Exploring Constraint Handling Techniques in Real-world Problems on MOEA/D with Limited Budget of Evaluations
November 19, 2020 Β· Declared Dead Β· π International Conference on Evolutionary Multi-Criterion Optimization
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Authors
Felipe Vaz, Yuri Lavinas, Claus Aranha, Marcelo Ladeira
arXiv ID
2011.09722
Category
cs.AI: Artificial Intelligence
Citations
14
Venue
International Conference on Evolutionary Multi-Criterion Optimization
Last Checked
4 months ago
Abstract
Finding good solutions for Multi-objective Optimization (MOPs) Problems is considered a hard problem, especially when considering MOPs with constraints. Thus, most of the works in the context of MOPs do not explore in-depth how different constraints affect the performance of MOP solvers. Here, we focus on exploring the effects of different Constraint Handling Techniques (CHTs) on MOEA/D, a commonly used MOP solver when solving complex real-world MOPs. Moreover, we introduce a simple and effective CHT focusing on the exploration of the decision space, the Three Stage Penalty. We explore each of these CHTs in MOEA/D on two simulated MOPs and six analytic MOPs (eight in total). The results of this work indicate that while the best CHT is problem-dependent, our new proposed Three Stage Penalty achieves competitive results and remarkable performance in terms of hypervolume values in the hard simulated car design MOP.
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