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Scenario-based model predictive control for multi-echelon supply chain management

机译:基于场景的多级供应链管理模型预测控制

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摘要

Policies for managing multi-echelon supply chains can be considered mathematically as large-scale dynamic programs, affected by uncertainty and incomplete information. Except for a few special cases, optimal solutions are computationally intractable for systems of realistic size. This paper proposes a novel approximation scheme using scenario-based model predictive control (SCMPC), based on recent results in scenario-based optimization. The presented SCMPC approach can handle supply chains with stochastic planning uncertainties from various sources (demands, lead times, prices, etc.) and of a very general nature (distributions, correlations, etc.). Moreover, it guarantees a specified customer service level, when applied in a rolling horizon fashion. At the same time, SCMPC is computationally efficient and able to tackle problems of a similar scale as manageable by deterministic optimization. For a large class of supply chain models, SCMPC may therefore offer substantial advantages over robust or stochastic optimization. (C) 2016 Elsevier B.V. All rights reserved.
机译:数学上,将多级供应链管理的策略可以看作是大型动态程序,受不确定性和不完整信息影响。除少数特殊情况外,对于实际大小的系统,最佳解决方案在计算上难以解决。本文基于基于场景的优化中的最新结果,提出了一种基于场景的模型预测控制(SCMPC)的新颖近似方案。提出的SCMPC方法可以处理来自各种来源(需求,交货时间,价格等)的具有随机计划不确定性的供应链,并且具有非常普遍的性质(分布,关联性等)。此外,当以滚动方式应用时,它可以保证指定的客户服务水平。同时,SCMPC计算效率高,并且能够解决确定性优化可管理的类似规模的问题。因此,对于一大类供应链模型,SCMPC可能比健壮或随机优化具有实质性优势。 (C)2016 Elsevier B.V.保留所有权利。

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