Noise-aware Physics-informed Machine Learning for Robust PDE Discovery
- URL: http://arxiv.org/abs/2206.12901v2
- Date: Thu, 30 Jun 2022 13:18:35 GMT
- Title: Noise-aware Physics-informed Machine Learning for Robust PDE Discovery
- Authors: Pongpisit Thanasutives, Takeshi Morita, Masayuki Numao, Ken-ichi Fukui
- Abstract summary: This work is concerned with discovering the governing partial differential equation (PDE) of a physical system.
Existing methods have demonstrated the PDE identification from finite observations but failed to maintain satisfying performance against noisy data.
We introduce a noise-aware physics-informed machine learning framework to discover the governing PDE from data following arbitrary distributions.
- Score: 5.746505534720594
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This work is concerned with discovering the governing partial differential
equation (PDE) of a physical system. Existing methods have demonstrated the PDE
identification from finite observations but failed to maintain satisfying
performance against noisy data, partly owing to suboptimal estimated
derivatives and found PDE coefficients. We address the issues by introducing a
noise-aware physics-informed machine learning (nPIML) framework to discover the
governing PDE from data following arbitrary distributions. Our proposals are
twofold. First, we propose a couple of neural networks, namely solver and
preselector, which yield an interpretable neural representation of the hidden
physical constraint. After they are jointly trained, the solver network
approximates potential candidates, e.g., partial derivatives, which are then
fed to the sparse regression algorithm that initially unveils the most likely
parsimonious PDE, decided according to the information criterion. Second, we
propose the denoising physics-informed neural networks (dPINNs), based on
Discrete Fourier Transform (DFT), to deliver a set of the optimal finetuned PDE
coefficients respecting the noise-reduced variables. The denoising PINNs'
structures are compartmentalized into forefront projection networks and a PINN,
by which the formerly learned solver initializes. Our extensive experiments on
five canonical PDEs affirm that the proposed framework presents a robust and
interpretable approach for PDE discovery, applicable to a wide range of
systems, possibly complicated by noise.
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