AI RESEARCH

Striding Across Reynolds Numbers: Representation Geometry in Neural PDE Generalisation

arXiv CS.LG

ArXi:2605.30112v1 Announce Type: new Cross-Reynolds generalisation in neural PDE solvers remains poorly characterised. On the canonical forced 2D Navier-Stokes benchmark, a trained Fourier Neural Operator reaches 46.68% relative L2 error under a 10x Reynolds-number shift, yet zero-forward-model retrieval baselines already improve to 41-42%. This suggests representation geometry as a major organising variable among the tested methods.