Faster by Design: Interactive Aerodynamics via Neural Surrogates Trained on Expert-Validated CFD
Nicholas Thumiger, Andrea Bartezzaghi, Mattia Rigotti, Cezary Skura, Thomas Frick + 3 more
TLDR
This paper enables interactive race-car aerodynamic design using a new neural surrogate model (GIST) trained on expert-validated CFD data.
Key contributions
- Introduces a high-fidelity RANS dataset for LMP2 race cars, expert-validated by Dallara for motorsport relevance.
- Presents GIST, a graph-based neural operator using spectral embeddings for complex, tightly packed geometries.
- GIST achieves state-of-the-art accuracy, enabling interactive aerodynamic design in industrial motorsport workflows.
Why it matters
Traditional CFD is too slow for extensive race-car aerodynamic design. This work provides a solution by introducing a specialized dataset and a highly accurate AI model. It allows engineers to interactively explore design spaces, significantly accelerating development.
Original Abstract
Computational Fluid Dynamics (CFD) is central to race-car aerodynamic development, yet its cost -- tens of thousands of core-hours per high-fidelity evaluation -- severely limits the design space exploration feasible within realistic budgets. AI-based surrogate models promise to alleviate this bottleneck, but progress has been constrained by the limited complexity of public datasets, which are dominated by smoothed passenger-car shapes that fail to exercise surrogates on the thin, complex, highly loaded components governing motorsport performance. This work presents three primary contributions. First, we introduce a high-fidelity RANS dataset built on a parametric LMP2-class CAD model and spanning six operating conditions (map points) covering straight-line and cornering regimes, generated and validated by aerodynamics experts at Dallara to preserve features relevant to industrial motorsport. Second, we present the Gauge-Invariant Spectral Transformer (GIST), a graph-based neural operator whose spectral embeddings encode mesh connectivity to enhance predictions on tightly packed, complex geometries. GIST guarantees discretization invariance and scales linearly with mesh size, achieving state-of-the-art accuracy on both public benchmarks and the proposed race-car dataset. Third, we demonstrate that GIST achieves a level of predictive accuracy suitable for early-stage aerodynamic design, providing a first validation of the concept of interactive design-space exploration -- where engineers query a surrogate in place of the CFD solver -- within industrial motorsport workflows.
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