Demand forecasting based on empirical data is a viable approach for optimizing a supply chain. However, in this approach, a model constructed from past data occasionally becomes outdated due to long-term changes in the environment, in which case the model should be updated (i.e., retrained) using the latest data. In this study, we examine the effects of updating models in a supply chain using a minimal setting. We demonstrate that when each party in the supply chain has its own forecasting model, uncoordinated model retraining causes the bullwhip effect even if a very simple replenishment policy is applied. Our results also indicate that sharing the forecasting model among the parties involved significantly reduces the bullwhip effect.
翻译:以经验数据为基础的需求预测是优化供应链的可行办法,然而,在这一办法中,由于环境的长期变化,根据过去数据构建的模型有时会由于环境的长期变化而过时,在这种情况下,模型应当使用最新数据更新(即再培训),在本研究中,我们审查利用最低环境在供应链中更新模型的影响,我们证明,当供应链的每个当事方都有自己的预测模型时,未经协调的模式再培训模式即使适用非常简单的补充政策,也会造成牛鞭效应。我们的结果还表明,在有关各方之间共享预测模型会大大降低牛鞭效应。