Published July 2, 2025 | Version v1

B-PL-PINN: Stabilizing PINN Training with Bayesian Pseudo Labeling

  • 1. ROR icon Know Center Research GmbH (Austria)
  • 2. ROR icon Graz University of Technology

Description

Training physics-informed neural networks (PINNs) for forward problems often suffers from severe convergence issues, hindering the propagation of information from regions where the desired solution is well-defined. Haitsiukevich and Ilin (2023) proposed an ensemble approach that extends the active training domain of each PINN based on i) ensemble consensus and ii) vicinity to (pseudo-)labeled points, thus ensuring that the information from the initial condition successfully propagates to the interior of the computational domain.
In this work, we suggest replacing the ensemble by a Bayesian PINN, and consensus by an evaluation of the PINN's posterior variance. Our experiments show that this mathematically principled approach outperforms the ensemble on a set of benchmark problems and is competitive with PINN ensembles trained with combinations of Adam and LBFGS.

Files

2507.01714v1.pdf

Files (8.4 MB)

Name Size Download all
md5:8a5addd91defa099da2a7e4fa124b550
8.4 MB Preview Download

Additional details

Funding

UK Research and Innovation
ENFIELD: European Lighthouse to Manifest Trustworthy and Green AI 10094603