Price-Based Residential Demand Response Management in Smart Grids:A Reinforcement Learning-Based Approach

被引:6
作者
Yanni Wan [1 ,2 ]
Jiahu Qin [1 ,2 ,3 ]
Xinghuo Yu [1 ,4 ]
Tao Yang [1 ,5 ]
Yu Kang [1 ,6 ,7 ]
机构
[1] IEEE
[2] the Department of Automation, University of Science and Technology of China
[3] the Institute of Artificial Intelligence, Hefei Comprehensive National Science Center
[4] the School of Engineering, RMIT University
[5] the State Key Laboratory of Synthetical Automation for Process Industries, Northeastern University
[6] the Department of Automation, State Key Laboratory of Fire Science, Institute of Advanced Technology, University of Science and Technology of China
[7] the Key Laboratory of Technology in Geo-Spatial Information Processing and Application Systems, Chinese Academy of Sciences
关键词
D O I
暂无
中图分类号
TM76 [电力系统的自动化]; TP18 [人工智能理论];
学科分类号
080802 ; 081104 ; 0812 ; 0835 ; 1405 ;
摘要
This paper studies price-based residential demand response management(PB-RDRM) in smart grids, in which nondispatchable and dispatchable loads(including general loads and plug-in electric vehicles(PEVs)) are both involved. The PBRDRM is composed of a bi-level optimization problem, in which the upper-level dynamic retail pricing problem aims to maximize the profit of a utility company(UC) by selecting optimal retail prices(RPs), while the lower-level demand response(DR)problem expects to minimize the comprehensive cost of loads by coordinating their energy consumption behavior. The challenges here are mainly two-fold: 1) the uncertainty of energy consumption and RPs; 2) the flexible PEVs' temporally coupled constraints, which make it impossible to directly develop a modelbased optimization algorithm to solve the PB-RDRM. To address these challenges, we first model the dynamic retail pricing problem as a Markovian decision process(MDP), and then employ a model-free reinforcement learning(RL) algorithm to learn the optimal dynamic RPs of UC according to the loads' responses. Our proposed RL-based DR algorithm is benchmarked against two model-based optimization approaches(i.e., distributed dual decomposition-based(DDB) method and distributed primal-dual interior(PDI)-based method), which require exact load and electricity price models. The comparison results show that, compared with the benchmark solutions, our proposed algorithm can not only adaptively decide the RPs through on-line learning processes, but also achieve larger social welfare within an unknown electricity market environment.
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收藏
页码:123 / 134
页数:12
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