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Reinforcement learning method for plug-in electric vehicle bidding

Title
Reinforcement learning method for plug-in electric vehicle bidding
Type
Article in International Scientific Journal
Year
2019
Authors
Najafi, S
(Author)
Other
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Shafie Khah, M
(Author)
Other
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Siano, P
(Author)
Other
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Wei, W
(Author)
Other
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Journal
Title: IET Smart GridImported from Authenticus Search for Journal Publications
Vol. 2
Pages: 529-536
Publisher: Wiley-Blackwell
Indexing
Other information
Authenticus ID: P-00S-8WR
Abstract (EN): This study proposes a novel multi-agent method for electric vehicle (EV) owners who will take part in the electricity market. Each EV is considered as an agent, and all the EVs have vehicle-to-grid capability. These agents aim to minimise the charging cost and to increase the privacy of EV owners due to omitting the aggregator role in the system. Each agent has two independent decision cores for buying and selling energy. These cores are developed based on a reinforcement learning (RL) algorithm, i.e. Q-learning algorithm, due to its high efficiency and appropriate performance in multi-agent methods. Based on the proposed method, agents can buy and sell energy with the cost minimisation goal, while they should always have enough energy for the trip, considering the uncertain behaviours of EV owners. Numeric simulations on an illustrative example with one agent and a testing system with 500 agents demonstrate the effectiveness of the proposed method.
Language: English
Type (Professor's evaluation): Scientific
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