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Supply chain optimization modeling in uncertain environment with prediction mechanism

机译:具有预测机制的不确定环境下的供应链优化建模

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摘要

Purpose - The purpose of this paper is to explore new methods to improve supply chain management in uncertain environment, more specifically, to tackle the uncertain demand problem and the inventory optimization problem faced by most supply chain systems. Design/methodology/approach - The paper develops a multi-objective inventory optimization model, which combines the classic grey prediction GM(1,1) model with the metaheuristic method. The former is applied to achieve the forecasting mechanism in supply chain operations, and the latter is applied to optimize the model solution. Findings - Results show that the grey-based forecasting mechanism performs better than other prediction methods, such as the double exponential smoothing method used in this paper. The solution of the multi-objective inventory optimization model is also improved with the integration of grey prediction method. These indicate the importance of a forecasting mechanism in supply chain management.Originality/value - The paper succeeds in constructing a novel inventory optimization model and in providing a novel supply chain management framework. It shows for the first time that grey prediction method combined with metaheuristic method may be a valid approach to supply chain management under uncertain environment.
机译:目的-本文的目的是探索在不确定环境中改善供应链管理的新方法,更具体地说,是解决大多数供应链系统所面临的不确定需求问题和库存优化问题。设计/方法/方法-本文开发了一个多目标库存优化模型,该模型将经典的灰色预测GM(1,1)模型与元启发式方法相结合。前者用于实现供应链运作中的预测机制,而后者则用于优化模型解决方案。结果-结果表明,基于灰色的预测机制比其他预测方法(如本文中使用的双指数平滑方法)表现更好。集成了灰色预测方法,改进了多目标库存优化模型的求解方法。这些说明了预测机制在供应链管理中的重要性。原创性/价值-本文成功地构建了新颖的库存优化模型并提供了新颖的供应链管理框架。这首次表明,灰色预测方法与元启发式方法相结合可能是不确定环境下供应链管理的有效方法。

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