Physics-Informed Neural Networks for 2nd order ODEs with sharp gradients

被引:18
作者
De Florio, Mario [1 ]
Schiassi, Enrico [2 ]
Calabro, Francesco [3 ]
Furfaro, Roberto [2 ,4 ]
机构
[1] Brown Univ, Div Appl Math, 170 Hope St, Providence, RI 02906 USA
[2] Univ Arizona, Dept Syst & Ind Engn, Tucson, AZ USA
[3] Univ Napoli Federico II, Dipartimento Matemat & Applicaz Renato Caccioppoli, Naples, Italy
[4] Univ Arizona, Dept Aerosp & Mech Engn, Tucson, AZ USA
关键词
Extreme learning machine; Functional interpolation; Least-squares; Physics-Informed Neural Networks; EXTREME LEARNING-MACHINE; FUNCTIONAL CONNECTIONS;
D O I
10.1016/j.cam.2023.115396
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
In this work, four different methods based on Physics-Informed Neural Networks (PINNs) for solving Differential Equations (DE) are compared: Classic-PINN that makes use of Deep Neural Networks (DNNs) to approximate the DE solution;Deep-TFC improves the efficiency of classic-PINN by employing the constrained expression from the Theory of Functional Connections (TFC) so to analytically satisfy the DE constraints;PIELM that improves the accuracy of classic-PINN by employing a single-layer NN trained via Extreme Learning Machine (ELM) algorithm;X-TFC, which makes use of both constrained expression and ELM. The last has been recently introduced to solve challenging problems affected by discontinuity, learning solutions in cases where the other three methods fail. The four methods are compared by solving the boundary value problem arising from the 1D Steady-State Advection-Diffusion Equation for different values of the diffusion coefficient. The solutions of the DEs exhibit steep gradients as the value of the diffusion coefficient decreases, increasing the challenge of the problem.& COPY; 2023 Elsevier B.V. All rights reserved.
引用
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页数:8
相关论文
共 21 条
[1]   Extreme learning machine collocation for the numerical solution of elliptic PDEs with sharp gradients [J].
Calabro, Francesco ;
Fabiani, Gianluca ;
Siettos, Constantinos .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 387
[2]   Physics-informed neural networks and functional interpolation for stiff chemical kinetics [J].
De Florio, Mario ;
Schiassi, Enrico ;
Furfaro, Roberto .
CHAOS, 2022, 32 (06)
[3]   Physics-Informed Neural Networks for rarefied-gas dynamics: Poiseuille flow in the BGK approximation [J].
De Florio, Mario ;
Schiassi, Enrico ;
Ganapol, Barry D. ;
Furfaro, Roberto .
ZEITSCHRIFT FUR ANGEWANDTE MATHEMATIK UND PHYSIK, 2022, 73 (03)
[4]   Physics-informed neural networks for rarefied-gas dynamics: Thermal creep flow in the Bhatnagar-Gross-Krook approximation [J].
De Florio, Mario ;
Schiassi, Enrico ;
Ganapol, Barry D. ;
Furfaro, Roberto .
PHYSICS OF FLUIDS, 2021, 33 (04)
[5]   Local extreme learning machines and domain decomposition for solving linear and nonlinear partial differential equations [J].
Dong, Suchuan ;
Li, Zongwei .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 387
[6]  
Dwivedi V, 2020, NEUROCOMPUTING, V391, P96
[7]   Numerical solution and bifurcation analysis of nonlinear partial differential equations with extreme learning machines [J].
Fabiani, Gianluca ;
Calabro, Francesco ;
Russo, Lucia ;
Siettos, Constantinos .
JOURNAL OF SCIENTIFIC COMPUTING, 2021, 89 (02)
[8]   Extreme learning machine: Theory and applications [J].
Huang, Guang-Bin ;
Zhu, Qin-Yu ;
Siew, Chee-Kheong .
NEUROCOMPUTING, 2006, 70 (1-3) :489-501
[9]  
Kingma DP, 2014, ADV NEUR IN, V27
[10]  
Leake C., 2022, The Theory of Functional Connections: A Functional Interpolation. Framework with Applications