Urban cold-chain logistics demand predicting model based on improved neural network model

Ying Chen, Qiu-ming Wu, Li-guo Shao
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引用次数: 5

Abstract

With the popularity of the Internet and mobile terminals, the development of e-commerce has become hotter. Therefore, e-commerce research starts to focus on the statistics and prediction of the cargo volume of logistics. This study briefly introduced the back-propagation (BP) neural network model and principal component analysis (PCA) method and combined them to obtain an improved PCA-BP neural network model. Then the traditional BP neural network model and the improved PCA-BP neural network model were used to perform the empirical analysis of the cold chain logistics demand of fruits and vegetables in city A from 2010 to 2018. The results showed that the main factors that affected the local cold chain logistics demand were the growth rate of GDP, the added value of primary industry, the planting area of fruits and vegetables, and the consumption price index of fruits and vegetables; both kinds of neural networks model could effectively predict the cold chain logistics demand, but the predicted value of the PCA-BP neural network model was more fitted with the actual value. The prediction error of the BP neural network model was larger, and the fluctuation was obvious within the prediction interval. Moreover, the time required for the prediction by the PCA-BP neural network model was less than that by the BP neural network model. In summary, the improved PCA-BP neural network model is faster and more accurate than the traditional BP model in predicting the cold chain logistics demand.
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基于改进神经网络模型的城市冷链物流需求预测模型
随着互联网和移动终端的普及,电子商务的发展变得更加火热。因此,电子商务的研究开始关注物流货运量的统计和预测。本文简要介绍了反向传播(BP)神经网络模型和主成分分析(PCA)方法,并将两者结合,得到了一种改进的PCA-BP神经网络模型。然后采用传统的BP神经网络模型和改进的PCA-BP神经网络模型对A市2010 - 2018年果蔬冷链物流需求进行实证分析。结果表明:影响地方冷链物流需求的主要因素是GDP增速、第一产业增加值、果蔬种植面积和果蔬消费价格指数;两种神经网络模型均能有效预测冷链物流需求,但PCA-BP神经网络模型的预测值更接近实际值。BP神经网络模型预测误差较大,且在预测区间内波动明显。此外,PCA-BP神经网络模型预测所需的时间比BP神经网络模型的预测时间要短。综上所述,改进的PCA-BP神经网络模型在预测冷链物流需求方面比传统BP模型更快、更准确。
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来源期刊
International Journal of Metrology and Quality Engineering
International Journal of Metrology and Quality Engineering Engineering-Safety, Risk, Reliability and Quality
CiteScore
1.70
自引率
0.00%
发文量
8
审稿时长
8 weeks
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