Reference Neural Operators: Learning the Smooth Dependence of Solutions of PDEs on Geometric Deformations

Abstract

For partial differential equations on domains of arbitrary shapes, existing works of neural operators attempt to learn a mapping from geometries to solutions. It often requires a large dataset of geometry-solution pairs in order to obtain a sufficiently accurate neural operator. However, for many industrial applications, e.g., engineering design optimization, it can be prohibitive to satisfy the requirement since even a single simulation may take hours or days of computation. To address this issue, we propose reference neural operators (RNO), a novel way of implementing neural operators, i.e., to learn the smooth dependence of solutions on geometric deformations. Specifically, given a reference solution, RNO can predict solutions corresponding to arbitrary deformations of the referred geometry. This approach turns out to be much more data efficient. Through extensive experiments, we show that RNO can learn the dependence across various types and different numbers of geometry objects with relatively small datasets. RNO outperforms baseline models in accuracy by a large lead and achieves up to 80% error reduction.

Cite

Text

Cheng et al. "Reference Neural Operators: Learning the Smooth Dependence of Solutions of PDEs on Geometric Deformations." International Conference on Machine Learning, 2024.

Markdown

[Cheng et al. "Reference Neural Operators: Learning the Smooth Dependence of Solutions of PDEs on Geometric Deformations." International Conference on Machine Learning, 2024.](https://mlanthology.org/icml/2024/cheng2024icml-reference/)

BibTeX

@inproceedings{cheng2024icml-reference,
  title     = {{Reference Neural Operators: Learning the Smooth Dependence of Solutions of PDEs on Geometric Deformations}},
  author    = {Cheng, Ze and Hao, Zhongkai and Wang, Xiaoqiang and Huang, Jianing and Wu, Youjia and Liu, Xudan and Zhao, Yiru and Liu, Songming and Su, Hang},
  booktitle = {International Conference on Machine Learning},
  year      = {2024},
  pages     = {8060-8076},
  volume    = {235},
  url       = {https://mlanthology.org/icml/2024/cheng2024icml-reference/}
}