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Effective multi‐step ahead container throughput forecasting under the complex context

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Listed:
  • Yi Xiao
  • Minghu Xie
  • Yi Hu
  • Ming Yi

Abstract

Accurate and effective container throughput forecasting plays an essential role in economic dispatch and port operations, especially in the complex and uncertain context of the global Covid‐19 pandemic. In light of this, this research proposes an effective multi‐step ahead forecasting model called EWT‐TCN‐KMSE. Specifically, we initially use the empirical wavelet transform (EWT) to decompose the original container throughput series into multiple components with varying frequencies. Subsequently, the state‐of‐the‐art temporal convolutional network is utilized to predict the decomposed components individually, during which an improved loss function that combines mean square error (MSE) and kernel trick is employed. Eventually, the deduced prediction results can be obtained by integrating the predicted values of each component. In particular, this research introduces the MIMO (multi‐input and multi‐output) strategy to conduct multi‐step ahead container throughput forecasting. Based on the experiments in Shanghai port and Ningbo‐Zhoushan port, it can be found that the proposed model shows its superiority over benchmark models in terms of accuracy, stability, and significance in container throughput forecasting. Therefore, our proposed model can assist port operators in their daily management and decision making.

Suggested Citation

  • Yi Xiao & Minghu Xie & Yi Hu & Ming Yi, 2023. "Effective multi‐step ahead container throughput forecasting under the complex context," Journal of Forecasting, John Wiley & Sons, Ltd., vol. 42(7), pages 1823-1843, November.
  • Handle: RePEc:wly:jforec:v:42:y:2023:i:7:p:1823-1843
    DOI: 10.1002/for.2986
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    References listed on IDEAS

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