TY - JOUR
T1 - M-PINN
T2 - A mesh-based physics-informed neural network for linear elastic problems in solid mechanics
AU - Wang, Lu
AU - Liu, Guangyan
AU - Wang, Guanglun
AU - Zhang, Kai
N1 - Publisher Copyright:
© 2024 John Wiley & Sons Ltd.
PY - 2024/5/15
Y1 - 2024/5/15
N2 - Physics-informed neural networks (PINNs) have emerged as a promising approach for solving a wide range of numerical problems. Nevertheless, conventional PINNs frequently face challenges in model convergence and stability when optimizing complex loss functions containing complex gradients. In this study, a new mesh-based PINN method, called M-PINN, is proposed drawing the ideas of the finite element method (FEM). By partitioning the solution domain into several subdomains and incorporating finite element data distribution constraints to the prior estimates of the predicted data distribution of PINN on the solution domain, the M-PINN approach effectively reduces the optimization difficulty of conventional PINNs. Moreover, it is sometimes difficult to directly obtain precise boundary conditions in some practical applications. This method can be used to solve PINN problems with unknown boundary conditions, thus having wider applicability. In this study, the efficiency of M-PINN was demonstrated through a standard 2D linear elastic solid mechanics simulation experiment, and its applicability was investigated in depth. The results indicate that the M-PINN method outperforms traditional PINN and exhibits superior applicability and convergence, especially in cases involving unknown boundary conditions.
AB - Physics-informed neural networks (PINNs) have emerged as a promising approach for solving a wide range of numerical problems. Nevertheless, conventional PINNs frequently face challenges in model convergence and stability when optimizing complex loss functions containing complex gradients. In this study, a new mesh-based PINN method, called M-PINN, is proposed drawing the ideas of the finite element method (FEM). By partitioning the solution domain into several subdomains and incorporating finite element data distribution constraints to the prior estimates of the predicted data distribution of PINN on the solution domain, the M-PINN approach effectively reduces the optimization difficulty of conventional PINNs. Moreover, it is sometimes difficult to directly obtain precise boundary conditions in some practical applications. This method can be used to solve PINN problems with unknown boundary conditions, thus having wider applicability. In this study, the efficiency of M-PINN was demonstrated through a standard 2D linear elastic solid mechanics simulation experiment, and its applicability was investigated in depth. The results indicate that the M-PINN method outperforms traditional PINN and exhibits superior applicability and convergence, especially in cases involving unknown boundary conditions.
KW - finite element constraints
KW - hyperparameters
KW - physics-informed neural network
KW - solid mechanics
KW - unknown boundary conditions
UR - http://www.scopus.com/inward/record.url?scp=85184388954&partnerID=8YFLogxK
U2 - 10.1002/nme.7444
DO - 10.1002/nme.7444
M3 - Article
AN - SCOPUS:85184388954
SN - 0029-5981
VL - 125
JO - International Journal for Numerical Methods in Engineering
JF - International Journal for Numerical Methods in Engineering
IS - 9
M1 - e7444
ER -