Machine learning enhanced real-time aerodynamic forces prediction based on sparse pressure sensor inputs
Junming Duan, Qian Wang, Jan S. Hesthaven

TL;DR
This paper introduces a machine learning-based model that predicts aerodynamic forces in real-time using sparse pressure sensor data, combining linear pressure reconstruction with neural network corrections for improved accuracy.
Contribution
It develops a hybrid linear-nonlinear model that efficiently predicts aerodynamic forces with minimal sensors, integrating reduced basis methods, sensor optimization, and neural network correction.
Findings
Accurately predicts forces with few sensors
Effective on both numerical and experimental data
Robust to sensor noise
Abstract
Accurate prediction of aerodynamic forces in real-time is crucial for autonomous navigation of unmanned aerial vehicles (UAVs). This paper presents a data-driven aerodynamic force prediction model based on a small number of pressure sensors located on the surface of UAV. The model is built on a linear term that can make a reasonably accurate prediction and a nonlinear correction for accuracy improvement. The linear term is based on a reduced basis reconstruction of the surface pressure distribution, where the basis is extracted from numerical simulation data and the basis coefficients are determined by solving linear pressure reconstruction equations at a set of sensor locations. Sensor placement is optimized using the discrete empirical interpolation method (DEIM). Aerodynamic forces are computed by integrating the reconstructed surface pressure distribution. The nonlinear term is an…
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Taxonomy
TopicsAerospace and Aviation Technology · Model Reduction and Neural Networks · Fluid Dynamics and Turbulent Flows
