Chinese Journal of Ship Research, Volume. 19, Issue 6, 303(2024)

Ship track prediction based on Bayesian optimization in temporal convolutional networks

Jinyuan LI1, Faxin ZHU1, Xianbin TENG2, and Qilin BI2
Author Affiliations
  • 1School of Ship and Marine, Zhejiang Ocean University, Zhoushan 316022, China
  • 2College of Marine Engineering, Guangzhou Maritime College, Guangzhou 510725, China
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    Objective

    As the traditional ship trajectory prediction method is prone to gradient explosion and long calculation time, this paper seeks to improve its accuracy and calculation efficiency by proposing a ship trajectory prediction model based on an improved Bayesian optimization algorithm (IBOA) and temporal convolution network (TCN).

    Method

    A temporal pattern attention (TPA) mechanism is introduced to extract the weights of each input feature and ensure the timing of the historical flight track data. At the same time, a reversible residual network (RevNet) is introduced to reduce the memory occupied by TCN model training. The IBOA is then used to find the optimality of the hyperparameters in the TCN (size of kernel K, expansion coefficient d). The model is finally validated using a five-fold cross-validation method, and trajectory prediction is carried out after obtaining the optimal model.

    Result

    The trajectory data is collected by automatic identification system (AIS) and verified. The root mean square error (RMSE) is found to be increased by 5.5×10-5, 3.5×10-4 and 6×10-4 in weak coupling, medium coupling and strong coupling track prediction respectively.

    Conclusion

    The proposed network has good adaptability to complex trajectories and higher accuracy than the traditional model and long short-term memory (LSTM) model, while maintaining high prediction accuracy for trajectories with strong coupling.

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    Jinyuan LI, Faxin ZHU, Xianbin TENG, Qilin BI. Ship track prediction based on Bayesian optimization in temporal convolutional networks[J]. Chinese Journal of Ship Research, 2024, 19(6): 303

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    Paper Information

    Category: Weapon, Electronic and Information System

    Received: Jan. 24, 2024

    Accepted: --

    Published Online: Mar. 14, 2025

    The Author Email:

    DOI:10.19693/j.issn.1673-3185.03755

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