forms a pillar of many modern machine learning techniques. Within the context of design, it
proposes that valid designs reside on low dimensional manifolds in the high dimensional
design spaces. Our previous research—BézierGAN—suggests learning the low dimensional
parameterization of valid airfoil designs can indeed accelerate aerodynamic optimizations.
However, it incurs problems such as misalignment, long training time, and the trouble of fi …