Diffeomorphic Latent Neural Operators for Data-Efficient Learning of Solutions to Partial Differential Equations
Zan Ahmad, Shiyi Chen, Minglang Yin, Avisha Kumar, Nicolas Charon,, Natalia Trayanova, Mauro Maggioni

TL;DR
This paper introduces a diffeomorphic latent neural operator framework that efficiently learns PDE solution operators across varying geometries by leveraging domain mappings, reducing data needs and improving generalization.
Contribution
The authors propose a novel latent neural operator approach that uses diffeomorphic mappings to a reference domain, enabling data-efficient learning of PDE solutions across multiple geometries.
Findings
Reduces data requirements for PDE solution learning.
Demonstrates effectiveness on Laplacian conformal invariance.
Improves generalization across diverse geometries.
Abstract
A computed approximation of the solution operator to a system of partial differential equations (PDEs) is needed in various areas of science and engineering. Neural operators have been shown to be quite effective at predicting these solution generators after training on high-fidelity ground truth data (e.g. numerical simulations). However, in order to generalize well to unseen spatial domains, neural operators must be trained on an extensive amount of geometrically varying data samples that may not be feasible to acquire or simulate in certain contexts (e.g., patient-specific medical data, large-scale computationally intensive simulations.) We propose that in order to learn a PDE solution operator that can generalize across multiple domains without needing to sample enough data expressive enough for all possible geometries, we can train instead a latent neural operator on just a few…
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Taxonomy
TopicsNeural Networks and Applications · Model Reduction and Neural Networks
