作者
Tarek Ayman, Mayar A Elrefaie, Eman Sayed, Mohammed Elrefaie, Mahmoud Ayyad, Ahmed A Hamada, Mohamed M Abdelrahman
发表日期
2023/10/21
研讨会论文
2023 5th Novel Intelligent and Leading Emerging Sciences Conference (NILES)
页码范围
157-160
出版商
IEEE
简介
This paper presents an approach to estimate the aerodynamic coefficients of airfoils in the transonic regime using Artificial Neural Networks. The transonic regime is a critical and challenging aerodynamic domain, and our approach utilizes data generated by the OpenFOAM ® to train our model. Our dataset encompasses a wide range of transonic flow conditions and different airfoil shapes, enabling our Artificial Neural Networks to capture the complex behavior of aerodynamic phenomena in this regime. Our proposed framework achieves high accuracy, with the lift and moment coefficient predictions demonstrating an unprecedented accuracy level of 99.7% with respect to the test dataset obtained by OpenFOAM ® . Our results demonstrate the potential of Artificial Neural Networks to accurately predict aerodynamic coefficients in the transonic regime, which could have significant implications for the design and …
引用总数
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T Ayman, MA Elrefaie, E Sayed, M Elrefaie, M Ayyad… - 2023 5th Novel Intelligent and Leading Emerging …, 2023