A comparative analysis of reinforcement learning and model predictive control for HVAC system optimization
บทความในวารสาร
ผู้เขียน/บรรณาธิการ
กลุ่มสาขาการวิจัยเชิงกลยุทธ์
รายละเอียดสำหรับงานพิมพ์
รายชื่อผู้แต่ง: Supakit Kumkam, Piyatida Trinuruk, Pipat Chaiwiwatworakul, Kiyoshi Saito,
ผู้เผยแพร่: Elsevier
ปีที่เผยแพร่ (ค.ศ.): 2025
Volume number: 112
eISSN: 2352-7102
ภาษา: English-United States (EN-US)
บทคัดย่อ
Heating, ventilation, and air-conditioning (HVAC) systems account for an important energy de
mand and significant greenhouse gas emissions in the building sector. Traditional control
methods often result in inefficiency and compromise occupant comfort due to their lack of dy
namic adaptability. This study compared Reinforcement Learning (RL) algorithm using the Deep
Q-Learning (DQL) technique with Model Predictive Control (MPC) employing a Monte Carlo Tree
Search (MCTS) algorithm. This research aimed to minimize energy consumption while providing
thermal comfort in a building. The findings, obtained using EnergyPlus simulation indicated that
DQL significantly outperformed MCTS-based MPC. For one year testing, DQL achieved 3.29 %
and 4.62 % reductions in energy use compared to rule-based and on-off controls, respectively. In
contrast, MCTS-based MPC achieved only 0.43 % and 1.8 % reductions, with higher levels of
discomfort. DQL’s adaptability stemmed from experience-based learning and allowed effectiv
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