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SAOT: An Enhanced Locality-Aware Spectral Transformer for Solving PDEs

About

Neural operators have shown great potential in solving a family of Partial Differential Equations (PDEs) by modeling the mappings between input and output functions. Fourier Neural Operator (FNO) implements global convolutions via parameterizing the integral operators in Fourier space. However, it often results in over-smoothing solutions and fails to capture local details and high-frequency components. To address these limitations, we investigate incorporating the spatial-frequency localization property of Wavelet transforms into the Transformer architecture. We propose a novel Wavelet Attention (WA) module with linear computational complexity to efficiently learn locality-aware features. Building upon WA, we further develop the Spectral Attention Operator Transformer (SAOT), a hybrid spectral Transformer framework that integrates WA's localized focus with the global receptive field of Fourier-based Attention (FA) through a gated fusion block. Experimental results demonstrate that WA significantly mitigates the limitations of FA and outperforms existing Wavelet-based neural operators by a large margin. By integrating the locality-aware and global spectral representations, SAOT achieves state-of-the-art performance on six operator learning benchmarks and exhibits strong discretization-invariant ability.

Chenhong Zhou, Jie Chen, Zaifeng Yang• 2025

Related benchmarks

TaskDatasetResultRank
Forward PDE solvingAirfoil
Relative L20.51
21
Forward PDE solvingPlasticity
Relative L2 Error0.0014
21
Forward PDE solvingPipe
Relative L2 Error0.0062
20
Forward PDE solvingElasticity
Relative L2 Error0.009
19
Aerodynamic SimulationShape-Net Car (test)
Volume Relative L2 Error0.0223
14
Aerodynamic SimulationAirfRANS (test)
Volume MSE0.0038
13
PDE Surrogate ModelingAirfRANS Unseen Reynolds Numbers
Volume0.1032
12
Aerodynamic PredictionAirfRANS (Unseen Reynolds)
CL0.4242
12
Aerodynamic PredictionAirfRANS (Unseen Angles)
CL0.2925
12
PDE Surrogate ModelingAirfRANS (Unseen Angles of Attack)
Volume0.0748
12
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