WGFINNs: Weak formulation-based GENERIC formalism informed neural networks'
This work addresses the challenge of data-driven discovery of governing equations from noisy observations in scientific machine learning, representing an incremental improvement over GFINNs.
The paper tackled the sensitivity of GENERIC formalism informed neural networks (GFINNs) to measurement noise by proposing weak formulation-based GFINNs (WGFINNs), which integrate weak formulations to enhance robustness while preserving thermodynamic laws, achieving more accurate predictions and reliable recovery of physical quantities in numerical experiments.
Data-driven discovery of governing equations from noisy observations remains a fundamental challenge in scientific machine learning. While GENERIC formalism informed neural networks (GFINNs) provide a principled framework that enforces the laws of thermodynamics by construction, their reliance on strong-form loss formulations makes them highly sensitive to measurement noise. To address this limitation, we propose weak formulation-based GENERIC formalism informed neural networks (WGFINNs), which integrate the weak formulation of dynamical systems with the structure-preserving architecture of GFINNs. WGFINNs significantly enhance robustness to noisy data while retaining exact satisfaction of GENERIC degeneracy and symmetry conditions. We further incorporate a state-wise weighted loss and a residual-based attention mechanism to mitigate scale imbalance across state variables. Theoretical analysis contrasts quantitative differences between the strong-form and the weak-form estimators. Mainly, the strong-form estimator diverges as the time step decreases in the presence of noise, while the weak-form estimator can be accurate even with noisy data if test functions satisfy certain conditions. Numerical experiments demonstrate that WGFINNs consistently outperform GFINNs at varying noise levels, achieving more accurate predictions and reliable recovery of physical quantities.