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📄 Abstract
Abstract: Advances in neural operators have introduced discretization invariant
surrogate models for PDEs on general geometries, yet many approaches struggle
to encode local geometric structure and variable domains efficiently. We
introduce enf2enf, a neural field approach for predicting steady-state PDEs
with geometric variability. Our method encodes geometries into latent features
anchored at specific spatial locations, preserving locality throughout the
network. These local representations are combined with global parameters and
decoded to continuous physical fields, enabling effective modeling of complex
shape variations. Experiments on aerodynamic and structural benchmarks
demonstrate competitive or superior performance compared to graph-based, neural
operator, and recent neural field methods, with real-time inference and
efficient scaling to high-resolution meshes.