Competitive physics-informed networks for high-accuracy solutions to Navier-Stokes problems
ORAL
Abstract
Physics Informed Neural Networks (PINNs) represent partial differential equations (PDEs) as neural networks, solving these PDEs to an accuracy of around 10-3 L2 relative error via Adam-based optimizers. Competitive Physics Informed Neural Networks (CPINNs) were recently introduced by the authors to enable training to at least single-precision accuracy (10-7). They are based on an adversarial approach to training, which amounts to a minimax optimization problem, that relaxes the poor conditioning of the differential operators that comprise the PDE. Here, we apply the CPINN strategy to solve canonical Navier-Stokes problems with high accuracy.
–
Publication: Zeng, Q., Bryngelson, S. H., & Schäfer, F. (2022). Competitive Physics Informed Networks. arXiv preprint arXiv:2204.11144.
Presenters
-
Yash Kothari
Georgia Tech
Authors
-
Yash Kothari
Georgia Tech
-
Qi Zeng
Georgia Tech
-
Florian Schaefer
Georgia Tech
-
Spencer H Bryngelson
Georgia Tech, Georgia Institute of Technology