GPT-PINN: Generative Pre-Trained Physics-Informed Neural Networks toward non-intrusive Meta-learning of parametric PDEs

被引:19
作者
Chen, Yanlai [1 ]
Koohy, Shawn [1 ]
机构
[1] Univ Massachusetts Dartmouth, Dept Math, 285 Old Westport Rd, N Dartmouth, MA 02747 USA
基金
美国国家科学基金会;
关键词
Physics-Informed Neural Networks; Meta-learning; model order reduction; Network of networks; Non-intrusive learning; Parametric PDEs; APPROXIMATION;
D O I
10.1016/j.finel.2023.104047
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Physics-Informed Neural Network (PINN) has proven itself a powerful tool to obtain the numerical solutions of nonlinear partial differential equations (PDEs) leveraging the expressivity of deep neural networks and the computing power of modern heterogeneous hardware. However, its training is still time-consuming, especially in the multi-query and real-time simulation settings, and its parameterization often overly excessive. In this paper, we propose the Generative Pre-Trained PINN (GPT-PINN) to mitigate both challenges in the setting of parametric PDEs. GPT-PINN represents a brand-new meta-learning paradigm for parametric systems. As a network of networks, its outer-/meta-network is hyper-reduced with only one hidden layer having significantly reduced number of neurons. Moreover, its activation function at each hidden neuron is a (full) PINN pre-trained at a judiciously selected system configuration. The meta-network adaptively "learns"the parametric dependence of the system and "grows"this hidden layer one neuron at a time. In the end, by encompassing a very small number of networks trained at this set of adaptively-selected parameter values, the meta-network is capable of generating surrogate solutions for the parametric system across the entire parameter domain accurately and efficiently.
引用
收藏
页数:15
相关论文
共 52 条
[1]  
Abadi M, 2016, PROCEEDINGS OF OSDI'16: 12TH USENIX SYMPOSIUM ON OPERATING SYSTEMS DESIGN AND IMPLEMENTATION, P265
[2]   ON THE REDUCED BASIS METHOD [J].
BARRETT, A ;
REDDIEN, G .
ZEITSCHRIFT FUR ANGEWANDTE MATHEMATIK UND MECHANIK, 1995, 75 (07) :543-549
[3]  
Baydin AG, 2018, J MACH LEARN RES, V18
[4]   A Survey of Projection-Based Model Reduction Methods for Parametric Dynamical Systems [J].
Benner, Peter ;
Gugercin, Serkan ;
Willcox, Karen .
SIAM REVIEW, 2015, 57 (04) :483-531
[5]   CONVERGENCE RATES FOR GREEDY ALGORITHMS IN REDUCED BASIS METHODS [J].
Binev, Peter ;
Cohen, Albert ;
Dahmen, Wolfgang ;
Devore, Ronald ;
Petrova, Guergana ;
Wojtaszczyk, Przemyslaw .
SIAM JOURNAL ON MATHEMATICAL ANALYSIS, 2011, 43 (03) :1457-1472
[6]  
Boski M, 2017, 2017 10TH INTERNATIONAL WORKSHOP ON MULTIDIMENSIONAL (ND) SYSTEMS (NDS)
[7]   Physics-informed machine learning for reduced-order modeling of nonlinear problems [J].
Chen, Wenqian ;
Wang, Qian ;
Hesthaven, Jan S. ;
Zhang, Chuhua .
JOURNAL OF COMPUTATIONAL PHYSICS, 2021, 446
[8]   An EIM-degradation free reduced basis method via over collocation and residual hyper reduction-based error estimation [J].
Chen, Yanlai ;
Gottlieb, Sigal ;
Ji, Lijie ;
Maday, Yvon .
JOURNAL OF COMPUTATIONAL PHYSICS, 2021, 444
[9]   A robust error estimator and a residual-free error indicator for reduced basis methods [J].
Chen, Yanlai ;
Jiang, Jiahua ;
Narayan, Akil .
COMPUTERS & MATHEMATICS WITH APPLICATIONS, 2019, 77 (07) :1963-1979
[10]  
Cybenko G., 1989, Mathematics of Control, Signals, and Systems, V2, P303, DOI 10.1007/BF02551274