Regional Logistics Demand Prediction: A Long Short-Term Memory Network Method

被引:10
作者
Li, Ya [1 ]
Wei, Zhanguo [1 ]
机构
[1] Cent South Univ Forestry & Technol, Sch Logist & Transportat, Changsha 410000, Peoples R China
关键词
regional logistics needs; freight volume; LSTM; forecasting; FORECASTING METHOD; LINEAR-REGRESSION; SUPPLY CHAIN; FLOWS;
D O I
10.3390/su142013478
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
With the growth of e-commerce and the recurrence of the novel coronavirus pneumonia outbreak, the global logistics industry has been deeply affected. People are forced to shop online, which leads to a surge in logistics needs. Conversely, the novel coronavirus can also be transmitted through goods, so there are some security risks. Thus, in the post-epidemic era, the analysis of regional logistics needs can serve as a foundation for logistics planning and policy formation in the region, and it is critical to find a logistics needs forecasting index system and a effective method to effectively exploit the logistics demand information in recent years. In this paper, we use the freight volume to assess the logistics needs, and the Long short-term memory (LSTM) network to predict the regional logistics needs based on time series and impact factors. For the first time, the Changsha logistics needs prediction index system is built in terms of e-commerce and the post-epidemic era and compared with some well-known methods such as Grey Model (1,1), linear regression model, and Back Propagation neural network. The findings show that the LSTM network has the smallest prediction errors, and the logistics needs are not affected by the epidemic. Therefore, the authors suggest that the government and businesses pay more attention to regional logistics needs forecasting, choosing scientific prediction methods.
引用
收藏
页数:17
相关论文
共 33 条
[1]   Prediction of SARS epidemic by BP neural networks with online prediction strategy [J].
Bai, YP ;
Jin, Z .
CHAOS SOLITONS & FRACTALS, 2005, 26 (02) :559-569
[2]   An evaluation of volatility forecasting techniques [J].
Brailsford, TJ ;
Faff, RW .
JOURNAL OF BANKING & FINANCE, 1996, 20 (03) :419-438
[3]  
Chen M., 2013, MATLAB NEURAL NETWOR, P156
[4]   The mean-variance approach for global supply chain risk analysis with air logistics in the blockchain technology era [J].
Choi, Tsan-Ming ;
Wen, Xin ;
Sun, Xuting ;
Chung, Sai-Ho .
TRANSPORTATION RESEARCH PART E-LOGISTICS AND TRANSPORTATION REVIEW, 2019, 127 :178-191
[5]   CONTROL-PROBLEMS OF GREY SYSTEMS [J].
DENG, JL .
SYSTEMS & CONTROL LETTERS, 1982, 1 (05) :288-294
[6]  
Du B., 2019, P 5 ANN INT C NETWOR, V1288
[7]   基于复合核模的物流需求预测研究 [J].
范思遐 ;
吴斌 .
工业工程与管理, 2018, 23 (02) :40-44
[8]   Force modeling and forecasting in creep feed grinding using improved BP neural network [J].
Fuh, KH ;
Wang, SB .
INTERNATIONAL JOURNAL OF MACHINE TOOLS & MANUFACTURE, 1997, 37 (08) :1167-1178
[9]   Empirical Research on the Spatial Distribution and Determinants of Regional E-Commerce in China: Evidence from Chinese Provinces [J].
Geng, Jinzhou ;
Li, Chenggang .
EMERGING MARKETS FINANCE AND TRADE, 2020, 56 (13) :3117-3133