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

IF 2.5 3区 工程技术
Zi-lu Ouyang, Chao-fan Li, Ke Zhan, Chuan-qing Li, Ren-chuan Zhu, Zao-jian Zou
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引用次数: 0

Abstract

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.

基于高斯过程回归的不确定性量化波高预报方法
浪高预报对开发利用海洋可再生能源,提高海上船舶航行安全具有重要意义。随着机器学习技术的发展,WHF可以以易于操作和可靠的方式实现,提高了其工程实用性。本文利用数据驱动的方法高斯过程回归(GPR),在输入和输出数据的基础上对波高进行建模和预测。在贝叶斯推理的帮助下,预测结果自然包含了不确定性量化。基于高阶谱法模拟数据和上海船舶研究所深水拖曳舱实验数据,对探地雷达的性能进行了对比研究。结果表明,探地雷达能够以可接受的精度模拟和预测波高,是工程应用的潜在选择。
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来源期刊
自引率
12.00%
发文量
2374
审稿时长
4.6 months
期刊介绍: Journal of Hydrodynamics is devoted to the publication of original theoretical, computational and experimental contributions to the all aspects of hydrodynamics. It covers advances in the naval architecture and ocean engineering, marine and ocean engineering, environmental engineering, water conservancy and hydropower engineering, energy exploration, chemical engineering, biological and biomedical engineering etc.
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