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Meta-Prediction Models for Bullwhip Effect Prediction of a Supply Chain Using Regression Analysis

机译:使用回归分析的牛鞭效应预测牛鞭效应预测的元预测模型

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摘要

In this study, the main factors that can cause the bullwhip effect and stock amplification are investigated using a simulation-based optimization approach and regression analysis. A two-echelon supply chain with uncertain customer demand and delivery lead time operating with the periodic-review reorder cycle policy is studied. The parameters of smoothing inventory replenishment and forecasting methods are required. These parameters are optimized in terms of minimizing the Total Stage Variance Ratios (TSVRs) of both echelons. The results show that even though all factors of interest have an impact on the bullwhip effect, using smoothing proportional controllers can reduce TSVRs (the sum of the order varaince ratio and net stock amplification). The meta-prediction models can effectively help predict the amount of the bullwhip effect of a chain under various situations with an average MAPE of less than 11%. The results can assist decision makers in the management of a supply chain to realize, benchmark with the optimal results, and reduce the TSVRs under an uncertain environment.
机译:在这项研究中,使用基于模拟的优化方法和回归分析来研究可能导致牛鞭效应和库存扩增的主要因素。研究了使用期限审查重新序列策略的客户需求和交付交付时间的不确定客户需求和交付提前时间的两个梯队供应链。需要平滑库存补充和预测方法的参数。这些参数在最小化两个梯度的总级方差比(TSVR)方面进行了优化。结果表明,即使所有感兴趣的因素对牛鞭效应产生影响,使用平滑的比例控制器可以减少TSVRS(订单秩序的总和和净库存扩增的总和)。元预测模型可以有效地帮助预测各种情况下链条的牛鞭效应的量,平均mape小于11%。结果可以帮助决策者在管理供应链中实现,以最佳结果为基准,并在不确定的环境下减少TSVR。

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