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Representative Temperature Assessment for Improvement of Short-Term Load Forecasting Accuracy

단기 전력수요예측 정확도 개선을 위한 대표기온 산정방안

  • 임종훈 (숭실대학교 전기공학과) ;
  • 김시연 (숭실대학교 전기공학과) ;
  • 박정도 (위덕대학교 에너지전기공학부) ;
  • 송경빈 (숭실대학교 전기공학부)
  • Received : 2013.02.12
  • Accepted : 2013.04.08
  • Published : 2013.06.30

Abstract

The current representative temperature selection method with five cities cannot reflect the sufficient regional climate characteristics. In this paper, the new representative temperature selection method is proposed with the consideration of eight representative cities. The proposed method considered the recent trend of power sales, the climate characteristics and population distribution to improve the accuracy of short-term load forecasting. Case study results for the accuracy of short-term load forecasting are compared for the traditional temperature weights of five cities and the proposed temperature weights of eight cities. The simulation results show that the proposed method provides more accurate results than the traditional method.

Keywords

References

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Cited by

  1. Weekly Maximum Electric Load Forecasting Method for 104 Weeks Using Multiple Regression Models vol.63, pp.9, 2014, https://doi.org/10.5370/KIEE.2014.63.9.1186