Many-Objective Evolutionary Algorithm with Adaptive Reference Vector
Autor: | Wuzhao Li, Dongyang Li, Bo Hu, Maoqing Zhang, Lei Wang, Qidi Wu |
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Rok vydání: | 2021 |
Předmět: |
Mathematical optimization
Information Systems and Management Optimization problem Computer science 05 social sciences Evolutionary algorithm Pareto principle 050301 education Boundary (topology) 02 engineering and technology Partition (database) Computer Science Applications Theoretical Computer Science Hierarchical clustering Artificial Intelligence Control and Systems Engineering 0202 electrical engineering electronic engineering information engineering Reference vector 020201 artificial intelligence & image processing 0503 education Software |
Zdroj: | Information Sciences. 563:70-90 |
ISSN: | 0020-0255 |
DOI: | 10.1016/j.ins.2021.01.015 |
Popis: | Convergence is always a major concern for many-objective optimization problems. Over the past few decades, various methods have been designed for measuring the convergence. However, according to our mathematical and empirical analyses, most of these methods are more focused on the convergence, and may neglect the exploration of boundary solutions, resulting in the incomplete Pareto fronts and the poor extent of spread achieved among the obtained non-dominated solutions. Regarding this issue, this paper proposes a Many-Objective Evolutionary Algorithm with Adaptive Reference Vector (MaOEA-ARV). In MaOEA-ARV, an adaptive reference vector strategy is designed to dynamically adjust the reference vectors according to the current distribution of candidate solutions for ensuring the spread and convergence simultaneously. Additionally, a hierarchical clustering strategy is employed to adaptively partition candidate solutions into multiple clusters for the diversity of candidate solutions. Experimental results on DTLZ, BT, ZDT and WFG test suites with up to 12 objectives demonstrate the effectiveness of MaOEA-ARV. |
Databáze: | OpenAIRE |
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