基于输入-输出数据的多目标调度问题的加权因子估计

Kohei Asanuma, T. Nishi
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引用次数: 1

摘要

另一种是基于逆优化的估计方法。将这些方法应用于三目标并行机器调度问题,该问题的目标函数包括最大完工时间、完工时间加权和、延迟时间加权和、提前和延迟时间加权和和设置成本。评估了所提出的机器学习和逆优化方法的准确性。为了减少计算量,提出了一种学习输入输出数据的代理模型。计算结果表明,该方法可以有效地从最优解中对目标函数中的因子进行加权。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Weighting Factors for Multi-Objective Scheduling Problems using Input-Output Data
for other one is the estimation method based on inverse optimization. These methods are applied to three-objectives parallel machine scheduling problems, whose objective functions consist of makespan, the weighted sum of completion time, the weighted sum of tardiness, the weighted sum of earliness and tardiness, and setup costs. The accuracy of the proposed machine learning and inverse optimization methods is evaluated. A surrogate model that learns input-output data is proposed to reduce the computational efforts. Computational results show the effectiveness of the proposed method for weighting factors in the objective function from the optimal solutions.
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