LAPSE:2023.14085v1
Published Article
LAPSE:2023.14085v1
Optimal Management for EV Charging Stations: A Win−Win Strategy for Different Stakeholders Using Constrained Deep Q-Learning
Athanasios Paraskevas, Dimitrios Aletras, Antonios Chrysopoulos, Antonios Marinopoulos, Dimitrios I. Doukas
March 1, 2023
Abstract
Given the additional awareness of the increasing energy demand and gas emissions’ effects, the decarbonization of the transportation sector is of great significance. In particular, the adoption of electric vehicles (EVs) seems a promising option, under the condition that public charging infrastructure is available. However, devising a pricing and scheduling strategy for public EV charging stations is a non-trivial albeit important task. The reason is that a sub-optimal decision could lead to high waiting times or extreme changes to the power load profile. In addition, in the context of the problem of optimal pricing and scheduling for EV charging stations, the interests of different stakeholders ought to be taken into account (such as those of the station owner and the EV owners). This work proposes a deep reinforcement learning-based (DRL) agent that can optimize pricing and charging control in a public EV charging station under a real-time varying electricity price. The primary goal is to maximize the station’s profits while simultaneously ensuring that the customers’ charging demands are also satisfied. Moreover, the DRL approach is data-driven; it can operate under uncertainties without requiring explicit models of the environment. Variants of scheduling and DRL training algorithms from the literature are also proposed to ensure that both the conflicting objectives are achieved. Experimental results validate the effectiveness of the proposed approach.
Keywords
deep Q-learning, demand response, dynamic pricing, EV charging station, pricing and scheduling, reinforcement learning
Suggested Citation
Paraskevas A, Aletras D, Chrysopoulos A, Marinopoulos A, Doukas DI. Optimal Management for EV Charging Stations: A Win−Win Strategy for Different Stakeholders Using Constrained Deep Q-Learning. (2023). LAPSE:2023.14085v1
Author Affiliations
Paraskevas A: NET2GRID BV, Krystalli 4, 54630 Thessaloniki, Greece
Aletras D: NET2GRID BV, Krystalli 4, 54630 Thessaloniki, Greece
Chrysopoulos A: NET2GRID BV, Krystalli 4, 54630 Thessaloniki, Greece; School of Electrical and Computer Engineering, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece
Marinopoulos A: European Climate, Infrastructure and Environment Executive Agency (CINEA), European Commission, B-1049 Brussels, Belgium [ORCID]
Doukas DI: NET2GRID BV, Krystalli 4, 54630 Thessaloniki, Greece [ORCID]
Journal Name
Energies
Volume
15
Issue
7
First Page
2323
Year
2022
Publication Date
2022-03-23
ISSN
1996-1073
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Original Submission
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PII: en15072323, Publication Type: Journal Article
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LAPSE:2023.14085v1
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https://doi.org/10.3390/en15072323
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