Flexible SE(2) graph neural networks with applications to PDE surrogates
Bånkestad, Maria, Mogren, Olof, Pirinen, Aleksis
–arXiv.org Artificial Intelligence
This paper presents a novel approach for constructing graph neural networks equivariant to 2D rotations and translations and leveraging them as PDE surrogates on non-gridded domains. We show that aligning the representations with the principal axis allows us to sidestep many constraints while preserving SE(2) equivariance. By applying our model as a surrogate for fluid flow simulations and conducting thorough benchmarks against non-equivariant models, we demonstrate significant gains in terms of both data efficiency and accuracy.
arXiv.org Artificial Intelligence
May-30-2024