|国家预印本平台
首页|FreqMoE: Dynamic Frequency Enhancement for Neural PDE Solvers

FreqMoE: Dynamic Frequency Enhancement for Neural PDE Solvers

FreqMoE: Dynamic Frequency Enhancement for Neural PDE Solvers

来源:Arxiv_logoArxiv
英文摘要

Fourier Neural Operators (FNO) have emerged as promising solutions for efficiently solving partial differential equations (PDEs) by learning infinite-dimensional function mappings through frequency domain transformations. However, the sparsity of high-frequency signals limits computational efficiency for high-dimensional inputs, and fixed-pattern truncation often causes high-frequency signal loss, reducing performance in scenarios such as high-resolution inputs or long-term predictions. To address these challenges, we propose FreqMoE, an efficient and progressive training framework that exploits the dependency of high-frequency signals on low-frequency components. The model first learns low-frequency weights and then applies a sparse upward-cycling strategy to construct a mixture of experts (MoE) in the frequency domain, effectively extending the learned weights to high-frequency regions. Experiments on both regular and irregular grid PDEs demonstrate that FreqMoE achieves up to 16.6% accuracy improvement while using merely 2.1% parameters (47.32x reduction) compared to dense FNO. Furthermore, the approach demonstrates remarkable stability in long-term predictions and generalizes seamlessly to various FNO variants and grid structures, establishing a new ``Low frequency Pretraining, High frequency Fine-tuning'' paradigm for solving PDEs.

Ying Li、Hao Wang、Zhenzhe Zhang、Tianchen Zhu、Shanghang Zhang、Jianxin Li、Tianyu Chen、Haoyi Zhou

计算技术、计算机技术

Ying Li,Hao Wang,Zhenzhe Zhang,Tianchen Zhu,Shanghang Zhang,Jianxin Li,Tianyu Chen,Haoyi Zhou.FreqMoE: Dynamic Frequency Enhancement for Neural PDE Solvers[EB/OL].(2025-05-11)[2025-06-25].https://arxiv.org/abs/2505.06858.点此复制

评论