Deep Reinforcement Learning-Based Joint Optimization Control of Indoor Temperature and Relative Humidity in Office Buildings

Author:

Chen Changcheng1,An Jingjing1,Wang Chuang1,Duan Xiaorong1,Lu Shiyu2,Che Hangyu2ORCID,Qi Meiwei3,Yan Da45ORCID

Affiliation:

1. School of Environment and Energy Engineering, Beijing University of Civil Engineering and Architecture, Beijing 100044, China

2. Hitachi (China), Ltd., Beijing 100190, China

3. Beijing Tongheng Energy & Environment Technology Institute, Beijing 100085, China

4. Building Energy Research Center, School of Architecture, Tsinghua University, Ministry of Education, Beijing 100084, China

5. Key Laboratory of Eco Planning & Green Building, Tsinghua University, Ministry of Education, Beijing 100084, China

Abstract

Indoor temperature and relative humidity control in office buildings is crucial, which can affect thermal comfort, work efficiency, and even health of the occupants. In China, fan coil units (FCUs) are widely used as air-conditioning equipment in office buildings. Currently, conventional FCU control methods often ignore the impact of indoor relative humidity on building occupants by focusing only on indoor temperature as a single control object. This study used FCUs with a fresh-air system in an office building in Beijing as the research object and proposed a deep reinforcement learning (RL) control algorithm to adjust the air supply volume for the FCUs. To improve the joint control satisfaction rate of indoor temperature and relative humidity, the proposed RL algorithm adopted the deep Q-network algorithm. To train the RL algorithm, a detailed simulation environment model was established in the Transient System Simulation Tool (TRNSYS), including a building model and FCUs with a fresh-air system model. The simulation environment model can interact with the RL agent in real time through a self-developed TRNSYS–Python co-simulation platform. The RL algorithm was trained, tested, and evaluated based on the simulation environment model. The results indicate that compared with the traditional on/off and rule-based controllers, the RL algorithm proposed in this study can increase the joint control satisfaction rate of indoor temperature and relative humidity by 12.66% and 9.5%, respectively. This study provides preliminary direction for a deep reinforcement learning control strategy for indoor temperature and relative humidity in office building heating, ventilation, and air-conditioning (HVAC) systems.

Funder

National Natural Science Foundation of China

Pyramid Talent Training Project of Beijing University of Civil Engineering and Architecture

BUCEA Post Graduate Innovation Project

Hitachi (China), Ltd.

Publisher

MDPI AG

Subject

Building and Construction,Civil and Structural Engineering,Architecture

Reference32 articles.

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