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A two-stage stochastic programming model for the parallel machine scheduling problem with machine capacity

机译:具有机器容量的并行机器调度问题的两阶段随机规划模型

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This paper proposes a two-stage stochastic programming model for the parallel machine scheduling problem where the objective is to determine the machines' capacities that maximize the expected net profit of on-time jobs when the due dates are uncertain. The stochastic model decomposes the problem into two stages: The first (FS) determines the optimal capacities of the machines whereas the second (SS) computes an estimate of the expected profit of the on-time jobs for given machines' capacities. For a given sample of due dates, SS reduces to the deterministic parallel weighted number of on-time jobs problem which can be solved using the efficient branch and bound of M'Hallah and Bulfin [16). FS is tackled using a sample average approximation (SAA) sampling approach which iteratively solves the problem for a number of random samples of due dates. SAA converges to the optimum in the expected sense as the sample size increases. In this implementation, SAA applies a ranking and selection procedure to obtain a good estimate of the expected profit with a reduced number of random samples. Extensive computational experiments show the efficacy of the stochastic model.
机译:针对并行机器调度问题,本文提出了一个两阶段随机规划模型,其目的是确定在到期日不确定的情况下最大化按时作业的预期净利润的机器容量。随机模型将问题分解为两个阶段:第一个(FS)确定机器的最佳产能,而第二个(SS)计算给定机器容量的按时作业预期利润的估计值。对于到期日期的给定样本,SS简化为确定性的并行加权的按时作业问题,可以使用M'Hallah和Bulfin的有效分支定界法来解决[16]。 FS使用样本平均近似(SAA)采样方法解决,该方法可迭代解决多个到期日随机样本的问题。随着样本量的增加,SAA在预期意义上收敛到最佳状态。在此实现中,SAA应用排名和选择程序以减少随机样本数量的方式获得对预期利润的良好估计。大量的计算实验证明了随机模型的有效性。

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