Tailoring Generative Adversarial Networks for Smooth Airfoil Design
Joyjit Chattoraj
Jian Cheng Wong
Zexuan Zhang
Manna Dai
Yingzhi Xia
Jichao Li
Xinxing Xu
Chin Chun Ooi
Yang Feng
M. Dao
Yong Liu

Abstract
In the realm of aerospace design, achieving smooth curves is paramount, particularly when crafting objects such as airfoils. Generative Adversarial Network (GAN), a widely employed generative AI technique, has proven instrumental in synthesizing airfoil designs. However, a common limitation of GAN is the inherent lack of smoothness in the generated airfoil surfaces. To address this issue, we present a GAN model featuring a customized loss function built to produce seamlessly contoured airfoil designs. Additionally, our model demonstrates a substantial increase in design diversity compared to a conventional GAN augmented with a post-processing smoothing filter.
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