Robust Variational Physics-Informed Neural Networks

被引:6
|
作者
Rojas, Sergio [1 ]
Maczuga, Pawel [2 ]
Munoz-Matute, Judit [3 ,4 ]
Pardo, David [3 ,5 ,6 ]
Paszynski, Maciej [2 ]
机构
[1] Pontificia Univ Catolica Valparaiso, Inst Matemat, Valparaiso, Chile
[2] AGH Univ Krakow, Krakow, Poland
[3] Basque Ctr Appl Math BCAM, Bilbao, Spain
[4] Univ Texas Austin, Oden Inst Computat Engn & Sci, Austin, TX USA
[5] Univ Basque Country UPV EHU, Bilbao, Spain
[6] Ikerbasque, Bilbao, Spain
关键词
Robustness; Variational Physics-Informed Neural Networks; Petrov-Galerkin formulation; Riesz representation; Minimum residual principle; A posteriori error estimation; SYSTEM LEAST-SQUARES; DPG METHOD; FRAMEWORK; STOKES;
D O I
10.1016/j.cma.2024.116904
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
We introduce a Robust version of the Variational Physics-Informed Neural Networks method (RVPINNs). As in VPINNs, we define the quadratic loss functional in terms of a Petrov-Galerkintype variational formulation of the PDE problem: the trial space is a (Deep) Neural Network (DNN) manifold, while the test space is a finite-dimensional vector space. Whereas the VPINN's loss depends upon the selected basis functions of a given test space, herein, we minimize a loss based on the discrete dual norm of the residual. The main advantage of such a loss definition is that it provides a reliable and efficient estimator of the true error in the energy norm under the assumption of the existence of a local Fortin operator. We test the performance and robustness of our algorithm in several advection-diffusion problems. These numerical results perfectly align with our theoretical findings, showing that our estimates are sharp.
引用
收藏
页数:18
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