Litcius/Paper detail

Machine Learning Assisted Prediction of Airfoil Lift-to-Drag Characteristics for Mars Helicopter

Pengyue Zhao, Xifeng Gao, Bo Zhao, Huan Liu, Jianwei Wu, Zongquan Deng

2023Aerospace19 citationsDOIOpen Access PDF

Abstract

The aerodynamic properties of rotor systems operating within low Reynolds number flow field conditions are profoundly influenced by their geometric and flight parameters. Precise estimation of optimal airfoil parameters at different angles of attack is indispensable for enhancing these aerodynamic properties. This study presents a technique for optimizing the airfoil parameters of a Mars helicopter by employing machine learning methods in conjunction with computational fluid dynamics (CFD) simulations, thereby circumventing the need for expensive experiments and simulations. The effectiveness of diverse machine learning algorithms for prediction is evaluated, and the resultant models are utilized for airfoil optimization. Ultimately, the aerodynamic properties of the optimized airfoil are experimentally validated. The experimental findings exhibit agreement with the simulated predictions, indicating the successful optimization of the aerodynamic properties. This research offers valuable insights into the influence of airfoil parameters on the aerodynamic properties of the Mars helicopter, along with guidance for airfoil optimization.

Topics & Concepts

AirfoilAerodynamicsAerospace engineeringAngle of attackComputational fluid dynamicsLift-to-drag ratioLift (data mining)Mars Exploration ProgramComputer scienceReynolds numberAerodynamic centerDragHelicopter rotorPitching momentEngineeringRotor (electric)Mechanical engineeringMechanicsPhysicsMachine learningTurbulenceAstronomyModel Reduction and Neural NetworksFluid Dynamics and Turbulent FlowsBiomimetic flight and propulsion mechanisms