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Study on the Prediction of wind Power Generation Based on Artificial Neural Network

인공신경망 기반의 풍력발전기 발전량 예측에 관한 연구

  • Kim, Se-Yoon (Kunsan National University, School of Electronic & Information Engineering) ;
  • Kim, Sung-Ho (Kunsan National University, School of Electronic & Information Engineering)
  • 김세윤 (군산대학교 전자정보공학부) ;
  • 김성호 (군산대학교 전자정보공학부)
  • Received : 2011.07.09
  • Accepted : 2011.09.15
  • Published : 2011.11.01

Abstract

The power generated by wind turbines changes rapidly because of the continuous fluctuation of wind speed and direction. It is important for the power industry to have the capability to predict the changing wind power. In this paper, neural network based wind power prediction scheme which uses wind speed and direction is considered. In order to get a better prediction result, compression function which can be applied to the measurement data is introduced. Empirical data obtained from wind farm located in Kunsan is considered to verify the performance of the compression function.

Keywords

References

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