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가우시안 프로세스 모델과 냉동기 실시간 최적 제어
Gaussian Process Model for Real-Time Optimal Control of Chiller System

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)

Abstract AI-Helper 아이콘AI-Helper

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...

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참고문헌 (46)

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