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An Inventory Controlled Supply Chain Model Based on Improved BP Neural Network

机译:基于改进的BP神经网络的库存控制供应链模型

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Inventory control is a key factor for reducing supply chain cost and increasing customer satisfaction. However, prediction of inventory level is a challenging task for managers. As one of the widely used techniques for inventory control, standard BP neural network has such problems as low convergence rate and poor prediction accuracy. Aiming at these problems, a new fast convergent BP neural network model for predicting inventory level is developed in this paper. By adding an error offset, this paper deduces the new chain propagation rule and the new weight formula. This paper also applies the improved BP neural network model to predict the inventory level of an automotive parts company. The results show that the improved algorithm not only significantly exceeds the standard algorithm but also outperforms some other improved BP algorithms both on convergence rate and prediction accuracy.
机译:库存控制是降低供应链成本和提高客户满意度的关键因素。但是,库存水平的预测对于管理人员而言是一项艰巨的任务。标准BP神经网络作为一种广泛的库存控制技术,具有收敛速度慢,预测精度差等问题。针对这些问题,本文提出了一种新的快速收敛的BP神经网络模型来预测库存水平。通过添加误差补偿,推导了新的链传播规则和新的权重公式。本文还应用改进的BP神经网络模型来预测汽车零部件公司的库存水平。结果表明,该改进算法不仅在收敛速度和预测精度上均明显优于标准算法,而且优于其他一些改进的BP算法。

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