Pareto-optimality solution recommendation using a multi-objective artificial wolf-pack algorithm

Yi Chen, Zhonglai Wang, Erfu Yang, Yun Li
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引用次数: 7

Abstract

In practical applications, multi-objective optimisation is one of the most challenging problems that engineers face. For this, Pareto-optimality is the most widely adopted concept, which is a set of optimal trade-offs between conflicting objectives without committing to a recommendation for decision-making. In this paper, a fast approach to Pareto-optimal solution recommendation is developed. It recommends an optimal ranking for decision-makers using a Pareto reliability index. Further, a mean average precision and a mean standard deviation are utilised to gauge the trend of the evolutionary process. A multi-objective artificial wolf-pack algorithm is thus developed to handle the multi-objective problem using a non-dominated sorting method (MAWNS). This is tested in a case study, where the MAWNS is employed as an optimiser for a widely adopted standard test problem, ZDT6. The results show that the proposed method works valuably for the multi-objective optimisations.
基于多目标人工狼群算法的帕累托最优解推荐
在实际应用中,多目标优化是工程师面临的最具挑战性的问题之一。为此,帕累托最优性是最广泛采用的概念,它是一组相互冲突的目标之间的最佳权衡,而不需要为决策提供建议。本文提出了一种快速的帕累托最优解推荐方法。它使用帕累托可靠性指数为决策者推荐一个最佳排名。此外,使用平均精度和平均标准差来衡量进化过程的趋势。为此,提出了一种多目标人工狼群算法,利用非支配排序法(MAWNS)处理多目标问题。在一个案例研究中对此进行了测试,其中MAWNS被用作广泛采用的标准测试问题ZDT6的优化器。结果表明,该方法对多目标优化具有一定的实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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