Multi factors-PredRNN based significant wave height prediction in the Bohai, Yellow, and East China Seas

Author:

Cao Haowei,Liu Guangliang,Huo Jidong,Gong Xun,Wang Yucheng,Zhao Zhigang,Xu Da

Abstract

IntroductionCurrently, deep-learning-based prediction of Significant Wave Height (SWH) is mostly performed for a single location in the ocean or simply relies on a single factor (SF). Such approaches have the disadvantage of lacking spatial correlations or dynamic complexity, leading to an inevitable growth of the prediction error with time.MethodsHere, attempting a solution, we develop a Multi-Factor (MF) data-driven 2D SWH prediction model for the Bohai, Yellow, and East China Seas (BYECS). Our model is developed based on a multi-channel PredRNN algorithm that is an improved deep-learning calculation of the ConvLSTM.ResultsIn our model, the MF of historical SWH, 10 m surface winds, ocean surface currents, bathymetries, and open boundaries are used to predict 2D SWH in the next 1-72h. Our modeled SWHs show the correlation coefficients as 0.98, 0.90, and 0.87 for the next 6h, 24h, and 72h, respectively.DiscussionAccording to the ablation experiments, winds are the dominant factor in the MF model and the memory-decoupling module is the key improvement of the PredRNN compared to the ConvLSTM. Furthermore, when the historical SWH is excluded from the input, the correlation coefficients remain around 0.95 in the 1-72h prediction due to the elimination of the error accumulation. It was worse than the MF-PredRNN with the historical SWH before 10h but better than it after 10h. Overall, for the prediction of SWH in the BYECS, our MF-PredRNN-based 2D SWH prediction model significantly improves the accuracy and extends the effective prediction time length.

Funder

Ministry of Science and Technology of the People's Republic of China

Key Technology Research and Development Program of Shandong

National Key Research and Development Program of China

State Key Laboratory of Biogeology and Environmental Geology

Jinan Science and Technology Bureau

Qilu University of Technology

Publisher

Frontiers Media SA

Subject

Ocean Engineering,Water Science and Technology,Aquatic Science,Global and Planetary Change,Oceanography

Reference36 articles.

1. Development of a 2-d deep learning regional wave field forecast model based on convolutional neural network and the application in south China Sea;Bai;Appl. Ocean. Res.,2022

2. Bidirectional modeling of surface winds and significant wave heights in the Caribbean;Bethel;Sea. J. Mar. Sci. Eng.,2021

3. A third-generation wave model for coastal regions: 1. model description and validation;Booij;J. Geophys. Res. Oceans.,1999

4. Digital bathymetric and topographic data for neighboring seas of Korea;Choi;J. Korean. Soc Coast. Ocean. Eng.,2002

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