A Comparison of Constraint Handling Techniques on NSGA-II

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作者
Jared G. Hobbie
Amir H. Gandomi
Iman Rahimi
机构
[1] Stevens Institute of Technology,School of Business
[2] University of Technology Sydney,Faculty of Engineering and Information Technology
[3] Universiti Putra Malaysia,Faculty of Engineering
来源
Archives of Computational Methods in Engineering | 2021年 / 28卷
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摘要
Almost all real-world and engineering problems involve multi-objective optimization of some sort that is often constrained. To solve these constrained multi-objective optimization problems, constrained multi-objective optimization evolutionary algorithms (CMOEAs) are enlisted. These CMOEAs require specific constraint handling techniques. This study aims to address and test the most successful constraint handling techniques, seven different penalty constraint techniques, as applied to the Non-dominated Sorting Genetic Algorithm II (NSGA-II). In this paper, NSGA-II is chosen because of its high popularity amongst evolutionary algorithms. Inverted Generational Distance and Hypervolume are the main metrics that are discussed to compare the constraint handling techniques. NSGA-II is applied on 13 constrained multi-objective problems known as CF1-CF10, C1-DTLZ1, C2-DTLZ2, and C3-DTLZ4. The result of IGD and HV values are compared and the feasibility proportions of each combination on each problem are shown. The results of simulation present interesting findings that have been presented at the end of paper as discussion and conclusion.
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页码:3475 / 3490
页数:15
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