Deep Learning and Statistical Models for Forecasting Transportation Demand: A Case Study of Multiple Distribution Centers

被引:3
作者
Mamede, Fabio Polola [1 ]
da Silva, Roberto Fray [2 ]
de Brito Jr, Irineu [1 ,3 ]
Yoshizaki, Hugo Tsugunobu Yoshida [1 ,4 ]
Hino, Celso Mitsuo [4 ]
Cugnasca, Carlos Eduardo [1 ]
机构
[1] Univ Sao Paulo, Grad Program Logist Syst Engn, BR-05508010 Sao Paulo, Brazil
[2] Univ Sao Paulo, Inst Adv Studies, BR-05508010 Sao Paulo, Brazil
[3] Sao Paulo State Univ, Dept Environm Engn, BR-12247004 Sao Jose Dos Campos, Brazil
[4] Univ Sao Paulo, Dept Prod Engn, BR-05508010 Sao Paulo, Brazil
来源
LOGISTICS-BASEL | 2023年 / 7卷 / 04期
关键词
transportation demand forecasting; supply chain management; LSTM; ARIMA; data preprocessing; NEURAL-NETWORK; LSTM; ARIMA;
D O I
10.3390/logistics7040086
中图分类号
C93 [管理学];
学科分类号
12 ; 1201 ; 1202 ; 120202 ;
摘要
Background: Transportation demand forecasting is an essential activity for logistics operators and carriers. It leverages business operation decisions, infrastructure, management, and resource planning activities. Since 2015, there has been an increase in the use of deep learning models in this domain. However, there is a gap in works comparing traditional statistics and deep learning models for transportation demand forecasts. This work aimed to perform a case study of aggregated transportation demand forecasts in 54 distribution centers of a Brazilian carrier. Methods: A computational simulation and case study methods were applied, exploring the characteristics of the datasets through autoregressive integrated moving average (ARIMA) and its variations, in addition to a deep neural network, long short-term memory, known as LSTM. Eight scenarios were explored while considering different data preprocessing methods and evaluating how outliers, training and testing dataset splits during cross-validation, and the relevant hyperparameters of each model can affect the demand forecast. Results: The long short-term memory networks were observed to outperform the statistical methods in ninety-four percent of the dispatching units over the evaluated scenarios, while the autoregressive integrated moving average modeled the remaining five percent. Conclusions: This work found that forecasting transportation demands can address practical issues in supply chains, specially resource planning management.
引用
收藏
页数:19
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