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A Many-Objective Evolutionary Algorithm Based on Learning Assessment and Mapping Guidance of Historical Superior Information.

Journal of Computational Design and Engineering(2024)SCI 2区

China Univ Geosci | Natl Marine Data & Informat Serv | Hebei GEO Univ | China Geol Survey

Cited 1|Views35
Abstract
Multi-objective optimization algorithms have shown effectiveness on problems with two or three objectives. As the number of objectives increases, the proportion of non-dominated solutions increases rapidly, resulting in insufficient selection pressure. Nevertheless, insufficient selection pressure usually leads to the loss of convergence, too intense selection pressure often results in a lack of diversity. Hence, balancing the convergence and diversity remains a challenging problem in many-objective optimization problems. To remedy this issue, a many-objective evolutionary algorithm based on learning assessment and mapping guidance of historical superior information, referred to here as MaOEA-LAMG, is presented. In the proposed algorithm, an effective learning assessment strategy according to historical superior information based on an elite archive updated by indicator ${I}_{\varepsilon + }$ is proposed, which can estimate the shape of the Pareto front and lay the foundation for subsequent fitness and acute angle-based similarity calculations. From this foundation, to balance the convergence and diversity dynamically, a mapping guidance strategy based on the historical superior information is designed, which contains clustering, associating, and proportional selection. The performance of the proposed algorithm is validated and compared with 10 state-of-the-art algorithms on 24 test instances with various Pareto fronts and real-world water resource planning problem. The empirical studies substantiate the efficacy of the results with competitive performance. Graphical Abstract
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Key words
many-objective optimization,learning assessment,elite archive,Pareto front,acute angle-based similarity,mapping guidance
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要点】:本文提出了一种基于历史优质信息学习评估和映射引导的多目标进化算法(MaOEA-LAMG),旨在解决多目标优化中收敛性与多样性平衡的问题。

方法】:算法采用了一种基于历史优质信息的学习评估策略,通过精英档案和${I}_{\varepsilon + }$指标更新来估计Pareto前沿的形状,并据此进行后续适应度以及尖锐角度基础的相似性计算。

实验】:作者在24个具有不同Pareto前沿的测试实例以及现实世界的水资源规划问题上,验证了所提算法的性能,并与10个最先进算法进行了比较。实验结果表明,该算法具有竞争力。