Finite Volume-Informed Neural Network Framework for 2D Shallow Water Equations: Rugged Loss Landscapes and the Importance of Data Guidance
Xiaofeng Liu

TL;DR
This paper introduces a finite-volume-informed neural network framework for 2D shallow water equations, highlighting the importance of data guidance to overcome optimization challenges and improve accuracy.
Contribution
It replaces the traditional residual with a differentiable FVM loss, demonstrating how sparse data significantly enhances model training and accuracy.
Findings
Physics-only FVM-PINN training often collapses to trivial solutions.
Adding sparse data breaks the shallow loss basin, improving accuracy.
The framework achieves accurate surrogates on real-world river data.
Abstract
Physics-informed neural networks (PINNs) are a simple surrogate-modelling paradigm for partial differential equations, but their standard strong-form residual formulation is ill suited to the shallow water equations (SWE). It cannot enforce local conservation, handle discontinuities, or leverage the boundary-conforming unstructured meshes used in real-world applications. We introduce ``Data-Guided FVM-PINN'', a framework that replaces the strong-form residual with a differentiable, well-balanced Roe Riemann-solver finite-volume (FVM) loss evaluated on unstructured meshes. The major finding is that physics-only FVM-PINN training often fails on realistic 2D problems: the network collapses to a trivial low-momentum state that nearly satisfies the FVM-PINN residual but bears no resemblance to the true flow. A loss-landscape diagnostic shows that the FVM-PINN loss at zero momentum is only…
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