WindMiL: Equivariant Graph Learning for Wind Loading Prediction
Themistoklis Vargiemezis · Charilaos Kanatsoulis · Catherine Gorle
Abstract
Accurate prediction of wind loading on buildings is critical for structural safety and sustainable design, yet conventional approaches such as wind tunnel testing and large-eddy simulation (LES) are prohibitively expensive for large-scale exploration. We introduce \textsc{WindMiL}, a new machine learning framework that combines systematic dataset generation with symmetry-aware graph neural networks (GNNs). First, we introduce a large-scale dataset of low-rise building aerodynamics by applying signed distance function interpolation to roof geometries and simulating 462 cases with LES across varying shapes and wind directions. Second, we develop a reflection-equivariant GNN that guarantees physically consistent predictions under mirrored geometries. Across interpolation and extrapolation evaluations, \textsc{WindMiL} achieves high accuracy for both the mean and the standard deviation of surface pressure coefficients (e.g., RMSE $\leq 0.02$ for mean $C_p$) and remains accurate under reflected-test evaluation, maintaining hit rates above $96\%$ where non-equivariant baselines drop by more than $10\%$. By pairing a systematic dataset with an equivariant surrogate, \textsc{WindMiL} enables efficient, scalable, and physically consistent prediction of wind loads on buildings.
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