2023
DOI: 10.1017/jfm.2023.832
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Discovering optimal flapping wing kinematics using active deep learning

Baptiste Corban,
Michael Bauerheim,
Thierry Jardin

Abstract: This paper focuses on the discovery of optimal flapping wing kinematics using a deep learning surrogate model for unsteady aerodynamics and multi-objective optimisation. First, a surrogate model of the unsteady forces experienced by a 3-D flapping wing is built, based on deep neural networks. The model is trained on a dataset of randomly generated kinematics simulated using direct numerical simulation (DNS). Once trained, the neural networks can quickly predict the unsteady lift and torques experienced by the … Show more

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