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Deep reinforcement learning based resource allocation for electric vehicle charging stations with priority service

Author

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  • Colak, Aslinur
  • Fescioglu-Unver, Nilgun

Abstract

The demand for public fast charging stations is increasing with the number of electric vehicles on roads. The charging queues and waiting times get longer, especially during the winter season and on holidays. Priority based service at charging stations can provide shorter delay times to vehicles willing to pay more and lower charging prices for vehicles accepting to wait more. Existing studies use classical feedback control and simulation based control methods to maintain the ratio of high and low priority vehicles’ delay times at the station’s target level. Reinforcement learning has been used successfully for real time control in environments with uncertainties. This study proposes a deep Q-Learning based real time resource allocation model for priority service in fast charging stations (DRL-EXP). Results show that the deep learning approach enables DRL-EXP to provide a more stable and faster response than the existing models. DRL-EXP is also applicable to other priority based service systems that act under uncertainties and require real time control.

Suggested Citation

  • Colak, Aslinur & Fescioglu-Unver, Nilgun, 2024. "Deep reinforcement learning based resource allocation for electric vehicle charging stations with priority service," Energy, Elsevier, vol. 313(C).
  • Handle: RePEc:eee:energy:v:313:y:2024:i:c:s0360544224034157
    DOI: 10.1016/j.energy.2024.133637
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