標題: Energy optimization associated with thermal comfort and indoor air control via a deep reinforcement learning algorithm
作者: Valladares, William
Galindo, Marco
Gutierrez, Jorge
Wu, Wu-Chieh
Liao, Kuo-Kai
Liao, Jen-Chung
Lu, Kuang-Chin
Wang, Chi-Chuan
機械工程學系
Department of Mechanical Engineering
關鍵字: Deep reinforcement learning;Optimization;Thermal comfort;Indoor air quality;Ventilation;Air conditioning
公開日期: 15-五月-2019
摘要: The aim of this work is to propose an artificial intelligence algorithm that maintains thermal comfort and air quality within optimal levels while consuming the least amount of energy from air-conditioning units and ventilation fans. The proposed algorithm is first trained with 10 years of simulated past experiences in a subtropical environment in Taiwan. The simulations are carried out in a laboratory room having around 2-10 occupants and a classroom with up to 60 occupants. The proposed agent was first selected among different configurations of itself, with the 10th -year of training data set, then it was tested in real environments. Finally, a comparison between the current control methods and this new strategy is performed. It was found that the proposed AI agent can satisfactorily control and balance the needs of thermal comfort, indoor air quality (in terms of CO2 levels) and energy consumption caused by air-conditioning units and ventilation fans. For both environments, the AI agent can successfully manipulate the indoor environment within the accepted PMV values, ranging from about -0.1 to + 0.07 during all the operating time. In regards to the indoor air quality, in terms of the CO2 levels, the results are also satisfactory. By utilizing the agent, the average CO2 levels fall below 800 ppm all the time. The results show that the proposed agent has a superior PMV and 10% lower CO2 levels than the current control system while consuming about 4-5% less energy.
URI: http://dx.doi.org/10.1016/j.buildenv.2019.03.038
http://hdl.handle.net/11536/151946
ISSN: 0360-1323
DOI: 10.1016/j.buildenv.2019.03.038
期刊: BUILDING AND ENVIRONMENT
Volume: 155
起始頁: 105
結束頁: 117
顯示於類別:期刊論文