Physics informed neural network framework for time-varying wind stress drag coefficient identification in the Ekman model

Aug 13, 2025·
Yitong Sun
Hengkai YAO
Hengkai YAO
Corresponding
,
Dezhou Yang
,
Tangying Lv
Qingliang Liu
Qingliang Liu
,
Cheng Luo
Shanliang Zhu
Shanliang Zhu
Corresponding
· 0 min read
Abstract
The Ekman equation is a fundamental model for describing the wind stress response in the ocean’s upper layer,with its key parameters—the vertical eddy viscosity coefficient (VEVC) and wind stress drag coefficient (WSDC), governing vertical momentum transport within the ocean and air-sea momentum transfer. This study introduces a physics-informed neural network (PINN) model integrated with a discrete approximation method to overcome challenges in computing derivative terms under Neumann boundary conditions, enabling precise joint identification of the VEVC and time-varying WSDC. To support the model training and evaluation, especially in the absence of real-world ocean observations, a high-resolution synthetic dataset is generated using a finite difference solution of the Ekman equation, serving as the ground truth. Using this dataset, 13 numerical experiments are conducted across cases involving constant, linear, quadratic, and trigonometric time-varying WSDC and wind speed combinations. Moreover, some selected cases are used for comparisons with the traditional adjoint data assimilation method and sensitivity analyses. The results demonstrate that the PINN model accurately identifies parameters across a variety of conditions, exhibits lower errors compared to the traditional method, and maintains strong stability against initial condition perturbations. This pioneering application of the model to the Ekman equation provides a robust and generalizable approach for time-varying parameter identification, with promising applications in ocean variable forecasting and dynamics research.
Type
Publication
Journal of oceanology and limnology

SCImago Journal & Country Rank

Hengkai YAO
Authors
Hengkai YAO (he/him)
Ocean Scientist
Qingliang Liu
Authors
Qingliang Liu
Distinguished Associate Professor
Shanliang Zhu
Authors
Shanliang Zhu
Professor of Mathematics