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Journal article ยท Ahead of Print article

A Reinforcement Learning-Based Decision System For Electricity Pricing Plan Selection by Smart Grid End Users

From

Harvard University1

Huazhong University of Science and Technology2

Electric Power Systems, Center for Electric Power and Energy, Centers, Technical University of Denmark3

Center for Electric Power and Energy, Centers, Technical University of Denmark4

Department of Electrical Engineering, Technical University of Denmark5

Shanghai Jiao Tong University6

With the development of deregulated retail power markets, it is possible for end users equipped with smart meters and controllers to optimize their consumption cost portfolios by choosing various pricing plans from different retail electricity companies. This paper proposes a reinforcement learning-based decision system for assisting the selection of electricity pricing plans, which can minimize the electricity payment and consumption dissatisfaction for individual smart grid end user.

The decision problem is modeled as a transition probability-free Markov decision process (MDP) with improved state framework. The proposed problem is solved using a Kernel approximator-integrated batch Q-learning algorithm, where some modifications of sampling and data representation are made to improve the computational and prediction performance.

The proposed algorithm can extract the hidden features behind the time-varying pricing plans from a continuous high-dimensional state space. Case studies are based on data from real-world historical pricing plans and the optimal decision policy is learned without a priori information about the market environment.

Results of several experiments demonstrate that the proposed decision model can construct a precise predictive policy for individual user, effectively reducing their cost and energy consumption dissatisfaction.

Language: English
Publisher: IEEE
Year: 2021
Pages: 2176-2187
ISSN: 19493061 and 19493053
Types: Journal article and Ahead of Print article
DOI: 10.1109/TSG.2020.3027728
ORCIDs: Wu, Qiuwei

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