逆向传播神经网络在供应链需求预测中的实现——一个实际案例研究

Yun-Hui Cheng, Liao Hai-Wei, Yun-Shiow Chen
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引用次数: 5

摘要

在物流信息系统中,需求预测是实现供应链高效管理的关键。在市场营销中,对产品需求的预测不准确,必然会导致竞争能力的下降、客户的流失和成本的增加。本文采用人工神经网络方法对一个实际案例进行了研究。本案例为台湾一家中等规模的电连接器生产公司,该公司生产各种连接器,以满足移动电话,TFT, PDA, CD-ROM, CD-RW, DVD-ROM, DVD-player,笔记本电脑,数码相机等各种组装产品的市场需求。所研究的公司生产的连接器类型超过50种。由于研究企业所提供的实验数据不足,利用仿真工具AweSim,根据历史接收订单,对不同类型连接器的订单进行仿真,并利用一组仿真数据训练所提出的反向传播网络(BPN),从而为研究企业提供合适的需求预测工具。对四种BPN结构进行训练和测试,并通过方差分析确定最佳结构。BPN需求预测方法已在某企业得到应用
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of a Back-Propagation Neural Network for Demand Forecasting in a Supply Chain - A Practical Case Study
Demand forecasting is a key way to the efficient management of SCM (supply chain management) in a logistics information system. A poor forecasting approach for the product demands in marketing must cause to decrease competitive capability, lose customers and increase costs. A real case of the product demand forecasting was studied by an artificial neural network (ANN) approach demonstrated in this paper. The studied case is a medium-scale electrical connectors production corporation in Taiwan, which manufactures a variety of the connectors to supply marketing needs of diverse assembly products including mobile telephone, TFT, PDA, CD-ROM, CD-RW, DVD-ROM, DVD-player, notebook computer, digital camera, etc.. The types of the connectors produced by the studied firm are over 50. Owing to the insufficient experimental data provided by the studied corporation, a simulation tool called AweSim was used to simulate the orders of the various types of connectors, according to the historical received orders, and a set of the simulated data was used to train the proposed back-propagation network (BPN) so as to offer a proper demand forecasting tool to the studied firm. Four BPN structures were trained and tested and the best one was determined by ANOVA analysis. The BPN demand forecasting has being used by the studied corporation
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