A Study on Prediction of Hourly Cooling Load Using Building Area

건물 면적을 이용한 시간별 냉방부하 예측에 관한 연구

  • 유성연 (충남대학교 BK21 메카트로닉스사업단) ;
  • 한규현 (충남대학교 BK21 메카트로닉스사업단)
  • Received : 2010.07.01
  • Published : 2010.11.10

Abstract

New methodology is proposed to predict the hourly cooling load of the next day using maximum/minimum temperature and building area. The maximum and minimum temperature are obtained from forecasted weather data. The cooling load parameters related to building area are set through a database provided from reference buildings. To validate the performance of the proposed method, the predicted cooling loads in hourly bases are calculated and compared with the measured data. The predicted results show fairly good agreement with the measured data for benchmarking building.

Keywords

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