Interpreting CFD Surrogates through Sparse Autoencoders
Interpreting CFD Surrogates through Sparse Autoencoders
Learning-based surrogate models have become a practical alternative to high-fidelity CFD solvers, but their latent representations remain opaque and hinder adoption in safety-critical or regulation-bound settings. This work introduces a posthoc interpretability framework for graph-based surrogate models used in computational fluid dynamics (CFD) by leveraging sparse autoencoders (SAEs). By obtaining an overcomplete basis in the node embedding space of a pretrained surrogate, the method extracts a dictionary of interpretable latent features. The approach enables the identification of monosemantic concepts aligned with physical phenomena such as vorticity or flow structures, offering a model-agnostic pathway to enhance explainability and trustworthiness in CFD applications.
Yeping Hu、Shusen Liu
计算技术、计算机技术
Yeping Hu,Shusen Liu.Interpreting CFD Surrogates through Sparse Autoencoders[EB/OL].(2025-07-21)[2025-08-10].https://arxiv.org/abs/2507.16069.点此复制
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