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Reference point based evolutionary multi-objective optimization algorithms with convergence properties using KKTPM and ASF metrics

机译:基于参考点基于kktpm和asf度量的收敛性的进化多目标优化算法

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In a preference-based multi-objective optimization task, the goal is to find a subset of the Pareto-optimal set close to a supplied set of aspiration points. The reference point based non-dominated sorting genetic algorithm (R-NSGA-II) was proposed for such problem-solving tasks. R-NSGA-II aims to finding Pareto-optimal points close, in the sense of Euclidean distance in the objective space, to the supplied aspiration points, instead of finding the entire Pareto-optimal set. In this paper, R-NSGA-II method is modified using recently proposed Karush-Kuhn-Tucker proximity measure (KKTPM) and achievement scalarization function (ASF) metrics, instead of Euclidean distance metric. While a distance measure may not produce desired solutions, KKTPM-based distance measure allows a theoretically-convergent local or global Pareto solutions satisfying KKT optimality conditions and the ASF measure allows Pareto-compliant solutions to be found. A new technique for calculating KKTPM measure of a solution in the presence of an aspiration point is developed in this paper. The proposed modified R-NSGA-II methods are able to solve as many as 10-objective problems as effectively or better than the existing R-NSGA-II algorithm.
机译:在基于偏好的多目标优化任务中,目标是找到帕累托最优集的一个子集,该子集靠近所提供的一组期望点。基于参考点的非支配排序遗传算法(R-NSGA-II)被提出用于此类问题求解任务。R-NSGA-II的目标是在目标空间中的欧几里德距离意义上找到与所提供的期望点接近的帕累托最优点,而不是找到整个帕累托最优集。本文用最近提出的卡鲁什-库恩-塔克邻近测度(KKPM)和成就标量化函数(ASF)度量代替欧几里德距离度量对R-NSGA-II方法进行了改进。虽然距离度量可能不会产生期望的解,但基于KKPM的距离度量允许理论上收敛的局部或全局帕累托解满足KKT最优性条件,而ASF度量允许找到符合帕累托的解。本文提出了一种计算有吸气点的溶液KKTPM测度的新方法。与现有的R-NSGA-II算法相比,所提出的改进R-NSGA-II算法能够有效或更好地解决多达10个目标问题。

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