Decision-Maker’s Preference-Driven Dynamic Multi-Objective Optimization

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Algorithms Pub Date : 2023-10-30 DOI:10.3390/a16110504
Adekunle Rotimi Adekoya, Mardé Helbig
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引用次数: 0

Abstract

Dynamic multi-objective optimization problems (DMOPs) are optimization problems where elements of the problems, such as the objective functions and/or constraints, change with time. These problems are characterized by two or more objective functions, where at least two objective functions are in conflict with one another. When solving real-world problems, the incorporation of human decision-makers (DMs)’ preferences or expert knowledge into the optimization process and thereby restricting the search to a specific region of the Pareto-optimal Front (POF) may result in more preferred or suitable solutions. This study proposes approaches that enable DMs to influence the search process with their preferences by reformulating the optimization problems as constrained problems. The subsequent constrained problems are solved using various constraint handling approaches, such as the penalization of infeasible solutions and the restriction of the search to the feasible region of the search space. The proposed constraint handling approaches are compared by incorporating the approaches into a differential evolution (DE) algorithm and measuring the algorithm’s performance using both standard performance measures for dynamic multi-objective optimization (DMOO), as well as newly proposed measures for constrained DMOPs. The new measures indicate how well an algorithm was able to find solutions in the objective space that best reflect the DM’s preferences and the Pareto-optimality goal of dynamic multi-objective optimization algorithms (DMOAs). The results indicate that the constraint handling approaches are effective in finding Pareto-optimal solutions that satisfy the preference constraints of a DM.
决策者偏好驱动的动态多目标优化
动态多目标优化问题(dops)是问题的要素(如目标函数和/或约束)随时间变化的优化问题。这些问题以两个或多个目标函数为特征,其中至少有两个目标函数相互冲突。在解决现实问题时,将人类决策者(DMs)的偏好或专家知识纳入优化过程,从而将搜索限制在帕累托最优前沿(POF)的特定区域,可能会产生更优选或更合适的解决方案。本研究提出了一些方法,通过将优化问题重新表述为约束问题,使决策经理能够用他们的偏好影响搜索过程。随后的约束问题采用各种约束处理方法来解决,如对不可行解的惩罚和将搜索限制在搜索空间的可行区域。通过将所提出的约束处理方法合并到差分进化(DE)算法中,并使用动态多目标优化(DMOO)的标准性能度量和约束dmop的新度量来衡量算法的性能,对所提出的约束处理方法进行了比较。这些新指标表明了算法在目标空间中找到最能反映决策制定者偏好和动态多目标优化算法(DMOAs)的帕累托最优目标的解决方案的能力。结果表明,约束处理方法可以有效地找到满足偏好约束的pareto最优解。
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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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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