Discrete Solution Operator Learning for Geometry-Dependent PDEs
arXiv:2601.09143v1 Announce Type: new Abstract: Neural operator learning accelerates PDE solution by approximating operators as mappings between continuous function spaces. Yet in many engineering settings, varying geometry induces discrete structural changes, including topological changes, abrupt changes in boundary conditions or…
