一种求解工程问题的新型多目标算法优化算法

IF 1.8 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Pradeep Jangir,  Arpita, Sundaram B. Pandya, Gulothungan G., Mohammad Khishe, Bhargavi Indrajit Trivedi
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引用次数: 0

摘要

目前,多目标优化算法已被应用于许多领域,以寻找多目标优化问题的高效解。然而,这降低了他们在处理MaOPs时的效率,MaOPs是包含三个以上目标的问题;这是因为帕累托边界解的比例随着目标的数量呈指数增长。本文提出了一种包含参考点、生态位保存和信息反馈机制的多目标算法优化算法(MaOAOA)。他们这样做的方式是在周期的中间将趋同阶段和多样化阶段分开。第一阶段使用参考点方法处理收敛问题,其目的是将人口移动到真正的帕累托前沿。然而,MaOAOA的多样性阶段对种群中的存档截断方法使用了生态位保留,从而保证种群沿着实际的Pareto前沿适当地分布。这些阶段是相互的;即收敛阶段支持多样性阶段,并通过(IFM)方法进行平衡。实验结果表明,在GD、IGD、SP、SD、HV和RT指标方面,MaOAOA优于MaOTLBO、NSGA-III、MaOPSO和MOEA/D-DRW等几种方法。这可以从MaF1-MaF15测试问题中看出,特别是有4个、7个和9个目标的测试问题,以及包括RWMaOP1到RWMaOP5的5个实际问题。研究结果表明,在本研究分析的大多数测试用例中,MaOAOA优于其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

MaOAOA: A Novel Many-Objective Arithmetic Optimization Algorithm for Solving Engineering Problems

MaOAOA: A Novel Many-Objective Arithmetic Optimization Algorithm for Solving Engineering Problems

Currently, the use of multi-objective optimization algorithms has been applied in many fields to find the efficient solution of the multiple objective optimization problems (MOPs). However, this reduces their efficiency when addressing MaOPs, which are problems that contain more than three objectives; this is because the portion of the Pareto frontier solutions tends to increase exponentially with the number of objectives. This paper aims at overcoming this problem by proposing a new Many-Objective Arithmetic Optimization Algorithm (MaOAOA) that incorporates a reference point, niche preservation, and an information feedback mechanism (IFM). They did this in a manner that splits the convergence and the diversity phases in the middle of the cycle. The first phase deals with the convergence using a reference point approach, which aims to move the population towards the true Pareto Front. However, the diversity phase of the MaOAOA uses a niche preserve to the archive truncation method in the population, thus guaranteeing that the population is spread out properly along the actual Pareto front. These stages are mutual; that is, the convergence stage supports the diversity stage, and they are balanced by an (IFM) approach. The experimental results show that MaOAOA outperforms several approaches, including MaOTLBO, NSGA-III, MaOPSO, and MOEA/D-DRW, in terms of GD, IGD, SP, SD, HV, and RT metrics. This can be seen from the MaF1-MaF15 test problems, especially with four, seven, and nine objectives, and five real-world problems that include RWMaOP1 to RWMaOP5. The findings indicate that MaOAOA outperforms the other algorithms in most of the test cases analyzed in this study.

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