Operator Learning with Domain Decomposition for Geometry Generalization in PDE Solving
arXiv:2504.00510v2 Announce Type: replace Abstract: Neural operators have become increasingly popular in solving textit{partial differential equations} (PDEs) due to their superior capability to capture intricate mappings between function spaces over complex domains. However, the data-hungry nature of operator learning inevitably…
