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Developing smart air purifier control strategies for better IAQ and energy efficiency using reinforcement learning.

Authors :
Shang, Wenzhe
Liu, Junjie
Wang, Congcong
Li, Jiayu
Dai, Xilei
Source :
Building & Environment; Aug2023, Vol. 242, pN.PAG-N.PAG, 1p
Publication Year :
2023

Abstract

PM2.5 has negative impact on human health. Although air purifiers can remove indoor PM2.5 effectively, occupants do not use them well to achieve best performance. It is important to develop automatic control strategy for air purifiers to achieve both indoor air quality and energy efficiency. As traditional air purifier control strategy cannot adapt to the stochastic behavior of residents such as PM2.5 emissions and occupants' window behavior and result in superfluous energy consumption, this study uses the deep reinforcement learning (DeepRL) approach to automatically control the air purifier, which provide better indoor air quality with lower energy consumption. To make the DeepRL applicable in real daily life, we first develop a stochastic model based on measured indoor air quality data, which is able to simulate the indoor PM2.5 process in real time. To improve the energy efficiency of air purifier under this condition, we further trained DeepRL approach to control the air purifier under the simulated PM2.5 process. By virtue of adaption to the stochastic environmental parameters, RL strategy can make the best fit decision in advance to achieve more stable control effect. Comparing to the baseline strategy, both RL-1 and RL-2 show significant improvement in energy efficiency. In specific, RL-1 strategy could reduce 43.7% energy consumption with basically the same indoor PM2.5 concentration level in the best-IAQ scenario, and RL-2 strategy could reduce 40.6% energy consumption and 25.6% frequency of indoor PM2.5 concentration exceed WHO air quality guideline. Thus, it has better comprehensive control performance in the general-IAQ scenario. • We developed a stochastic room model to describe indoor IAQ process. • RL-1 saves air purifier energy by 43% with the same indoor PM2.5 concentration level. • RL-2 saves energy by 40.6% and reduces average indoor PM2.5 concentration by 3.7%. • RL adapts to the stochastic environmental parameters and achieve a better control effect. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03601323
Volume :
242
Database :
Supplemental Index
Journal :
Building & Environment
Publication Type :
Academic Journal
Accession number :
169752960
Full Text :
https://doi.org/10.1016/j.buildenv.2023.110556