A distributionally robust approach for the parallel machine scheduling problem with optional machines and job tardiness

IF 4.1 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Haimin Lu, Ye Shi, Zhi Pei
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引用次数: 0

Abstract

This paper investigates a parallel machine scheduling problem with uncertain job processing time, where the job tardiness and optional machines are considered. To address the factor of energy saving, only a subset of all available machines are turned on, which is referred to as not-all-machine (NAM). To depict the uncertain processing time, a mean–mean absolute deviation (MAD) ambiguity set is utilized, and the cost of job tardiness is minimized under the worst-case distribution scenario over the ambiguity set. After building a distributionally robust optimization (DRO) model, theoretical bounds of the optimal number of machines are obtained. Since the model is not computationally scalable, an upper bound on its inner minimization problem is employed, and a mixed integer linear programming (MILP) approximation is obtained based on McCormick inequalities. For the DRO model, tailored speedup techniques are employed, significantly enhancing the computational performance. To evaluate the validity of the proposed DRO model, we compare it with its stochastic programming (SP) counterpart under various parameter settings. Numerical experiments demonstrate that the DRO model exhibits strong performance in the worst-case scenarios. As the problem size increases, the DRO model casts clear advantages over the SP model in terms of computational efficiency and reliability. It is observed that the performance of the DRO model is more stable than that of the nominal sequence, especially with loose due dates. Furthermore, the out-of-sample performance under various decision making preferences shed new lights into the trade-off between energy saving and production efficiency.

具有可选机器和作业延迟的并行机器调度问题的分布稳健方法
本文研究了作业处理时间不确定的并行机器调度问题,其中考虑了作业延迟和可选机器。为了解决节能问题,所有可用机器中只有一个子集被打开,这被称为 "非全机器(NAM)"。为了描述不确定的处理时间,利用了均值-均值绝对偏差(MAD)模糊集,并在模糊集的最坏情况分布情景下最小化作业延迟成本。建立分布稳健优化(DRO)模型后,就能获得最佳机器数量的理论边界。由于该模型在计算上不可扩展,因此采用了其内部最小化问题的上限,并基于麦考密克不等式获得了混合整数线性规划(MILP)近似值。对于 DRO 模型,采用了量身定制的加速技术,大大提高了计算性能。为了评估所提出的 DRO 模型的有效性,我们将其与不同参数设置下的随机编程 (SP) 模型进行了比较。数值实验证明,DRO 模型在最坏的情况下表现出很强的性能。随着问题规模的增大,DRO 模型在计算效率和可靠性方面明显优于 SP 模型。据观察,DRO 模型的性能比标称序列更稳定,尤其是在到期日宽松的情况下。此外,不同决策偏好下的样本外性能也为节能和生产效率之间的权衡提供了新的启示。
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
Computers & Operations Research
Computers & Operations Research 工程技术-工程:工业
CiteScore
8.60
自引率
8.70%
发文量
292
审稿时长
8.5 months
期刊介绍: Operations research and computers meet in a large number of scientific fields, many of which are of vital current concern to our troubled society. These include, among others, ecology, transportation, safety, reliability, urban planning, economics, inventory control, investment strategy and logistics (including reverse logistics). Computers & Operations Research provides an international forum for the application of computers and operations research techniques to problems in these and related fields.
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