DOI QR코드

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Predicting the 2-dimensional airfoil by using machine learning methods

  • Thinakaran, K. (Computer Science Engeneering., Saveetha School of Engineering, SIMATS) ;
  • Rajasekar, R. (Aeronautical Engineering, MVJ Engineering College) ;
  • Santhi, K. (Sreenivasa Institute of Technology and Management Studies) ;
  • Nalini, M. (Computer Science Engeneering., Saveetha School of Engineering, SIMATS)
  • 투고 : 2018.11.05
  • 심사 : 2020.02.04
  • 발행 : 2020.07.25

초록

In this paper, we develop models to design the airfoil using Multilayer Feed-forward Artificial Neural Network (MFANN) and Support Vector Regression model (SVR). The aerodynamic coefficients corresponding to series of airfoil are stored in a database along with the airfoil coordinates. A neural network is created with aerodynamic coefficient as input to produce the airfoil coordinates as output. The performance of the models have been evaluated. The results show that the SVR model yields the lowest prediction error.

키워드

참고문헌

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