Enhancing the Performance of Multi-Agent Reinforcement Learning for Controlling HVAC Systems

被引:6
|
作者
Bayer, Daniel [1 ]
Pruckner, Marco [1 ]
机构
[1] Friedrich Alexander Univ Erlangen Nurnberg, Energy Informat, Comp Sci 7, Erlangen, Germany
关键词
Multi-Agent Reinforcement Learning; Independent Q-Learning; Shared Parameters; HVAC Systems; Building Controls; Energy Efficiency; Energy Saving Controls;
D O I
10.1109/SusTech53338.2022.9794179
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Systems for heating, ventilation and air-conditioning (HVAC) of buildings are traditionally controlled by a rule-based approach. In order to reduce the energy consumption and the environmental impact of HVAC systems more advanced control methods such as reinforcement learning are promising. Reinforcement learning (RL) strategies offer a good alternative, as user feedback can be integrated more easily and presence can also be incorporated. Moreover, multi-agent RL approaches scale well and can be generalized. In this paper, we propose a multi-agent RL framework based on existing work that learns reducing on one hand energy consumption by optimizing HVAC control and on the other hand user feedback by occupants about uncomfortable room temperatures. Second, we show how to reduce training time required for proper RL-agent-training by using parameter sharing between the multiple agents and apply different pretraining techniques. Results show that our framework is capable of reducing the energy by around 6% when controlling a complete building or 8% for a single room zone. The occupants complaints are acceptable or even better compared to a rule-based baseline. Additionally, our performance analysis show that the training time can be drastically reduced by using parameter sharing.
引用
收藏
页码:187 / 194
页数:8
相关论文
共 50 条
  • [1] Multi-Agent Reinforcement Learning Based Actuator Control for EV HVAC Systems
    Joo, Sungho
    Lee, Dongmin
    Kim, Minseop
    Lee, Taeho
    Choi, Sanghyeok
    Kim, Seungju
    Lee, Jeyeol
    Kim, Joongjae
    Lim, Yongsub
    Lee, Jeonghoon
    IEEE ACCESS, 2023, 11 : 7574 - 7587
  • [2] A Multi-Agent Reinforcement Learning Approach to Price and Comfort Optimization in HVAC-Systems
    Blad, Christian
    Bogh, Simon
    Kallesoe, Carsten
    ENERGIES, 2021, 14 (22)
  • [3] Multi-Agent Deep Reinforcement Learning for HVAC Control in Commercial Buildings
    Yu, Liang
    Sun, Yi
    Xu, Zhanbo
    Shen, Chao
    Yue, Dong
    Jiang, Tao
    Guan, Xiaohong
    IEEE TRANSACTIONS ON SMART GRID, 2021, 12 (01) : 407 - 419
  • [4] Efficient multi-agent reinforcement learning HVAC power consumption optimization
    Miao, Chenyang
    Cui, Yunduan
    Li, Huiyun
    Wu, Xinyu
    Energy Reports, 2024, 12 : 5420 - 5431
  • [5] Enhancing collaboration in multi-agent reinforcement learning with correlated trajectories
    Wang, Siying
    Du, Hongfei
    Zhou, Yang
    Zhao, Zhitong
    Zhang, Ruoning
    Chen, Wenyu
    Knowledge-Based Systems, 2024, 305
  • [6] Optimal control method of HVAC based on multi-agent deep reinforcement learning
    Fu, Qiming
    Chen, Xiyao
    Ma, Shuai
    Fang, Nengwei
    Xing, Bin
    Chen, Jianping
    ENERGY AND BUILDINGS, 2022, 270
  • [7] ADAPTIVE MULTI-AGENT CONTROL OF HVAC SYSTEMS FOR RESIDENTIAL DEMAND RESPONSE USING BATCH REINFORCEMENT LEARNING
    Vazquez-Canteli, Jose
    Ulyanin, Stepan
    Kampf, Jerome
    Nagy, Zoltan
    2018 BUILDING PERFORMANCE ANALYSIS CONFERENCE AND SIMBUILD, 2018, : 683 - 690
  • [8] Cooperative Learning of Multi-Agent Systems Via Reinforcement Learning
    Wang, Xin
    Zhao, Chen
    Huang, Tingwen
    Chakrabarti, Prasun
    Kurths, Juergen
    IEEE TRANSACTIONS ON SIGNAL AND INFORMATION PROCESSING OVER NETWORKS, 2023, 9 : 13 - 23
  • [9] Multi-Agent Reinforcement Learning
    Stankovic, Milos
    2016 13TH SYMPOSIUM ON NEURAL NETWORKS AND APPLICATIONS (NEUREL), 2016, : 43 - 43
  • [10] Distributed reinforcement learning in multi-agent decision systems
    Giráldez, JI
    Borrajo, D
    PROGRESS IN ARTIFICIAL INTELLIGENCE-IBERAMIA 98, 1998, 1484 : 148 - 159