Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Gradient-enhanced physics-informed neural networks for forward and inverse PDE problems

About

Deep learning has been shown to be an effective tool in solving partial differential equations (PDEs) through physics-informed neural networks (PINNs). PINNs embed the PDE residual into the loss function of the neural network, and have been successfully employed to solve diverse forward and inverse PDE problems. However, one disadvantage of the first generation of PINNs is that they usually have limited accuracy even with many training points. Here, we propose a new method, gradient-enhanced physics-informed neural networks (gPINNs), for improving the accuracy and training efficiency of PINNs. gPINNs leverage gradient information of the PDE residual and embed the gradient into the loss function. We tested gPINNs extensively and demonstrated the effectiveness of gPINNs in both forward and inverse PDE problems. Our numerical results show that gPINN performs better than PINN with fewer training points. Furthermore, we combined gPINN with the method of residual-based adaptive refinement (RAR), a method for improving the distribution of training points adaptively during training, to further improve the performance of gPINN, especially in PDEs with solutions that have steep gradients.

Jeremy Yu, Lu Lu, Xuhui Meng, George Em Karniadakis• 2021

Related benchmarks

TaskDatasetResultRank
PDE solving1D Burgers
MSE1.73e-10
26
PDE solvingNavier-Stokes 2D
MSE1.51e-4
26
PDE solving1D Helmholtz
MSE2.01e-6
8
PDE solving2D Convection-Diffusion
MSE3.04e-7
8
PDE solving1D Convection-Diffusion
MSE1.96e-4
8
Showing 5 of 5 rows

Other info

Follow for update