Graph Transformers for inverse physics: reconstructing flows around arbitrary 2D airfoils
Gregory Duth\'e, Imad Abdallah, Eleni Chatzi

TL;DR
This paper presents a Graph Transformer framework that effectively reconstructs full aerodynamic flow fields from sparse surface measurements around 2D airfoils, combining local geometric processing with global reasoning.
Contribution
It introduces a novel Graph Transformer architecture tailored for inverse physics problems on meshes, demonstrating high accuracy and robustness in flow reconstruction from limited boundary data.
Findings
High reconstruction accuracy on diverse airfoil geometries
Fast inference times for real-time applications
Robustness to reduced sensor coverage
Abstract
We introduce a Graph Transformer framework that serves as a general inverse physics engine on meshes, demonstrated through the challenging task of reconstructing aerodynamic flow fields from sparse surface measurements. While deep learning has shown promising results in forward physics simulation, inverse problems remain particularly challenging due to their ill-posed nature and the difficulty of propagating information from limited boundary observations. Our approach addresses these challenges by combining the geometric expressiveness of message-passing neural networks with the global reasoning of Transformers, enabling efficient learning of inverse mappings from boundary conditions to complete states. We evaluate this framework on a comprehensive dataset of steady-state RANS simulations around diverse airfoil geometries, where the task is to reconstruct full pressure and velocity…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Computer Graphics and Visualization Techniques · Computational Physics and Python Applications
MethodsAttention Is All You Need · Softmax · Laplacian EigenMap · Adam · Residual Connection · Dropout · Absolute Position Encodings · Laplacian Positional Encodings · Byte Pair Encoding · Linear Layer
