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Predicting drag on rough surfaces by transfer learning of empirical correlations

Sang-Seung Lee, Jiasheng Yang, Pourya Forooghi, Alexander Stroh, Shervin Bagheri

2021Journal of Fluid Mechanics31 citationsDOIOpen Access PDF

Abstract

Recent developments in neural networks have shown the potential of estimating drag on irregular rough surfaces. Nevertheless, the difficulty of obtaining a large high-fidelity dataset to train neural networks is deterring their use in practical applications. In this study, we propose a transfer learning framework to model the drag on irregular rough surfaces even with a limited amount of direct numerical simulations. We show that transfer learning of empirical correlations, reported in the literature, can significantly improve the performance of neural networks for drag prediction. This is because empirical correlations include ‘approximate knowledge’ of the drag dependency in high-fidelity physics. The ‘approximate knowledge’ allows neural networks to learn the surface statistics known to affect drag more efficiently. The developed framework can be applied to applications where acquiring a large dataset is difficult but empirical correlations have been reported.

Topics & Concepts

DragComputer scienceArtificial neural networkDependency (UML)FidelityTransfer of learningEmpirical researchArtificial intelligenceStatistical physicsMechanicsPhysicsMathematicsStatisticsTelecommunicationsFluid Dynamics and Turbulent FlowsHydrology and Sediment Transport ProcessesAerodynamics and Fluid Dynamics Research