Prediction of Daily Solar Irradiation Based on Chaos Theory

혼돈이론을 이용한 일적산 일사량의 예측

  • 조성인 (서울대학교 생물자원공학부) ;
  • 배영민 (서울대학교 생물자원공학부) ;
  • 윤진일 (경희대학교 생명과학부) ;
  • 박은우 (서울대학교 응용생물화학부) ;
  • 황헌 (성균관대학교 생물기전공학과)
  • Published : 2000.04.01

Abstract

A forcasting scheme for daily solar irradiance on agricultural field sis proposed by application of chaos theory to a long term observation data. It was conducted by reconstruction of phase space, attractor analysis, and Lyapunov analysis. Using the methodology , it was determined whether evolution of the five climatic data such as daily air temperature , water temperature , relative humidity, solar radiation, and wind speed are chaotic or not. The climatic data were collected for three years by an automated weather station at Hwasung-gun, Kyonggi-province. The results showed that the evolution of solar radiation was chaotic , and could be predicted. The prediction of the evolution of the solar radiation data was executed by using ' local optimal linear reconstruction ' algorithm . The RMS value of the predicting for the solar radiation evolution was 4.32 MJ/$m^2$ day. Therefore, it was feasible to predict the daily solar radiation based on the chaos theory.

Keywords

References

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