density-based multiobjective genetic algorithm and benchmark test function study
Author
Lu, Haiming ; Yen, Gary G.
Author_Institution
Prediction Corp., Santa Fe, NM, USA
Volume
7
Issue
4
fYear
2003
Firstpage
325
Lastpage
343
Abstract
Concerns the use of evolutionary algorithms (EA) in solving multiobjective optimization problems (MOP). We propose the use of a rank-density-based genetic algorithm (RDGA) that synergistically integrates selected features from existing algorithms in a unique way. A new ranking method, automatic accumulated ranking strategy, and a "forbidden region" concept are introduced, completed by a revised adaptive cell density evaluation scheme and a rank-density-based fitness assignment technique. In addition, four types of MOP features, such as discontinuous and concave Pareto front, local optimality, high-dimensional decision space and high-dimensional objective space are exploited and the corresponding MOP test functions are designed. By examining the selected performance indicators, RDGA is found to be statistically competitive with four state-of-the-art algorithms in terms of keeping the diversity of the individuals along the tradeoff surface, tending to extend the Pareto front to new areas and finding a well-approximated Pareto optimal front.
Keywords
genetic algorithms; EA; GA; MOP; adaptive cell density evaluation scheme; benchmark test function; discontinuous concave Pareto front; evolutionary algorithms; forbidden region; high-dimensional decision space; high-dimensional objective space; local optimality; multiobjective optimization problems; rank-density-based fitness assignment technique; rank-density-based multiobjective genetic algorithm; Benchmark testing; Design engineering; Distributed computing; Evolutionary computation; Genetic algorithms; Iron; Pareto optimization;
fLanguage
English
Journal_Title
Evolutionary Computation, IEEE Transactions on
Publisher
ieee
ISSN
1089-778X
Type
jour
DOI
10.1109/TEVC.2003.812220
Filename
1223574
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