Forecasting container throughput with long short-term memory networks

被引:52
作者
Shankar, Sonali [1 ]
Ilavarasan, P. Vigneswara [2 ]
Punia, Sushil [2 ]
Singh, Surya Prakash [2 ]
机构
[1] Bharti Sch Telecom Technol & Management, New Delhi, India
[2] Indian Inst Technol, Dept Management Studies, New Delhi, India
关键词
Logistics; Time series; Forecasting; Deep learning; LSTM; Maritime supply chain; FINANCIAL TIME-SERIES; NEURAL-NETWORK; MODEL SELECTION; DECOMPOSITION; HYBRID; TRANSSHIPMENT; ARIMA; PORT;
D O I
10.1108/IMDS-07-2019-0370
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Purpose Better forecasting always leads to better management and planning of the operations. The container throughput data are complex and often have multiple seasonality. This makes it difficult to forecast accurately. The purpose of this paper is to forecast container throughput using deep learning methods and benchmark its performance over other traditional time-series methods. Design/methodology/approach In this study, long short-term memory (LSTM) networks are implemented to forecast container throughput. The container throughput data of the Port of Singapore are used for empirical analysis. The forecasting performance of the LSTM model is compared with seven different time-series forecasting methods, namely, autoregressive integrated moving average (ARIMA), simple exponential smoothing, Holt-Winter's, error-trend-seasonality, trigonometric regressors (TBATS), neural network (NN) and ARIMA + NN. The relative error matrix is used to analyze the performance of the different models with respect to bias, accuracy and uncertainty. Findings The results showed that LSTM outperformed all other benchmark methods. From a statistical perspective, the Diebold-Mariano test is also conducted to further substantiate better forecasting performance of LSTM over other counterpart methods. Originality/value The proposed study is a contribution to the literature on the container throughput forecasting and adds value to the supply chain theory of forecasting. Second, this study explained the architecture of the deep-learning-based LSTM method and discussed in detail the steps to implement it.
引用
收藏
页码:425 / 441
页数:17
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