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Hybrid stochastic and robust optimization model for lot-sizing and scheduling problems under uncertainties

机译:用于批判和调度问题的混合随机与鲁棒优化模型下的不确定性

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摘要

Uncertainty is among the significant concerns in production scheduling. It has become increasingly important to take uncertainties into consideration for lot-sizing and scheduling. In this paper, we adopt the Hybrid Stochastic and Robust Optimization (HSRO) approach in lot-sizing and scheduling problems in which suppliers have the flexibility of satisfying a fraction of demand based on the market and their policies. Two types of uncertainties have been considered simultaneously: demand and overtime processing cost. Robust optimization is adopted for uncertain demand and Sample Average Approximation (SAA) technique is applied to solve the stochastic program for uncertain overtime processing cost. Numerical results based on a manufacturing company has been conducted to not only validate the proposed hybrid model but also quantitatively demonstrate the merit of our approach. Sample size stability test and sensitivity analyses on various parameters have also been conducted. (C) 2019 Elsevier B.V. All rights reserved.
机译:不确定性是生产计划中的重大问题。对批判和调度考虑不确定性越来越重要。在本文中,我们采用了在批准和调度问题中采用了混合随机和鲁棒优化(HSRO)方法,其中供应商基于市场及其政策具有满足需求的一小部分的灵活性。同时考虑了两种类型的不确定性:需求和加班处理成本。不确定的需求采用鲁棒优化,并应用样本平均近似(SAA)技术以解决随机性加工成本的随机计划。基于制造公司的数值结果已经进行,不仅验证了所提出的混合模型,而且还定量展示了我们方法的优点。还进行了各种参数的样本大小稳定性测试和敏感性分析。 (c)2019 Elsevier B.v.保留所有权利。

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