LGAIOct 17, 2025

AB-UPT for Automotive and Aerospace Applications

arXiv:2510.15808v14 citationsh-index: 5
Originality Synthesis-oriented
AI Analysis

This work provides incremental improvements by applying an existing method to new datasets, potentially benefiting industry-scale applications in automotive and aerospace engineering.

The paper applied the AB-UPT method to automotive and aerospace computational fluid dynamics simulations, achieving near-perfect prediction of aerodynamic forces with seconds of inference time and training within a day on a single GPU.

The recently proposed Anchored-Branched Universal Physics Transformers (AB-UPT) shows strong capabilities to replicate automotive computational fluid dynamics simulations requiring orders of magnitudes less compute than traditional numerical solvers. In this technical report, we add two new datasets to the body of empirically evaluated use-cases of AB-UPT, combining high-quality data generation with state-of-the-art neural surrogates. Both datasets were generated with the Luminary Cloud platform containing automotives (SHIFT-SUV) and aircrafts (SHIFT-Wing). We start by detailing the data generation. Next, we show favorable performances of AB-UPT against previous state-of-the-art transformer-based baselines on both datasets, followed by extensive qualitative and quantitative evaluations of our best AB-UPT model. AB-UPT shows strong performances across the board. Notably, it obtains near perfect prediction of integrated aerodynamic forces within seconds from a simple isotopically tesselate geometry representation and is trainable within a day on a single GPU, paving the way for industry-scale applications.

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