Enhancing the accuracy of physics-informed neural network surrogates in flash calculations using sparse grid guidance

被引:2
|
作者
Wu, Yuanqing [1 ]
Sun, Shuyu [2 ]
机构
[1] Dongguan Univ Technol, Sch Comp Sci & Technol, Dongguan 523808, Guangdong, Peoples R China
[2] King Abdullah Univ Sci & Technol KAUST, Div Phys Sci & Engn PSE, Computat Transport Phenomena Lab CTPL, Thuwal 239556900, Saudi Arabia
关键词
Physics-informed neural networks; Flash calculations; Sparse grids; Compositional flows;
D O I
10.1016/j.fluid.2023.113984
中图分类号
O414.1 [热力学];
学科分类号
摘要
Flash calculations pose a significant performance bottleneck in compositional-flow simulations. While sparse grids have helped mitigate this bottleneck by shifting it to the offline stage, the accuracy of the surrogate model based on physics-informed neural networks (PINN) is still inferior to that of the sparse grid surrogate in many cases. To address this issue, we propose the sparse-grid guided PINN training algorithm. This approach involves rearranging the collocation points using sparse grids at each epoch to capture changes in the residual space. By doing so, the PINN surrogate achieves the required accuracy using the fewest collocation points possible, thereby avoiding potential performance bottlenecks. Moreover, the training time complexity of the sparse-grid guided PINN training is significantly lower compared to the normal training while maintaining the same level of accuracy. Consequently, the sparse-grid guided PINN training method enhances the accuracy of the PINN surrogate with minimal computational overhead. During the experiments, a flash calculation of methane-propane mixture is conducted using a PINN surrogate, guided by the principles of sparse grids. The collective experimental observations underscore the clear advantages of employing sparse-grid guided PINN training, showcasing superior outcomes in terms of convergence, stability, and accuracy.
引用
收藏
页数:14
相关论文
共 50 条
  • [1] Reconstruction of the turbulent flow field with sparse measurements using physics-informed neural network
    Chaurasia, Nagendra Kumar
    Chakraborty, Shubhankar
    PHYSICS OF FLUIDS, 2024, 36 (08)
  • [2] Sparse phase retrieval using a physics-informed neural network for Fourier ptychographic microscopy
    Zhang, Z. H. O. N. G. H. U. A.
    Wang, T. I. A. N.
    Feng, S. H. A. O. W. E., I
    Yang, Y. O. N. G. X. I. N.
    Lai, C. H. U. N. H. O. N. G.
    LI, X. I. N. W. E. I.
    Shao, L. I. Z. H. I.
    Jiang, X. I. A. O. M. I. N. G.
    OPTICS LETTERS, 2022, 47 (19) : 4909 - 4912
  • [3] Physics-informed surrogates for electromagnetic dynamics using Transformers and graph neural networks
    Noakoasteen, O.
    Christodoulou, C.
    Peng, Z.
    Goudos, S. K.
    IET MICROWAVES ANTENNAS & PROPAGATION, 2024, 18 (07) : 505 - 515
  • [4] Assessing physics-informed neural network performance with sparse noisy velocity data
    Satyadharma, Adhika
    Chern, Ming-Jyh
    Kan, Heng-Chuan
    Harinaldi
    Julian, James
    PHYSICS OF FLUIDS, 2024, 36 (10)
  • [5] An airflow velocity field reconstruction method with sparse or incomplete data using physics-informed neural network
    Jing, Gang
    Wang, Huan
    Li, Xianting
    Wang, Guijin
    Yang, Yingying
    JOURNAL OF BUILDING ENGINEERING, 2024, 88
  • [6] Sparse wavefield reconstruction based on Physics-Informed neural networks
    Xu, Bin
    Zou, Yun
    Sha, Gaofeng
    Yang, Liang
    Cai, Guixi
    Li, Yang
    ULTRASONICS, 2025, 149
  • [7] Physics-Informed Neural Network Method and Application to Nuclear Reactor Calculations: A Pilot Study
    Elhareef, Mohamed H.
    Wu, Zeyun
    NUCLEAR SCIENCE AND ENGINEERING, 2023, 197 (04) : 601 - 622
  • [8] Reconstruction of downburst wind fields using physics-informed neural network
    Yao, Binbin
    Wang, Zhisong
    Fang, Zhiyuan
    Li, Zhengliang
    JOURNAL OF WIND ENGINEERING AND INDUSTRIAL AERODYNAMICS, 2024, 254
  • [9] Indoor airflow field reconstruction using physics-informed neural network
    Wei, Chenghao
    Ooka, Ryozo
    BUILDING AND ENVIRONMENT, 2023, 242
  • [10] Learning thermoacoustic interactions in combustors using a physics-informed neural network
    Mariappan, Sathesh
    Nath, Kamaljyoti
    Karniadakis, George Em
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 138