Data-driven, Internet-inspired, and Scalable EV Charging for Power Distribution Grid
Emin Ucer, Mithat Kisacikoglu, Murat Yuksel, Ali C. Gurbuz

TL;DR
This paper introduces a scalable, data-driven EV charging control method using a distributed AIMD algorithm that balances grid congestion management with minimal communication, improving upon existing local measurement approaches.
Contribution
It develops a novel distributed, data-driven congestion detection method embedded in AIMD for scalable EV charging control in power grids.
Findings
The proposed AIMD algorithm closely matches ideal performance in fairness and congestion handling.
Communication requirements are nearly as low as simple local measurement methods.
The approach offers insights into grid dynamics and supports advanced data-driven control algorithms.
Abstract
Electric vehicles (EVs) are finally making their way onto the roads. However, the challenges concerning their long charging times and their impact on congestion of the power distribution grid are still waiting to be resolved. With historical measurement data, EV chargers can take better-informed actions while staying mostly off-line. Proposed solutions that depend on heavy communication and rigorous computation for optimal operation are not scalable. The solutions that do not depend on power distribution topology information, such as Droop control, are more practical as they only use local measurements. However, they result in sub-optimal operation due to a lack of a feedback mechanism. This study develops a distributed and data-driven congestion detection methodology embedded in the Additive Increase Multiplicative Decrease (AIMD) algorithm to control mass EV charging in a distribution…
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Taxonomy
TopicsElectric Vehicles and Infrastructure · Advanced Battery Technologies Research · Smart Grid Energy Management
