Modeling Non-Stationary Wind-Induced Fluid Motions With Physics-Informed Neural Networks for the Shallow Water Equations in a Polar Coordinate System

被引:0
作者
Zhou, Zaiyang [1 ]
Kuai, Yu [2 ]
Ge, Jianzhong [1 ,3 ]
van Maren, Bas [1 ,2 ,4 ]
Wang, Zhenwu [1 ]
Huang, Kailin [5 ]
Ding, Pingxing [1 ]
Wang, Zhengbing [2 ,4 ]
机构
[1] East China Normal Univ, State Key Lab Estuarine & Coastal Res, Shanghai, Peoples R China
[2] Delft Univ Technol, Fac Civil Engn & Geosci, Delft, Netherlands
[3] Inst Ecochongming IEC, Shanghai, Peoples R China
[4] Unit Marine & Coastal Syst, Delft, Netherlands
[5] Wuhan Univ, State Key Lab Water Resources Engn & Management, Wuhan, Peoples R China
基金
国家重点研发计划; 中国国家自然科学基金;
关键词
PINN; shallow water equation; polar coordinate; non-stationary; boundary discontinuity; hybrid model; GREAT LAKE; APPROXIMATION;
D O I
10.1029/2024WR037490
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Physics-informed neural networks (PINNs) are increasingly being used in various scientific disciplines. However, dealing with non-stationary physical processes remains a significant challenge in such models, whereas fluid motions are typically non-stationary. In this study, a PINN-based method was designed and optimized to solve non-stationary fluid dynamics with shallow water equations in a polar coordinate system (PINN-SWEP). It was developed and validated with a classic circular basin case that is well-documented in scientific literature. In the validation case, the wind-induced water surface fluctuations are less than 1 cm, posing challenges in modeling. However, our PINN-SWEP model can accurately simulate such tiny water surface fluctuations and resolve complex fluid motions based on limited and sparse data. A boundary discontinuity problem associated with the use of a polar coordinate system is further discussed and improved, thereby enhancing the applicability of PINN in water research. The methodology can provide an alternative solution for numerical or analytical solutions with high accuracy.
引用
收藏
页数:17
相关论文
共 52 条
[1]   Evaluation of velocity-related approximations in the nonlinear shallow water equations for the Kuril Islands, 2006 tsunami event at Honolulu, Hawaii [J].
Arcas, Diego ;
Wei, Yong .
GEOPHYSICAL RESEARCH LETTERS, 2011, 38
[2]   Physics-informed machine learning method for modelling transport of a conservative pollutant in surface water systems [J].
Bertels, Daan ;
Willems, Patrick .
JOURNAL OF HYDROLOGY, 2023, 619
[3]   Physics-informed neural networks for the shallow-water equations on the sphere [J].
Bihlo, Alex ;
Popovych, Roman O. .
JOURNAL OF COMPUTATIONAL PHYSICS, 2022, 456
[4]   RESPONSE OF A CIRCULAR MODEL GREAT LAKE TO A SUDDENLY IMPOSED WIND STRESS [J].
BIRCHFIELD, GE .
JOURNAL OF GEOPHYSICAL RESEARCH, 1969, 74 (23) :5547-+
[5]   IMPLEMENTING SOBOLS QUASIRANDOM SEQUENCE GENERATOR [J].
BRATLEY, P ;
FOX, BL .
ACM TRANSACTIONS ON MATHEMATICAL SOFTWARE, 1988, 14 (01) :88-100
[6]   A finite volume numerical approach for coastal ocean circulation studies: Comparisons with finite difference models [J].
Chen, Changsheng ;
Huang, Haosheng ;
Beardsley, Robert C. ;
Liu, Hedong ;
Xu, Qichun ;
Cowles, Geoffrey .
JOURNAL OF GEOPHYSICAL RESEARCH-OCEANS, 2007, 112 (C3)
[7]   Simultaneous mapping of nearshore bathymetry and waves based on physics-informed deep learning [J].
Chen, Qin ;
Wang, Nan ;
Chen, Zhao .
COASTAL ENGINEERING, 2023, 183
[8]   APPROXIMATIONS OF CONTINUOUS FUNCTIONALS BY NEURAL NETWORKS WITH APPLICATION TO DYNAMIC-SYSTEMS [J].
CHEN, TP ;
CHEN, H .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1993, 4 (06) :910-918
[9]   Eikonal Tomography With Physics-Informed Neural Networks: Rayleigh Wave Phase Velocity in the Northeastern Margin of the Tibetan Plateau [J].
Chen, Yunpeng ;
de Ridder, Sjoerd A. L. ;
Rost, Sebastian ;
Guo, Zhen ;
Wu, Xiaoyang ;
Chen, Yongshun .
GEOPHYSICAL RESEARCH LETTERS, 2022, 49 (21)
[10]   LARGE-SCALE MOTION IN GREAT LAKES [J].
CSANADY, GT .
JOURNAL OF GEOPHYSICAL RESEARCH, 1967, 72 (16) :4151-&