Zhang Qingyang, Jiang Shouyong, Yang Shengxiang, Song Hui
School of Computer Science and Technology, Jiangsu Normal University, Xuzhou, CO, China.
School of Computer Science, University of Lincoln, Lincoln, CO, United Kingdom.
PLoS One. 2021 Aug 3;16(8):e0254839. doi: 10.1371/journal.pone.0254839. eCollection 2021.
This paper proposes a new dynamic multi-objective optimization algorithm by integrating a new fitting-based prediction (FBP) mechanism with regularity model-based multi-objective estimation of distribution algorithm (RM-MEDA) for multi-objective optimization in changing environments. The prediction-based reaction mechanism aims to generate high-quality population when changes occur, which includes three subpopulations for tracking the moving Pareto-optimal set effectively. The first subpopulation is created by a simple linear prediction model with two different stepsizes. The second subpopulation consists of some new sampling individuals generated by the fitting-based prediction strategy. The third subpopulation is created by employing a recent sampling strategy, generating some effective search individuals for improving population convergence and diversity. Experimental results on a set of benchmark functions with a variety of different dynamic characteristics and difficulties illustrate that the proposed algorithm has competitive effectiveness compared with some state-of-the-art algorithms.
本文提出了一种新的动态多目标优化算法,该算法将基于拟合的预测(FBP)机制与基于规则模型的分布估计算法(RM-MEDA)相结合,用于变化环境下的多目标优化。基于预测的反应机制旨在在发生变化时生成高质量种群,该机制包括三个子种群,以有效地跟踪移动的帕累托最优集。第一个子种群由具有两种不同步长的简单线性预测模型创建。第二个子种群由基于拟合的预测策略生成的一些新采样个体组成。第三个子种群通过采用最近的采样策略创建,生成一些有效的搜索个体,以提高种群的收敛性和多样性。在一组具有各种不同动态特征和难度的基准函数上的实验结果表明,与一些先进算法相比,所提出的算法具有竞争有效性。