Airfoil's Aerodynamic Coefficients Prediction using Artificial Neural Network
Hassan Moin, Hafiz Zeeshan Iqbal Khan, Surrayya Mobeen, Jamshed, Riaz

TL;DR
This paper explores using Artificial Neural Networks to predict aerodynamic coefficients of airfoils, aiming to provide a faster, cost-effective alternative to traditional experimental and numerical methods in aerodynamics.
Contribution
It investigates the effectiveness of different ANN architectures and datasets for predicting aerodynamic coefficients across various airfoil geometries and flow conditions.
Findings
ANNs can accurately predict lift, drag, and moment coefficients.
The method reduces computational and experimental costs.
Different network architectures impact prediction accuracy.
Abstract
Figuring out the right airfoil is a crucial step in the preliminary stage of any aerial vehicle design, as its shape directly affects the overall aerodynamic characteristics of the aircraft or rotorcraft. Besides being a measure of performance, the aerodynamic coefficients are used to design additional subsystems such as a flight control system, or predict complex dynamic phenomena such as aeroelastic instability. The coefficients in question can either be obtained experimentally through wind tunnel testing or, depending upon the accuracy requirements, by numerically simulating the underlying fundamental equations of fluid dynamics. In this paper, the feasibility of applying Artificial Neural Networks (ANNs) to estimate the aerodynamic coefficients of differing airfoil geometries at varying Angle of Attack, Mach and Reynolds number is investigated. The ANNs are computational entities…
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Taxonomy
TopicsModel Reduction and Neural Networks · Fluid Dynamics and Turbulent Flows · Aerospace and Aviation Technology
