AI RESEARCH

SuperWing: a comprehensive transonic wing dataset for data-driven aerodynamic design

arXiv CS.LG

ArXi:2512.14397v2 Announce Type: replace Machine-learning surrogate models have shown promise in accelerating aerodynamic design, yet progress toward generalizable predictors for three-dimensional wings has been limited by the scarcity and restricted diversity of existing datasets. Here, we present SuperWing, a comprehensive open dataset of transonic swept-wing aerodynamics comprising 4,239 parameterized wing geometries and 28,856 Reynolds-averaged Navier-Stokes flow field solutions.