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건물 사용 시나리오에 따른 냉난방 부하 민감도 분석의 불확실성
Uncertainty in Sensitivity Analysis of Architectural Design Variables for Heating and Cooling Loads Depending on Usage Scenarios

대한건축학회논문집 = Journal of the architectural institute of korea, v.37 no.11, 2021년, pp.247 - 253  

유영서 (서울대 대학원) ,  이동혁 (서울대 공학연구원) ,  박철수 (서울대 건축학과.건설환경종합연구소)

Abstract AI-Helper 아이콘AI-Helper

It has been widely acknowledged that rational decision making at architectural design stage is important for energy efficient building design. In other words, the relationship between building energy use and design variables must be carefully analyzed. For this purpose, the global sensitivity analys...

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