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Home Science News Mathematics

AI-controlled stations can charge electric cars at a personal price

May 31, 2024
in Mathematics
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As more and more people drive electric cars, congestion and queues can occur when many people need to charge at the same time. A new study from Chalmers University of Technology in Sweden shows how AI-controlled charging stations, through smart algorithms, can offer electric vehicle users personalised prices, and thus minimise both price and waiting time for customers. But the researchers point to the importance of taking the ethical issues seriously, as there is a risk that the artificial intelligence exploits information from motorists.

As more and more people drive electric cars, congestion and queues can occur when many people need to charge at the same time. A new study from Chalmers University of Technology in Sweden shows how AI-controlled charging stations, through smart algorithms, can offer electric vehicle users personalised prices, and thus minimise both price and waiting time for customers. But the researchers point to the importance of taking the ethical issues seriously, as there is a risk that the artificial intelligence exploits information from motorists.

Today’s commercial charging infrastructure can be a jungle. The market is dynamic and complex with a variety of subscriptions and free competition between providers. At some fast charging stations, congestion and long queues may even occur. In a new study, researchers at Chalmers have created a mathematical model to investigate how fast charging stations controlled by artificial intelligence, AI, can help by offering electric car drivers personalised prices, which the drivers can choose to accept or refuse. The AI uses algorithms that can adjust prices based on individual factors, such as battery level and the car’s geographic location.

“The electric car drivers can choose to share information with the charging station providers and receive a personal price proposal from a smart charging station. In our study, we could show how rational and self-serving drivers react by only accepting offers that are beneficial to themselves. This leads to both price and waiting times being minimized”, says Balázs Kulcsár, professor at the department of electrical engineering at Chalmers.

In the study, the drivers always had the option to refuse the personal price, and choose a conventional charging station with a fixed price instead. The personal prices received by the drivers could differ significantly from each other, but were almost always lower than the market prices. For the providers of charging stations, the iterative AI algorithm can find out which individual prices are accepted by the buyer, and under which conditions. However, during the course of the study, the researchers noted that on some occasions the algorithm raised the price significantly when the electric car’s batteries were almost completely empty, and the driver consequently had no choice but to accept the offer.

“Smart charging stations can solve complex pricing in a competitive market, but our study shows that they need to be developed and introduced with privacy protection for consumers, well in line with responsible-ethical AI paradigms”, says Balázs Kulcsár.

 

More about the study

The researchers created a mathematical model of the interaction between profit-maximising fast charging stations and electric car users. The “charging stations” could offer public market prices or AI-driven profit-maximising personal prices, which the “electric car users” could then accept or reject based on their own conditions and needs. In most cases, the results were promising, as the AI-generated prices were lower than the market prices.

The research is presented in the paper: Personalized dynamic pricing policy for electric vehicles: Reinforcement learning approach published in the journal Transportation Research, Part C: Emerging Technologies

 

 

The researchers involved in the study are Balázs Kulcsár, Sangjun Bae and Sebastian Gros, and they are active at Chalmers University of Technology, Sweden; Seyong Cyber University, China, and Norwegian University of Science and Technology.

The research has been financed by the Swedish Electromobility Center and partially by the EU project E-Laas.

 

For more information, please contact

Balázs Kulcsár, Professor, Department of Electrical Engineering, Chalmers University of Technology, +46 31-772 17 85, kulcsar@chalmers.se

 

The contact person speaks English and is available for live and pre-recorded interviews. At Chalmers, we have podcast studios and broadcast filming equipment on site and would be able to assist a request for a television, radio or podcast interview.



Journal

Transportation Research Part C Emerging Technologies

DOI

10.1016/j.trc.2024.104540

Method of Research

Computational simulation/modeling

Subject of Research

Not applicable

Article Title

Personalized dynamic pricing policy for electric vehicles: Reinforcement learning approach

Article Publication Date

4-Mar-2024

COI Statement

none

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