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A deep learning approach for hydrofoil optimization of tidal turbines

Hydrofoil optimization plays a crucial role in improving the hydrodynamic performance of tidal turbines. However, the high-dimensional representations in hydrofoil design space require significant Computational Fluid Dynamics (CFD) simulations, increasing computational load and time expenditure. Thi...

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Bibliographic Details
Published in:Ocean engineering 2024-08, Vol.305, p.117996, Article 117996
Main Authors: Li, Changming, Liang, Bingchen, Yuan, Peng, Zhang, Qin, Tan, Junzhe, Si, Xiancai, Liu, Yonghui
Format: Article
Language:English
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Summary:Hydrofoil optimization plays a crucial role in improving the hydrodynamic performance of tidal turbines. However, the high-dimensional representations in hydrofoil design space require significant Computational Fluid Dynamics (CFD) simulations, increasing computational load and time expenditure. This paper proposes a hydrofoil optimization framework based on deep learning to achieve an effective mapping between design parameters, pressure fields, and hydrodynamic characteristics. The designed hydrofoil represented using the Signed Distance Function (SDF) is input to Convolutional Neural Networks (CNN) for fast prediction of hydrodynamic coefficients and pressure field. Due to the effective integration of the prediction model and genetic optimization algorithm, this framework can generate a large number of smooth hydrofoils and rapidly predict their hydrodynamic performance to achieve efficient optimization of hydrofoils. The optimized hydrofoil shapes obtained based on the above framework exhibit a higher lift-to-drag ratio than common hydrofoils. Furthermore, the optimized hydrofoils are applied to design tidal energy turbine blades. The simulation results demonstrate that the hydrodynamic performance of tidal turbines can be effectively improved through hydrofoil design optimization. The proposed framework enhances the design efficiency of the tidal turbine rotor and provides turbine hydrofoils with higher power coefficients. •The novel data-driven hydrofoil optimization framework is established.•Deep learning is used for fast hydrofoil hydrodynamic performance prediction.•The optimized hydrofoil exhibits a higher lift-to-drag ratio than common hydrofoils.•The method provides tidal turbine hydrofoils with higher power coefficients.
ISSN:0029-8018
1873-5258
DOI:10.1016/j.oceaneng.2024.117996