UGM2N: An Unsupervised and Generalizable Mesh Movement Network via M-Uniform Loss
Abstract
Partial differential equations (PDEs) form the mathematical foundation for modeling physical systems in science and engineering, where numerical solutions demand rigorous accuracy-efficiency tradeoffs. Mesh movement techniques address this challenge by dynamically relocating mesh nodes to rapidly-varying regions, enhancing both simulation accuracy and computational efficiency. However, traditional approaches suffer from high computational complexity and geometric inflexibility, limiting their applicability, and existing supervised learning-based approaches face challenges in zero-shot generalization across diverse PDEs and mesh topologies. In this paper, we present an $\textbf{U}$nsupervised and $\textbf{G}$eneralizable $\textbf{M}$esh $\textbf{M}$ovement $\textbf{N}$etwork (UGM2N). We first introduce unsupervised mesh adaptation through localized geometric feature learning, eliminating the dependency on pre-adapted meshes. We then develop a physics-constrained loss function, M-Uniform loss, that enforces mesh equidistribution at the nodal level. Experimental results demonstrate that the proposed network exhibits equation-agnostic generalization and geometric independence in efficient mesh adaptation. It demonstrates consistent superiority over existing methods, including robust performance across diverse PDEs and mesh geometries, scalability to multi-scale resolutions and guaranteed error reduction without mesh tangling.
Cite
Text
Wang et al. "UGM2N: An Unsupervised and Generalizable Mesh Movement Network via M-Uniform Loss." Advances in Neural Information Processing Systems, 2025.Markdown
[Wang et al. "UGM2N: An Unsupervised and Generalizable Mesh Movement Network via M-Uniform Loss." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/wang2025neurips-ugm2n/)BibTeX
@inproceedings{wang2025neurips-ugm2n,
title = {{UGM2N: An Unsupervised and Generalizable Mesh Movement Network via M-Uniform Loss}},
author = {Wang, Zhichao and Chen, Xinhai and Wang, Qinglin and Gao, Xiang and Zhang, Qingyang and Jia, Menghan and Zhang, Xiang and Liu, Jie},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/wang2025neurips-ugm2n/}
}