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Measure of bullwhip effect in supply chains with first-order bivariate vector autoregression time-series demand model

机译:用一阶二元向量自回归时间序列需求模型衡量供应链中的牛鞭效应

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With supply chains becoming increasingly global, the issue of bullwhip effect, a phenomenon attributable to demand fluctuation in the upstream section of the supply chains, has received greater attention from many researchers. However, most existing research studies on quantifying the bullwhip effect were conducted under the first-order autoregressive [ARM] incoming demand process or its variants as the fundamental demand process, thereby failing to account for the retailer demand dependency. This research work thus examined the bullwhip effect for the first-order bivariate vector autoregression [VAR (1)] demand process in a two-stage supply chain consisting of one supplier and two retailers. The impacts of the correlation parameters of the demand process, the correlation coefficient between the two error terms, and the variances of the error terms on the bullwhip effect were investigated. As such, the measure of the bullwhip effect was established using an analytical approach in which the minimum mean square error (MMSE) forecasting method and the base stock policy were applied to all members of the supply chain. Numerical experiments were then conducted to illustrate the behavior of the bullwhip effect with respect to various parameters of the demand processes to see in which situations the bullwhip effect would be absent. In addition, an evaluation of the inventory variance ratio was analyzed. (C) 2016 Elsevier Ltd. All rights reserved.
机译:随着供应链日益全球化,牛鞭效应问题(一种由于供应链上游部分的需求波动而引起的现象)受到了许多研究人员的关注。但是,大多数有关量化牛鞭效应的研究都是在一阶自回归[ARM]传入需求过程或其变体(作为基本需求过程)下进行的,因此无法解释零售商需求的依赖性。因此,这项研究工作研究了由一个供应商和两个零售商组成的两级供应链中一阶二元向量自回归[VAR(1)]需求过程的牛鞭效应。研究了需求过程的相关参数,两个误差项之间的相关系数以及误差项的方差对牛鞭效应的影响。因此,牛鞭效应的度量是使用分析方法建立的,其中最小均方误差(MMSE)预测方法和基本库存策略适用于供应链的所有成员。然后进行了数值实验,以说明牛鞭效应相对于需求过程的各种参数的行为,以查看在哪种情况下牛鞭效应将不存在。另外,分析了库存差异率的评估。 (C)2016 Elsevier Ltd.保留所有权利。

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