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SelectNet: Self-paced Learning for High-dimensional Partial Differential Equations

About

The least squares method with deep neural networks as function parametrization has been applied to solve certain high-dimensional partial differential equations (PDEs) successfully; however, its convergence is slow and might not be guaranteed even within a simple class of PDEs. To improve the convergence of the network-based least squares model, we introduce a novel self-paced learning framework, SelectNet, which quantifies the difficulty of training samples, treats samples equally in the early stage of training, and slowly explores more challenging samples, e.g., samples with larger residual errors, mimicking the human cognitive process for more efficient learning. In particular, a selection network and the PDE solution network are trained simultaneously; the selection network adaptively weighting the training samples of the solution network achieving the goal of self-paced learning. Numerical examples indicate that the proposed SelectNet model outperforms existing models on the convergence speed and the convergence robustness, especially for low-regularity solutions.

Yiqi Gu, Haizhao Yang, Chao Zhou• 2020

Related benchmarks

TaskDatasetResultRank
PDE solvingHelmholtz equation
Relative L2 Error0.0497
32
Partial Differential Equation Solving4D multiscale equation
Relative L2 Error0.0216
6
PDE solvingSine-Gordon equation 18
Relative L2 Error0.94
6
Solving Allen-Cahn equationAllen-Cahn equation 17
ReL2 Error6.58e-4
6
Heat Conduction Equation SolvingHeat conduction problem
Relative L2 Error0.579
6
Solving partial differential equations1D convection-dominated equation epsilon = 10^-6 (test)
Relative L2 Error0.712
6
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