2023
DOI: 10.1093/nsr/nwad336
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Deciphering and integrating invariants for neural operator learning with various physical mechanisms

Rui Zhang,
Qi Meng,
Zhi-Ming Ma

Abstract: Neural operators have been explored as surrogate models for simulating physical systems to overcome the limitations of traditional partial differential equation (PDE) solvers. However, most existing operator learning methods assume that the data originate from a single physical mechanism, limiting their applicability and performance in more realistic scenarios. To this end, we propose Physical Invariant Attention Neural Operator (PIANO) to decipher and integrate the physical invariants (PI) for operator learni… Show more

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References 34 publications
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