Predicting drag on rough surfaces by transfer learning of empirical correlations
ORAL
Abstract
In this presentation, we discuss how to model the drag on irregular rough surfaces using neural networks when only a limited amount of high-fidelity data is available. We propose a transfer learning framework that pre-trains neural networks with empirical correlations and fine-tunes them with a few direct numerical simulation data. We found that pre-training neural networks with empirical correlations can significantly improve the generalization ability of neural networks. The developed framework can be applied to applications where acquiring a large dataset is difficult, but empirical correlations have been reported.
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Publication: Sangseung Lee, Jiasheng Yang, Pourya Forooghi, Alexander Stroh, and Shervin Bagheri. "Predicting drag on rough surfaces by transfer learning of empirical correlations." arXiv preprint arXiv:2106.05995 (2021).
Presenters
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Sangseung Lee
KTH Royal Institute of Technology
Authors
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Sangseung Lee
KTH Royal Institute of Technology
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Jiasheng Yang
Karlsruhe Institute of Technology
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Pourya Forooghi
Aarhus University
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Alexander Stroh
Karlsruhe Institute of Technology
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Shervin Bagheri
KTH Royal Institute of Technology