Real building implementation of a deep reinforcement learning controller to enhance energy efficiency and indoor temperature control

被引:13
作者
Silvestri, Alberto [1 ]
Coraci, Davide [2 ]
Brandi, Silvio [2 ]
Capozzoli, Alfonso [2 ]
Borkowski, Esther [1 ]
Kohler, Johannes [3 ]
Wu, Duan [4 ]
Zeilinger, Melanie N. [3 ]
Schlueter, Arno [1 ]
机构
[1] Swiss Fed Inst Technol, Architecture & Bldg Syst, Zurich, Switzerland
[2] Politecn Torino, BAEDA Lab, Dept Energy, TEBE Res Grp, Turin, Italy
[3] Swiss Fed Inst Technol, Inst Dynam Syst & Control, Zurich, Switzerland
[4] Mitsubishi Elect R&D Ctr Europe BV, Livingston, Scotland
关键词
Deep reinforcement learning; Real implementation; Building energy management; HVAC control; Energy efficiency; MANAGEMENT; SIMULATION; FRAMEWORK; SYSTEMS; NEST;
D O I
10.1016/j.apenergy.2024.123447
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Deep Reinforcement Learning (DRL) has emerged as a promising approach to address the trade-off between energy efficiency and indoor comfort in buildings, potentially outperforming conventional Rule-Based Controllers (RBC). This paper explores the real-world application of a Soft-Actor Critic (SAC) DRL controller in a building's Thermally Activated Building System (TABS), focusing on optimising energy consumption and maintaining comfortable indoor temperatures. Our approach involves pre-training the DRL agent using a simplified Resistance-Capacitance (RC) model calibrated with real building data. The study first benchmarks the DRL controller against three RBCs, two Proportional-Integral (PI) controllers and a Model Predictive Controller (MPC) in a simulated environment. In the simulation study, DRL reduces energy consumption by 15% to 50% and decreases temperature violations by 25% compared to RBCs, reducing also energy consumption and temperature violations compared to PI controllers by respectively 23% and 5%. Moreover, DRL achieves comparable performance in terms of temperature control but consuming 29% more energy than an ideal MPC. When implemented in a real building during a two-month cooling season, the DRL controller performances were compared with those of the best-performing RBC, enhancing indoor temperature control by 68% without increasing energy consumption. This research demonstrates an effective strategy for training and deploying DRL controllers in real building energy systems, highlighting the potential of DRL in practical energy management applications.
引用
收藏
页数:19
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