CST- gan:基于CST参数化的光滑翼型生成对抗网络

Jinxing Lin, Chenliang Zhang, Xiaoye Xie, Xingyu Shi, Xiaoyu Xu, Yanhui Duan
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引用次数: 2

摘要

生成对抗网络(GANs)以其强大的生成能力而闻名。近年来,gan已被应用于气动形状优化(ASO)领域。然而,现有的基于gan的翼型生成方法只能生成与固定横坐标对应的离散坐标序列,不能应用于直接生成翼型的场景。本文将类函数/形状函数变换(class function / shape function transformation, CST)这一能够很好地表征翼型几何形状的参数化方法与gan相结合。因此,提出了一种CST- gans方法,该方法可以直接生成翼型的CST参数化变量,而不是翼型点序列。给定横坐标和参数化变量,可以通过CST表达式计算相应的坐标。另一方面,cst - gan可以产生表面光滑的翼型几何形状,而无需引入bsamizier曲线或Savitzky-Golay滤波器。实验表明,cst - gan模型不仅可以用更少的神经网络参数生成更光滑的翼型,而且可以生成更多样化的翼型,是一种很有前途的模型。
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CST-GANs: A Generative Adversarial Network Based on CST Parameterization for the Generation of Smooth Airfoils
Generative adversarial networks (GANs) are well-known for their powerful generation ability. In recent years, GANs have been applied in the field of aerodynamic shape optimization (ASO). However, the existing airfoil generation methods based on GANs can only generate a discrete sequence of coordinates corresponding to fixed abscissas, and cannot be applied to the scenarios that generate airfoils directly. In this paper, class function / shape function transformation (CST), a parameterization method of the airfoil that forms a good representation of the geometric shape of the airfoil, is combined with GANs. Therefore, a CST-GANs method is proposed that can directly generate the CST parameterized variables of the airfoil instead of a sequence of airfoil points. Given the abscissa and parameterized variables, the corresponding coordinate can be calculated by CST expression. On the other hand, CST-GANs can generate airfoil geometry with smooth surface without intro-ducing the Bézier curve or the Savitzky-Golay filter. Experiments show that CST-GANs is a promising model, which can not only generate smoother airfoils with fewer neural network parameters but also generate more diverse airfoils.
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