Wave height forecast method with uncertainty quantification based on Gaussian process regression

被引:0
|
作者
Zi-lu Ouyang [1 ]
Chao-fan Li [1 ]
Ke Zhan [1 ]
Chuan-qing Li [1 ]
Ren-chuan Zhu [2 ]
Zao-jian Zou [1 ]
机构
[1] Shanghai Jiao Tong University,School of Ocean and Civil Engineering
[2] Shanghai Ship and Shipping Research Institute CO.,State Key Laboratory of Navigation and Safety Technology
[3] Ltd,State Key Laboratory of Ocean Engineering
[4] Shanghai Jiao Tong University,undefined
关键词
Wave height forecast; data-driven modeling; Gaussian process regression (GPR); bayes inference; covariance function;
D O I
10.1007/s42241-024-0070-2
中图分类号
学科分类号
摘要
Wave height forecast (WHF) is of great significance to exploit the marine renewables and improve the safety of ship navigation at sea. With the development of machine learning technology, WHF can be realized in an easy-to-operate and reliable way, which improves its engineering practicability. This paper utilizes a data-driven method, Gaussian process regression (GPR), to model and predict the wave height on the basis of the input and output data. With the help of Bayes inference, the prediction results contain the uncertainty quantification naturally. The comparative studies are carried out to evaluate the performance of GPR based on the simulation data generated by high-order spectral method and the experimental data collected in the deep-water towing tank at the Shanghai Ship and Shipping Research Institute. The results demonstrate that GPR is able to model and predict the wave height with acceptable accuracy, making it a potential choice for engineering application.
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页码:817 / 827
页数:10
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