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Bibliographic Details
Main Authors: Han, Mingyu, Huang, Daniel Zhengyu, Wang, Yuhan, Zhang, Yanshu, Zhou, Jiayi
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.01498
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Table of Contents:
  • Neural operators are neural network-based surrogate models for approximating solution operators of parametric partial differential equations, enabling efficient many-query computations in science and engineering. Many applications, including engineering design, involve variable and often nonparametric geometries, for which generalization to unseen geometries remains a central practical challenge. In this work, we adopt a kernel integral perspective motivated by classical boundary integral formulations and recast operator learning on variable geometries as the approximation of geometry-dependent kernel operators, potentially with singularities. This perspective clarifies a mechanism for geometric generalization and reveals a direct connection between operator learning and fast kernel summation methods. Leveraging this connection, we propose a multiscale neural operator inspired by Ewald summation for learning and efficiently evaluating unknown kernel integrals, and we provide theoretical accuracy guarantees for the resulting approximation. Numerical experiments demonstrate robust generalization across diverse geometries for several commonly used kernels and for a large-scale three-dimensional fluid dynamics example.