Two-stage Stochastic Programming for Parallel Machine Multitasking to Minimize the Weighted Sum of Tardiness and Earliness

Ming Liu, R. Liu, Xin Liu
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引用次数: 2

Abstract

Multitasking scheduling is essential for decision making in many academic disciplines, including operations management, computer science, and information systems. In multitasking settings, each waiting job interrupts the currently in-processing job, causing an interruption time and switching time. It is difficult to make production planning under the multitasking settings, especially when considering uncertainty. However, most existing works about the problem focus on the deterministic environment, which is unpractical in actual life. In this paper, we investigate a multitasking scheduling problem on parallel machines. Moreover, uncertain processing times, which may be caused by multi-skilled workers, different machines and so on, are taken into account. The objective is to minimize the weighted sum of the earliness and tardiness. A two-stage stochastic programming formulation based on scenarios is developed. The first stage is to determine the operating machine for each job, and the processing sequence of jobs is made in the second stage. Sample average approximation (SAA) is adopted to solve the model. Finally, computational experiments are conducted and we give the impacts by sensitivity analyses.
最小化延迟和提前加权和的并行机多任务两阶段随机规划
多任务调度在许多学科的决策中都是必不可少的,包括运营管理、计算机科学和信息系统。在多任务设置中,每个等待作业都会中断当前正在处理的作业,从而导致中断时间和切换时间。在多任务环境下,特别是在考虑不确定性的情况下,制定生产计划是困难的。然而,现有的关于该问题的研究大多集中在确定性的环境中,这在实际生活中是不现实的。本文研究了并行机器上的多任务调度问题。此外,考虑到多技术工人、不同机器等因素可能造成的加工时间的不确定性。目标是最小化早到和迟到的加权总和。提出了一种基于情景的两阶段随机规划公式。第一阶段是确定每个作业的操作机床,第二阶段是制定作业的加工顺序。采用样本平均近似(SAA)对模型进行求解。最后进行了计算实验,并通过灵敏度分析给出了影响。
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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