Litcius/Paper detail

Airfoil aerodynamic/stealth design based on conditional generative adversarial networks

Shi-Yi Jin, Shu-sheng Chen, Shiqi Che, Jinping Li, Jia-hao Lin, Zhenghong Gao

2024Physics of Fluids10 citationsDOI

Abstract

Aerodynamic/stealth design is becoming an important factor in the advanced airfoil design. In this work, a supervised machine learning method is proposed for aerodynamic and stealth integrated airfoil design. The conditional generative adversarial network (CGAN) is constructed for the multidisciplinary design of airfoil. Then, the generator and discriminator simply using deep neural network have good robustness and stability in training. The CGAN model also shows good generalization capability in the test set, with less than 1% error in fitting to the airfoil profile data, and the generated airfoils are within 10% error compared to the test airfoil aerodynamic stealth characteristics. In addition, the optimization results based on the CGAN model demonstrate that aerodynamic performance improvement would increase the airfoil camber and stealth performance improvement would sharpen the airfoil leading edge.

Topics & Concepts

AirfoilPhysicsAerodynamicsAdversarial systemAerospace engineeringGenerative grammarMechanicsArtificial intelligenceComputer scienceEngineeringModel Reduction and Neural NetworksAdvanced Image Processing TechniquesGenerative Adversarial Networks and Image Synthesis
Airfoil aerodynamic/stealth design based on conditional generative adversarial networks | Litcius