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Reinforcement Learning of Heuristic EV Fleet Charging in a Day-Ahead Electricity Market | IEEE Journals & Magazine | IEEE Xplore

Reinforcement Learning of Heuristic EV Fleet Charging in a Day-Ahead Electricity Market


Abstract:

This paper addresses the problem of defining a day-ahead consumption plan for charging a fleet of electric vehicles (EVs), and following this plan during operation. A cha...Show More

Abstract:

This paper addresses the problem of defining a day-ahead consumption plan for charging a fleet of electric vehicles (EVs), and following this plan during operation. A challenge herein is the beforehand unknown charging flexibility of EVs, which depends on numerous details about each EV (e.g., plug-in times, power limitations, battery size, power curve, etc.). To cope with this challenge, EV charging is controlled during opertion by a heuristic scheme, and the resulting charging behavior of the EV fleet is learned by using batch mode reinforcement learning. Based on this learned behavior, a cost-effective day-ahead consumption plan can be defined. In simulation experiments, our approach is benchmarked against a multistage stochastic programming solution, which uses an exact model of each EVs charging flexibility. Results show that our approach is able to find a day-ahead consumption plan with comparable quality to the benchmark solution, without requiring an exact day-ahead model of each EVs charging flexibility.
Published in: IEEE Transactions on Smart Grid ( Volume: 6, Issue: 4, July 2015)
Page(s): 1795 - 1805
Date of Publication: 09 March 2015

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