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NTIS 바로가기大韓建築學會論文集. Journal of the architectural institute of korea. 計劃系, v.30 no.7 = no.309, 2014년, pp.211 - 220
김영진 (선문대학교, 건축사회환경학부) , 박철수 (성균관대학교 건축토목공학부)
For Model-Predictive Control (MPC) to be implemented in real application, data driven inverse models are advantageous since they are easily constructed as well as relatively fast and accurate, compared to first principle based models (simplified calculation [ISO 13790], dynamic simulation [EnergyPlu...
김영진, 윤경수, 박철수, 패턴 서치 알고리즘과 유전자 알고리즘을 이용한 이중외피 시스템의 최적 제어, 대학건축학회논문집, 27(7), p.p.239-248, 2011
김영진, 박철수, 김인한, 몬테카를로 빌딩 시뮬레이션의 샘플링 방법과 모집단 추정, 대학건축학회논문집 28(6), p.p.227-238, 2012
윤경수, 박철수, 이중 외피 시스템의 수준별 제어, 대한건축학회논문집, 26(11), p.p.317-326, 2010
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윤성환, 박철수, 기존 건축물을 위한 x-Ray 개념의 에너지 모델 작성과 평가, 대한건축학회논문집, 30(1), p.p.235-244, 2014
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