Physics-informed neural networks with residual/gradient-based adaptive sampling methods for solving PDEs with sharp solutions
Zhiping Mao, Xuhui Meng

TL;DR
This paper introduces adaptive sampling methods based on residuals and gradients to improve physics-informed neural networks for solving PDEs with sharp solutions, demonstrating enhanced accuracy and efficiency.
Contribution
The paper proposes two novel adaptive sampling algorithms, ASM I and ASM II, that improve PINNs' ability to capture sharp solutions in PDEs, with ASM II incorporating gradient information.
Findings
Both ASM I and ASM II accurately approximate sharp solutions.
ASM II outperforms ASM I in accuracy, efficiency, and stability.
Methods outperform original PINNs with the same residual points.
Abstract
We consider solving the forward and inverse PDEs which have sharp solutions using physics-informed neural networks (PINNs) in this work. In particular, to better capture the sharpness of the solution, we propose adaptive sampling methods (ASMs) based on the residual and the gradient of the solution. We first present a residual only based ASM algorithm denoted by ASM I. In this approach, we first train the neural network by using a small number of residual points and divide the computational domain into a certain number of sub-domains, we then add new residual points in the sub-domain which has the largest mean absolute value of the residual, and those points which have largest absolute values of the residual in this sub-domain will be added as new residual points. We further develop a second type of ASM algorithm (denoted by ASM II) based on both the residual and the gradient of the…
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Taxonomy
TopicsModel Reduction and Neural Networks · Advanced Image Processing Techniques · Image Processing Techniques and Applications
