Bayesian Deep Learning for Partial Differential Equation Parameter Discovery with Sparse and Noisy Data
Christophe Bonneville, Christopher J. Earls

TL;DR
This paper introduces a Bayesian neural network approach combined with sequential threshold Bayesian linear regression to accurately discover PDE parameters from sparse, noisy data, effectively capturing system physics without overfitting.
Contribution
It presents a novel method using Bayesian neural networks and a new likelihood adjustment for PDE parameter discovery under challenging data conditions.
Findings
Accurately recovers system states from sparse, noisy data.
Successfully identifies PDE parameters in complex physical systems.
Mitigates uncertainty impact through variance-informed likelihood adjustment.
Abstract
Scientific machine learning has been successfully applied to inverse problems and PDE discovery in computational physics. One caveat concerning current methods is the need for large amounts of ("clean") data, in order to characterize the full system response and discover underlying physical models. Bayesian methods may be particularly promising for overcoming these challenges, as they are naturally less sensitive to the negative effects of sparse and noisy data. In this paper, we propose to use Bayesian neural networks (BNN) in order to: 1) Recover the full system states from measurement data (e.g. temperature, velocity field, etc.). We use Hamiltonian Monte-Carlo to sample the posterior distribution of a deep and dense BNN, and show that it is possible to accurately capture physics of varying complexity, without overfitting. 2) Recover the parameters instantiating the underlying…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Model Reduction and Neural Networks · Machine Learning in Materials Science
MethodsLinear Regression
