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Evolving neural network for printed circuit board sales forecasting

机译:进化神经网络用于印刷电路板销售预测

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摘要

Printed circuit board industry plays an important role in Taiwan's economy, but severe inventory stacking and material lacking problems still exist. However, the occurrence of these problems is likely to be decreased via establishing an accurate demand forecasting system. Thus, an Evolving Neural Network (ENN) forecasting model by integrating Genetic Algorithms and Neural Network is developed in this research. Along with trend and seasonal factors considered by Winter's model, effective economical factors are chosen by the Grey Relation Analysis. The numerical data of these factors and actual demand of the past 5 years are input into the training stage of ENN, while the comparison with other models is evaluated on testing stage. The experimental result shows that the performance of ENN is superior to traditional statistical models and Back Propagation Network. The ENN provides a promising solution to the forecasting problem for relevant industries.
机译:印刷电路板行业在台湾经济中起着重要作用,但严重的库存堆积和材料短缺问题仍然存在。但是,通过建立准确的需求预测系统,可以减少这些问题的发生。因此,本研究开发了一种将遗传算法与神经网络相结合的进化神经网络(ENN)预测模型。与温特模型考虑的趋势和季节因素一起,通过灰色关联分析选择有效的经济因素。这些因素的数值数据和过去5年的实际需求被输入到ENN的训练阶段,同时在测试阶段评估与其他模型的比较。实验结果表明,ENN的性能优于传统的统计模型和反向传播网络。 ENN为相关行业的预测问题提供了有希望的解决方案。

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