Redirigiendo al acceso original de articulo en 17 segundos...
Inicio  /  Aerospace  /  Vol: 10 Par: 7 (2023)  /  Artículo
ARTÍCULO
TITULO

Cooperation of Thin-Airfoil Theory and Deep Learning for a Compact Airfoil Shape Parameterization

Jianmiao Yi and Feng Deng    

Resumen

An airfoil shape parameterization that can generate a compact design space is highly desirable in practice. In this paper, a compact airfoil parameterization is proposed by incorporating deep learning into the PAERO parameterization method based on the thin-airfoil theory. Following the PAERO parameterization, the mean camber line is represented by a number of aerodynamic performance parameters, which can be used to narrow down the design space according to the thin-airfoil theory. In order to further reduce the design space, the airfoil thickness distribution is represented by data-driven generative models, which are trained by the thickness distributions of existing airfoils. The trained models can automatically filter out the physically unreasonable airfoil shapes, resulting in a highly compact design space. The test results show that the proposed method is significantly more efficient and more robust than the widely used CST parameterization method for airfoil optimization.