White-Model Predictive Control for Balancing Energy Savings and Thermal Comfort

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초록

To save energy consumed by a building, utilizing optimal predictive control with model predictive control (MPC) makes the most of energy storage systems (ESSs) to reduce the electrical energy consumption of peak and heavy loads. This study evaluated MPC applicability in a multi-zone commercial building using the EnergyPlus model and conducted multi-objective optimization of thermal comfort and energy savings. As a result of the simulation, optimal ESS charging scenarios responded to the fluctuating electricity pricing system, and changing the peak load time reduced the electricity bill of the grid by 55% compared to the existing operating method. At the same time, room temperatures stayed within the thermal comfort range, and the Pareto curve showed a proper balance between energy saving and thermal comfort. Especially, the proposed method with a white model is applicable for MPC applications in commercial buildings, as it gave optimal solutions within the target time interval.

키워드

model predictive controlmulti-objective optimizationgenetic algorithmthermal comfortenergy savingOPTIMIZATIONMANAGEMENTBUILDINGSTIME
제목
White-Model Predictive Control for Balancing Energy Savings and Thermal Comfort
저자
Jeon, Byung-KiKim, Eui-Jong
DOI
10.3390/en15072345
발행일
2022-04
유형
Article
저널명
Energies
15
7