Learning Functional Priors and Posteriors from Data and Physics
Xuhui Meng, Liu Yang, Zhiping Mao, Jose del Aguila Ferrandis, George, Em Karniadakis

TL;DR
This paper introduces a Bayesian deep learning framework that combines physics-informed generative adversarial networks and Hamiltonian Monte Carlo to learn functional priors and perform uncertainty quantification in physical problems with limited data.
Contribution
The novel approach integrates PI-GANs and HMC for prior learning and posterior estimation, enabling physics-informed extrapolation and uncertainty quantification from scarce data.
Findings
Accurate predictions with limited noisy data
Effective uncertainty quantification in complex physical systems
Versatile application to PDE and non-PDE problems
Abstract
We develop a new Bayesian framework based on deep neural networks to be able to extrapolate in space-time using historical data and to quantify uncertainties arising from both noisy and gappy data in physical problems. Specifically, the proposed approach has two stages: (1) prior learning and (2) posterior estimation. At the first stage, we employ the physics-informed Generative Adversarial Networks (PI-GAN) to learn a functional prior either from a prescribed function distribution, e.g., Gaussian process, or from historical data and physics. At the second stage, we employ the Hamiltonian Monte Carlo (HMC) method to estimate the posterior in the latent space of PI-GANs. In addition, we use two different approaches to encode the physics: (1) automatic differentiation, used in the physics-informed neural networks (PINNs) for scenarios with explicitly known partial differential equations…
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Taxonomy
MethodsDiffusion · Normalizing Flows
