Graph Neural Networks for Aerodynamic Flow Reconstruction from Sparse Sensing
Gregory Duth\'e, Imad Abdallah, Sarah Barber, Eleni Chatzi

TL;DR
This paper introduces a deep reversible Graph Neural Network approach for reconstructing aerodynamic flow fields around airfoils from surface pressure data, demonstrating good generalization in turbulent conditions.
Contribution
It presents a novel GNN-based method for flow reconstruction from surface measurements, capable of handling arbitrary geometries and turbulent flows.
Findings
Successfully reconstructs pressure and velocity fields from surface data.
Generalizes well to unseen airfoil shapes and flow conditions.
Provides useful farfield properties for engineering applications.
Abstract
Sensing the fluid flow around an arbitrary geometry entails extrapolating from the physical quantities perceived at its surface in order to reconstruct the features of the surrounding fluid. This is a challenging inverse problem, yet one that if solved could have a significant impact on many engineering applications. The exploitation of such an inverse logic has gained interest in recent years with the advent of widely available cheap but capable MEMS-based sensors. When combined with novel data-driven methods, these sensors may allow for flow reconstruction around immersed structures, benefiting applications such as unmanned airborne/underwater vehicle path planning or control and structural health monitoring of wind turbine blades. In this work, we train deep reversible Graph Neural Networks (GNNs) to perform flow sensing (flow reconstruction) around two-dimensional aerodynamic…
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Taxonomy
TopicsModel Reduction and Neural Networks · Adversarial Robustness in Machine Learning · Advanced Neural Network Applications
