Cooperative price-based demand response program for multiple aggregators based on multi-agent reinforcement learning and Shapley-value

被引:1
|
作者
Fraija, Alejandro [1 ]
Henao, Nilson [1 ]
Agbossou, Kodjo [1 ]
Kelouwani, Sousso [2 ]
Fournier, Michael [3 ]
机构
[1] Univ Quebec Trois Rivieres, Hydrogen Res Inst, Dept Elect & Comp Engn, Trois Rivieres, PQ G8Z 4M3, Canada
[2] Univ Quebec Trois Rivieres, Hydrogen Res Inst, Dept Mech Engn, Trois Rivieres, PQ G8Z 4M3, Canada
[3] Ctr Rech Hydro Quebec CRHQ, Lab Technol Energie LTE, Shawinigan, PQ G9N 7N5, Canada
来源
SUSTAINABLE ENERGY GRIDS & NETWORKS | 2024年 / 40卷
关键词
Demand response; Demand response aggregator; Dynamic pricing; Multi-agent reinforcement learning; Shapley-value; ENERGY MANAGEMENT; OPTIMIZATION;
D O I
10.1016/j.segan.2024.101560
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Demand response (DR) plays an essential role in power system management. To facilitate the implementation of these techniques, many aggregators have appeared in response as new mediating entities in the electricity market. These actors exploit the technologies to engage customers in DR programs, offering grid services like load scheduling. However, the growing number of aggregators has become anew challenge, making it difficult for utilities to manage the load scheduling problem. This paper presents a multi-agent reinforcement Learning (MARL) approach to a price-based DR program for multiple aggregators. A dynamic pricing scheme based on discounts is proposed to encourage residential customers to change their consumption patterns. This strategy is based on a cooperative framework fora set of DR Aggregators (DRAs). The DRAs take advantage of a reward offered by a Distribution System Operator (DSO) for performing a peak-shaving over the total system aggregated demand. Furthermore, a Shapley-Value-based reward sharing mechanism is implemented to fairly determine the individual contribution and calculate the individual reward for each DRA. Simulation results verify the merits of the proposed model fora multi-aggregator system, improving DRAs' pricing strategies considering the overall objectives of the system. Consumption peaks were managed by reducing the Peak- to-Average Ratio (PAR) by 15%, and the MARL mechanism's performance was improved in terms of reward function maximization and convergence time, the latter being reduced by 29%.
引用
收藏
页数:14
相关论文
共 50 条
  • [21] A Cooperative Multi-Agent Reinforcement Learning Method Based on Coordination Degree
    Cui, Haoyan
    Zhang, Zhen
    IEEE ACCESS, 2021, 9 : 123805 - 123814
  • [22] Price-Based Residential Demand Response Management in Smart Grids:A Reinforcement Learning-Based Approach
    Yanni Wan
    Jiahu Qin
    Xinghuo Yu
    Tao Yang
    Yu Kang
    IEEE/CAAJournalofAutomaticaSinica, 2022, 9 (01) : 123 - 134
  • [23] Demand and Capacity Balancing Technology Based on Multi-agent Reinforcement Learning
    Chen, Yutong
    Xu, Yan
    Hu, Minghua
    Yang, Lei
    2021 IEEE/AIAA 40TH DIGITAL AVIONICS SYSTEMS CONFERENCE (DASC), 2021,
  • [24] Bilateral Contracting and Price-Based Demand Response in Multi-Agent Electricity Markets: A Study on Time-of-Use Tariffs
    Algarvio, Hugo
    Lopes, Fernando
    ENERGIES, 2023, 16 (02)
  • [25] Uniform price-based framework for enhancing power quality and reliability of microgrids using Shapley-value incentive allocation method
    Nazari, Mohammad Hassan
    Sanjareh, Mehrdad Bagheri
    Moradi, Mohammad Bagher
    Hosseinian, Seyed Hossein
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2021, 40 (03) : 4935 - 4955
  • [26] Transmission Network Planning under a price-based demand response program
    Kazerooni, A. K.
    Mutale, J.
    2010 IEEE PES TRANSMISSION AND DISTRIBUTION CONFERENCE AND EXPOSITION: SMART SOLUTIONS FOR A CHANGING WORLD, 2010,
  • [27] Correcting biased value estimation in mixing value-based multi-agent reinforcement learning by multiple choice learning
    Liu, Bing
    Xie, Yuxuan
    Feng, Lei
    Fu, Ping
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2022, 116
  • [28] A Multitask-Based Transfer Framework for Cooperative Multi-Agent Reinforcement Learning
    Hu, Cheng
    Wang, Chenxu
    Luo, Weijun
    Yang, Chaowen
    Xiang, Liuyu
    He, Zhaofeng
    APPLIED SCIENCES-BASEL, 2025, 15 (04):
  • [29] Cooperative Reinforcement Learning Algorithm to Distributed Power System Based on Multi-Agent
    Gao, La-mei
    Zeng, Jun
    Wu, Jie
    Li, Min
    2009 3RD INTERNATIONAL CONFERENCE ON POWER ELECTRONICS SYSTEMS AND APPLICATIONS: ELECTRIC VEHICLE AND GREEN ENERGY, 2009, : 53 - 53
  • [30] OptimizingMARL: Developing Cooperative Game Environments Based on Multi-agent Reinforcement Learning
    Ferreira, Thais
    Clua, Esteban
    Kohwalter, Troy Costa
    Santos, Rodrigo
    ENTERTAINMENT COMPUTING, ICEC 2022, 2022, 13477 : 89 - 102