Transfer physics informed neural network: a new framework for distributed physics informed neural networks via parameter sharing

被引:0
作者
Sreehari Manikkan
Balaji Srinivasan
机构
[1] Purdue University,Department of Mechanical engineering
[2] Indian Institute of Technology Madras,Department of Mechanical engineering
来源
Engineering with Computers | 2023年 / 39卷
关键词
Physics informed neural network; Parameter sharing; Machine learning; Inverse problems; Heterogeneous heat conduction; Domain decomposition;
D O I
暂无
中图分类号
学科分类号
摘要
We introduce Transfer Physics Informed Neural Network (TPINN), a neural network-based approach for solving forward and inverse problems in nonlinear partial differential equations (PDEs). In TPINN, one or more layers of physics informed neural network (PINN) corresponding to each non-overlapping subdomains are changed using a unique set of parameters for each PINN. The remaining layers of individual PINNs are the same through parameter sharing. The subdomains can be those obtained by partitioning the global computational domain or subdomains part of the problem definition, which adds to the total computational domain. Solutions from different subdomains are connected while training using problem-specific interface conditions incorporated into the loss function. The proposed method handles forward and inverse problems where PDE formulation changes or when there is a discontinuity in PDE parameters across different subdomains efficiently. Parameter sharing reduces parameter space dimension, memory requirements, computational burden and increases accuracy. The efficacy of the proposed approach is demonstrated by solving various forward and inverse problems, including classical benchmark problems and problems involving parameter heterogeneity from the heat transfer domain. In inverse parameter estimation problems, statistical analysis of estimated parameters is performed by solving the problem independently six times. Noise analysis by varying the noise level in the input data is performed for all inverse problems.
引用
收藏
页码:2961 / 2988
页数:27
相关论文
共 167 条
[1]  
Krizhevsky A(2012)ImageNet classification with deep convolutional neural networks Adv Neural Inf Process Syst 25 1097-1105
[2]  
Sutskever I(2008)A unified architecture for natural language processing: deep neural networks with multitask learning ICML 10 160-167
[3]  
Hinton GE(2013)Artificial neural networks in medical diagnosis J Appl Biomed 11 47-58
[4]  
Collobert R(2019)Prediction of building damage induced by tunnelling through an optimized artificial neural network Eng Comput 35 579-591
[5]  
Weston J(2019)A combination of artificial bee colony and neural network for approximating the safety factor of retaining walls Eng Comput 35 647-658
[6]  
Amato F(2020)Prediction of ultimate bearing capacity through various novel evolutionary and neural network models Eng Comput 36 671-687
[7]  
López A(2019)Estimating and optimizing safety factors of retaining wall through neural network and bee colony techniques Eng Comput 35 945-954
[8]  
Peña-Méndez EM(1998)Artificial neural networks for solving ordinary and partial differential equations IEEE Trans Neural Netw 9 987-1000
[9]  
Vaňhara P(2000)Neural-network methods for boundary value problems with irregular boundaries IEEE Trans Neural Netw 11 1041-1049
[10]  
Hampl A(1994)The numerical solution of linear ordinary differential equations by feedforward neural networks Math Comput Model 19 1-25