A Deep Learning-Based Approach for Empirical Modelling of Single-Point Wave Spectra in Open Oceans

IF 2.8 2区 地球科学 Q1 OCEANOGRAPHY Journal of Physical Oceanography Pub Date : 2023-06-09 DOI:10.1175/jpo-d-22-0198.1
Yuhao Song, Haoyu Jiang
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Abstract

Directional wave spectra are of importance for numerous practical applications such as seafaring and ocean engineering. The wave spectral densities at a certain point in the open ocean are significantly correlated to the local wind field and historical remote wind field. This feature can be used to predict the wave spectrum at that point using the wind field. In this study, a Convolutional Neural Network (CNN) model was established to estimate wave spectra at a target point using the wind field from the ERA5 dataset. A geospatial range where the wind could impact the target point was selected and then the historical wind field data within the range was analyzed to extract the nonlinear quantitative relationships between wind fields and wave spectra. For the spectral densities at a given direction, the wind data along the direction where waves come from were used as the input of the CNN. The model was trained to minimize the Mean Square Error (MSE) between the CNN-predicted and ERA5 re-analysis spectral density. The data structure of the wind input is reorganized into a polar grid centered on the target point to make the model applicable to different open-ocean locations worldwide. The results show that the model can well predict the wave spectrum shapes and integral wave parameters. The model allows for the prediction of single-point wave spectra in the open ocean with low computational cost and can be helpful for the study of spectral wave climate.
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基于深度学习的公海单点波谱经验建模方法
定向波谱在航海和海洋工程等许多实际应用中具有重要意义。公海某一点的波浪谱密度与局地风场和历史远地风场有显著的相关关系。这一特征可用于利用风场预测该点的波谱。在本研究中,利用ERA5数据集的风场,建立了卷积神经网络(CNN)模型来估计目标点的波浪谱。选取风能影响目标点的地理空间范围,对该范围内的历史风场数据进行分析,提取风场与波谱的非线性定量关系。对于给定方向上的谱密度,我们使用波浪产生方向上的风数据作为CNN的输入。对该模型进行训练,以最小化cnn预测和ERA5再分析谱密度之间的均方误差(MSE)。将风输入数据结构重组为以目标点为中心的极网格,使模型适用于全球不同的开放海域。结果表明,该模型能较好地预测波浪的谱形和积分波参数。该模型计算成本低,可用于开阔海域单点波浪谱的预测,有助于谱波气候的研究。
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来源期刊
CiteScore
2.40
自引率
20.00%
发文量
200
审稿时长
4.5 months
期刊介绍: The Journal of Physical Oceanography (JPO) (ISSN: 0022-3670; eISSN: 1520-0485) publishes research related to the physics of the ocean and to processes operating at its boundaries. Observational, theoretical, and modeling studies are all welcome, especially those that focus on elucidating specific physical processes. Papers that investigate interactions with other components of the Earth system (e.g., ocean–atmosphere, physical–biological, and physical–chemical interactions) as well as studies of other fluid systems (e.g., lakes and laboratory tanks) are also invited, as long as their focus is on understanding the ocean or its role in the Earth system.
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