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Mitigating spectral bias for the multiscale operator learning

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Neural operators have emerged as a powerful tool for learning the mapping between infinite-dimensional parameter and solution spaces of partial differential equations (PDEs). In this work, we focus on multiscale PDEs that have important applications such as reservoir modeling and turbulence prediction. We demonstrate that for such PDEs, the spectral bias towards low-frequency components presents a significant challenge for existing neural operators. To address this challenge, we propose a hierarchical attention neural operator (HANO) inspired by the hierarchical matrix approach. HANO features a scale-adaptive interaction range and self-attentions over a hierarchy of levels, enabling nested feature computation with controllable linear cost and encoding/decoding of multiscale solution space. We also incorporate an empirical $H^1$ loss function to enhance the learning of high-frequency components. Our numerical experiments demonstrate that HANO outperforms state-of-the-art (SOTA) methods for representative multiscale problems.

Xinliang Liu, Bo Xu, Shuhao Cao, Lei Zhang• 2022

Related benchmarks

TaskDatasetResultRank
PDE solvingDarcy Regular Grid (test)
Relative L2 Error0.0079
41
PDE solvingNavier-Stokes Regular Grid (test)
Relative L2 Error0.1847
41
PDE solvingAirfoil Structured Mesh (test)
Relative L2 Error0.0065
38
PDE solvingPipe Structured Mesh (test)
Relative L2 Error0.0059
38
Forward PDE solvingAirfoil
Relative L20.65
36
Forward PDE solvingPlasticity
Relative L2 Error0.0333
36
Forward PDE solvingPipe
Relative L2 Error0.0059
35
PDE solvingPlasticity Structured Mesh (test)
Relative L2 Error0.0333
23
Operator learningAirfoil Structured Mesh (test)
Relative L2 Error0.0065
15
Operator learningDarcy Regular Grid (test)
Relative L2 Error0.0079
15
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