Quantifying total uncertainty in physics-informed neural networks for solving forward and inverse stochastic problems
Dongkun Zhang, Lu Lu, Ling Guo, George Em Karniadakis

TL;DR
This paper introduces a novel physics-informed neural network framework that quantifies both parametric and approximation uncertainties in solving stochastic PDEs, enhancing predictive reliability and enabling active sensor placement.
Contribution
It develops a new method combining neural networks with polynomial chaos expansion and dropout for uncertainty quantification in stochastic PDEs, applicable to forward and inverse problems.
Findings
Effective uncertainty quantification for stochastic PDEs.
Active learning improves sensor placement and prediction accuracy.
Method applicable to multi-dimensional stochastic problems.
Abstract
Physics-informed neural networks (PINNs) have recently emerged as an alternative way of solving partial differential equations (PDEs) without the need of building elaborate grids, instead, using a straightforward implementation. In particular, in addition to the deep neural network (DNN) for the solution, a second DNN is considered that represents the residual of the PDE. The residual is then combined with the mismatch in the given data of the solution in order to formulate the loss function. This framework is effective but is lacking uncertainty quantification of the solution due to the inherent randomness in the data or due to the approximation limitations of the DNN architecture. Here, we propose a new method with the objective of endowing the DNN with uncertainty quantification for both sources of uncertainty, i.e., the parametric uncertainty and the approximation uncertainty. We…
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Taxonomy
MethodsDropout
