Preference Based Multiobjective Evolutionary Algorithm for Constrained Optimization Problems

Ning Dong, Fei Wei, Yuping Wang
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引用次数: 1

Abstract

Constrained optimization problems (COPs) are converted into a bi-objective optimization problem first, and a novel fitness function based on achievement scalarizing function (ASF) is presented. The fitness function adopts the valuable properties of ASF and can measure the merits of individuals by the weighting distance from the ndividuals to the reference point, where the reference point and the weighting vector reflect the preference of decision makers. In the initial stage of the evolution, the main preference should be put in generating more feasible solutions, and in the later stage of the evolution, the main preference should be put in improving the objective function. For this purpose, the proper reference point and weighting vector are chosen adaptively to realize the preference in different evolutionary stages. Then a new preference based multiobjective evolutionary algorithm is proposed based on all these. The numerical experiments for four standard test functions with different characteristic illustrate that the new proposed algorithm is effective and efficient.
约束优化问题的基于偏好的多目标进化算法
首先将约束优化问题转化为双目标优化问题,提出了一种新的基于成就标度函数的适应度函数。适应度函数利用了ASF的宝贵属性,可以通过个体到参考点的加权距离来衡量个体的优劣,参考点和加权向量反映了决策者的偏好。在进化的初始阶段,主要的偏好应该放在产生更可行的解决方案上,在进化的后期,主要的偏好应该放在改进目标函数上。为此,自适应选择合适的参考点和权重向量,实现不同进化阶段的偏好。在此基础上提出了一种新的基于偏好的多目标进化算法。对四种具有不同特征的标准测试函数进行了数值实验,结果表明该算法是有效的。
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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