Flow field reconstruction from sparse sensor measurements with physics-informed neural networks

被引:3
|
作者
Hosseini, Mohammad Yasin [1 ]
Shiri, Yousef [1 ]
机构
[1] Shahrood Univ Technol, Fac Min Petr & Geophys Engn, Shahrood, Iran
关键词
D O I
10.1063/5.0211680
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
In the realm of experimental fluid mechanics, accurately reconstructing high-resolution flow fields is notably challenging due to often sparse and incomplete data across time and space domains. This is exacerbated by the limitations of current experimental tools and methods, which leave critical areas without measurable data. This research suggests a feasible solution to this problem by employing an inverse physics-informed neural network (PINN) to merge available sparse data with physical laws. The method's efficacy is demonstrated using flow around a cylinder as a case study, with three distinct training sets. One was the sparse velocity data from a domain, and the other two datasets were limited velocity data obtained from the domain boundaries and sensors around the cylinder wall. The coefficient of determination (R-2) coefficient and mean squared error (RMSE) metrics, indicative of model performance, have been determined for the velocity components of all models. For the 28 sensors model, the R-2 value stands at 0.996 with an associated RMSE of 0.0251 for the u component, while for the v component, the R-2 value registers at 0.969, accompanied by an RMSE of 0.0169. The outcomes indicate that the method can successfully recreate the actual velocity field with considerable precision with more than 28 sensors around the cylinder, highlighting PINN's potential as an effective data assimilation technique for experimental fluid mechanics.
引用
收藏
页数:14
相关论文
共 50 条
  • [41] Incorporating Nonlocal Traffic Flow Model in Physics-Informed Neural Networks
    Huang, Archie J.
    Biswas, Animesh
    Agarwal, Shaurya
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2024, 25 (11) : 16249 - 16258
  • [42] Physics-informed neural networks for gravity field modeling of the Earth and Moon
    Martin, John
    Schaub, Hanspeter
    CELESTIAL MECHANICS & DYNAMICAL ASTRONOMY, 2022, 134 (02):
  • [43] Simulating field soil temperature variations with physics-informed neural networks
    Xie, Xiaoting
    Yan, Hengnian
    Lu, Yili
    Zeng, Lingzao
    SOIL & TILLAGE RESEARCH, 2024, 244
  • [44] Physics-informed neural networks for gravity field modeling of small bodies
    John Martin
    Hanspeter Schaub
    Celestial Mechanics and Dynamical Astronomy, 2022, 134
  • [45] FIELD PREDICTIONS OF HYPERSONIC CONES USING PHYSICS-INFORMED NEURAL NETWORKS
    Villanueva, Daniel
    Paez, Brandon
    Rodriguez, Arturo
    Chattopadhyay, Ashesh
    Kotteda, V. M. Krushnarao
    Baez, Rafael
    Perez, Jose
    Terrazas, Jose
    Kumar, Vinod
    PROCEEDINGS OF ASME 2022 FLUIDS ENGINEERING DIVISION SUMMER MEETING, FEDSM2022, VOL 2, 2022,
  • [46] Solving groundwater flow equation using physics-informed neural networks
    Cuomo, Salvatore
    De Rosa, Mariapia
    Giampaolo, Fabio
    Izzo, Stefano
    Di Cola, Vincenzo Schiano
    COMPUTERS & MATHEMATICS WITH APPLICATIONS, 2023, 145 : 106 - 123
  • [47] Predicting transformer temperature field based on physics-informed neural networks
    Tang, Pengfei
    Zhang, Zhonghao
    Tong, Jie
    Long, Tianhang
    Huang, Can
    Qi, Zihao
    HIGH VOLTAGE, 2024, 9 (04) : 839 - 852
  • [48] Physics-informed neural networks for gravity field modeling of small bodies
    Martin, John
    Schaub, Hanspeter
    CELESTIAL MECHANICS & DYNAMICAL ASTRONOMY, 2022, 134 (05):
  • [49] Probing the solar coronal magnetic field with physics-informed neural networks
    R. Jarolim
    J. K. Thalmann
    A. M. Veronig
    T. Podladchikova
    Nature Astronomy, 2023, 7 : 1171 - 1179
  • [50] SOBOLEV TRAINING FOR PHYSICS-INFORMED NEURAL NETWORKS
    Son, Hwijae
    Jang, Jin woo
    Han, Woo jin
    Hwang, Hyung ju
    COMMUNICATIONS IN MATHEMATICAL SCIENCES, 2023, 21 (06) : 1679 - 1705