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NTIS 바로가기大韓建築學會論文集. Journal of the architectural institute of korea. 構造系, v.35 no.2 = no.364, 2019년, pp.45 - 52
박성호 (성균관대학교 미래도시융합공학과) , 안기언 (서울대학교) , 황승호 (SKT Energy Solution 개발팀) , 최선규 (SKT Energy ICT 사업1팀) , 박철수 (서울대학교 건축학과)
BEMS(Building Energy Management Systems) have been applied to office buildings and collect relevant building energy data, e.g. temperatures, mass flow rates and energy consumptions of building mechanical systems and indoor spaces. The aforementioned measured data can be beneficially utilized for dev...
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