A physics-informed neural network framework for multi-physics coupling microfluidic problems

被引:1
|
作者
Sun, Runze [1 ,2 ]
Jeong, Hyogu [2 ]
Zhao, Jiachen [2 ]
Gou, Yixing [1 ]
Sauret, Emilie [2 ]
Li, Zirui [1 ]
Gu, Yuantong [2 ]
机构
[1] Hebei Univ Technol, Sch Mech Engn, Tianjin, Peoples R China
[2] Queensland Univ Technol, Sch Mech Med & Proc Engn, Brisbane, Qld 4000, Australia
基金
中国国家自然科学基金;
关键词
Microfluidic; Electrokinetic; Physics informed neural network; Deep learning; Electroosmotic flow; MG2+/LI+ RATIO BRINES; CONCENTRATION POLARIZATION; NUMERICAL-SIMULATION; FLOW; EXTRACTION;
D O I
10.1016/j.compfluid.2024.106421
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Microfluidic systems have various scientific and industrial applications, providing a powerful means to manipulate fluids and particles on a small scale. As a crucial method to underlying mechanisms and guiding the design of microfluidic devices, traditional numerical methods such as the Finite Element Method (FEM) simulating microfluidic systems are limited by the computational cost and mesh generating of resolving the smaller spatiotemporal features. Recently, a Physics-informed neural network (PINN) was introduced as a powerful numerical tool for solving partial differential equations (PDEs). PINN simplifies discretizing computational domains, ensuring accurate results and significantly improving computational efficiency after training. Therefore, we propose a PINN-based modeling framework to solve the governing equations of electrokinetic microfluidic systems. The neural networks, designed to respect the governing physics law such as Nernst-Planck, Poisson, and Navier-Stokes (NPN) equations defined by PDEs, are trained to approximate accurate solutions without requiring any labeled data. Several typical electrokinetic problems, such as Electromigration, Ion concentration polarization (ICP), and Electroosmotic flow (EOF), were investigated in this study. Notably, the findings demonstrate the exceptional capacity of the PINN framework to deliver high-precision outcomes for highly coupled multi-physics problems, particularly highlighted by the EOF case. When using 20 x 10 sample points to train the model (the same mesh nodes used for FEM), the relative error of EOF velocity from the PINN is similar to 0.02 %, whereas the relative error of the FEM is similar to 1.23 %. In addition, PINNs demonstrate excellent interpolation capability, the relative error of the EOF velocity decreases slightly at the interpolation points compared to training points, approximately 0.0001 %. More importantly, in simulating strongly nonlinear problems such as the ICP case, PINNs exhibit a unique advantage as they can provide accurate solutions with sparse sample points, whereas FEM fails to produce correct physical results using the same mesh nodes. Although the training time for PINN (100-200 min) is higher than the FEM computational time, the ability of PINN to achieve high accuracy results on sparse sample points, strong capability to fit nonlinear problems highlights its potential for reducing computational resources. We also demonstrate the ability of PINN to solve inverse problems in microfluidic systems and use transfer learning to accelerate PINN training for various species parameter settings. The numerical results demonstrate that the PINN model shows promising advantages in achieving high-accuracy solutions, modeling strong nolinear problems, strong interpolation capability, and inferring unknown parameters in simulating multi-physics coupling microfluidic systems.
引用
收藏
页数:18
相关论文
共 50 条
  • [1] A Preliminary Study on the Resolution of Electro-Thermal Multi-Physics Coupling Problem Using Physics-Informed Neural Network (PINN)
    Ma, Yaoyao
    Xu, Xiaoyu
    Yan, Shuai
    Ren, Zhuoxiang
    ALGORITHMS, 2022, 15 (02)
  • [2] Novel physics-informed optimization framework for complex multi-physics problems: Implementation for a sweeping gas membrane distillation module
    Shirzadi, Mohammadreza
    Li, Zhan
    Yoshioka, Tomohisa
    Matsuyama, Hideto
    Fukasawa, Tomonori
    Fukui, Kunihiro
    Ishigami, Toru
    CHEMICAL ENGINEERING JOURNAL, 2024, 498
  • [3] Physics-informed neural network classification framework for reliability analysis
    Shi, Yan
    Beer, Michael
    Expert Systems with Applications, 2024, 258
  • [4] A physics-informed neural network for simulation of finite deformation in hyperelastic-magnetic coupling problems
    Wang, Lei
    Luo, Zikun
    Lu, Mengkai
    Tang, Minghai
    APPLIED MATHEMATICS AND MECHANICS-ENGLISH EDITION, 2024, 45 (10) : 1717 - 1732
  • [5] A physics-informed neural network for simulation of finite deformation in hyperelastic-magnetic coupling problems
    Lei WANG
    Zikun LUO
    Mengkai LU
    Minghai TANG
    Applied Mathematics and Mechanics(English Edition), 2024, 45 (10) : 1717 - 1732
  • [6] Enhanced surrogate modelling of heat conduction problems using physics-informed neural network framework
    Manavi, Seyedalborz
    Becker, Thomas
    Fattahi, Ehsan
    INTERNATIONAL COMMUNICATIONS IN HEAT AND MASS TRANSFER, 2023, 142
  • [7] Is L2 Physics-Informed Loss Always Suitable for Training Physics-Informed Neural Network?
    Wang, Chuwei
    Li, Shanda
    He, Di
    Wang, Liwei
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35 (NEURIPS 2022), 2022,
  • [8] Physics-informed neural networks: A deep learning framework for solving the vibrational problems
    Wang, Xusheng
    Zhang, Liang
    ADVANCES IN NANO RESEARCH, 2021, 11 (05) : 495 - 519
  • [9] Physics-Informed Neural Networks for Heat Transfer Problems
    Cai, Shengze
    Wang, Zhicheng
    Wang, Sifan
    Perdikaris, Paris
    Karniadakis, George E. M.
    JOURNAL OF HEAT TRANSFER-TRANSACTIONS OF THE ASME, 2021, 143 (06):
  • [10] Physics-Informed Neural Networks for Inverse Electromagnetic Problems
    Baldan, Marco
    Di Barba, Paolo
    Lowther, David A.
    IEEE TRANSACTIONS ON MAGNETICS, 2023, 59 (05)