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  4. Physics-informed neural networks for phase-resolved data assimilation and prediction of nonlinear ocean waves
 
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Physics-informed neural networks for phase-resolved data assimilation and prediction of nonlinear ocean waves

Publikationstyp
Journal Article
Date Issued
2025-09-02
Sprache
English
Author(s)
Ehlers, Svenja  
Strukturdynamik M-14  
Hoffmann, Norbert  orcid-logo
Strukturdynamik M-14  
Tang, Tianning  
Callaghan Adrian H.  
Cao, Rui
Padilla Enrique M.  
Fang, Yuxin
Stender, Merten  orcid-logo
TORE-URI
https://hdl.handle.net/11420/61259
Journal
Physical review fluids  
Volume
10
Issue
9
Article Number
094901
Citation
Physical Review Fluids 10 (9): 094901 (2025)
Publisher DOI
10.1103/ytyy-pvys
Scopus ID
2-s2.0-105027865122
Publisher
American Physical Society
The assimilation and prediction of phase-resolved surface gravity waves are critical challenges in ocean science and engineering. Potential flow theory (PFT) has been widely employed to develop wave models and numerical techniques for wave prediction. However, traditional wave prediction methods are often limited. For example, most simplified wave models have a limited ability to capture strong wave nonlinearity, while fully nonlinear PFT solvers often fail to meet the speed requirements of engineering applications. This computational inefficiency also hinders the development of effective data assimilation techniques, which are required to reconstruct spatial wave information from sparse measurements to initialize the wave prediction. To address these challenges, we propose a solver method that leverages physics-informed neural networks (PINNs) that parametrize PFT solutions as neural networks. This provides a computationally inexpensive way to assimilate and predict wave data. The proposed PINN framework is validated through comparisons with analytical linear PFT solutions and experimental data collected in a laboratory wave flume. The results demonstrate that our approach accurately captures and predicts irregular, nonlinear, and dispersive wave surface dynamics. Moreover, the PINN can infer the fully nonlinear velocity potential throughout the entire fluid volume solely from surface elevation measurements, enabling the calculation of fluid velocities that are difficult to measure experimentally.
DDC Class
600: Technology
006.31: Machine Learning
620.1: Engineering Mechanics and Materials Science
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