Welcome to the new version of CaltechAUTHORS. Login is currently restricted to library staff. If you notice any issues, please email coda@library.caltech.edu
Published May 2022 | Accepted Version
Journal Article Open

Smoothed Least-Laxity-First Algorithm for Electric Vehicle Charging: Online Decision and Performance Analysis with Resource Augmentation

Abstract

Adaptive charging can charge electric vehicles (EVs) at scale cost effectively, despite of the uncertainty in EV arrivals. We formulate adaptive EV charging as a feasibility problem that meets all EVs' energy demands before their deadlines while satisfying constraints in charging rate and total charging power. We propose an online algorithm, smoothed least-laxity-first (sLLF), that decides the current charging rates without the knowledge of future arrivals and demands. We characterize the performance of the sLLF algorithm analytically and numerically. Numerical experiments with real-world data show that it has a significantly higher rate of feasible EV charging than several other existing EV charging algorithms. Resource augmentation framework is employed to assess the feasibility condition of the algorithm. The assessment shows that the sLLF algorithm achieves perfect feasibility with only a 7% increase in the maximal power supply of the charging station.

Additional Information

© 2021 IEEE. Manuscript received February 23, 2021; revised June 19, 2021 and December 17, 2021; accepted December 20, 2021. Date of publication December 27, 2021; date of current version April 22, 2022. Paper no. TSG-00305-2021. The materials presented here is based upon work supported by the Electrical, Communication and Cyber Systems (ECCS) Divison of the National Science Foundation (NSF) Cyber Physical Systems (CPS) award number 1932611.

Attached Files

Accepted Version - Smoothed_Least-Laxity-First_Algorithm_for_Electric_Vehicle_Charging_Online_Decision_and_Performance_Analysis_with_Resource_Augmentation.pdf

Files

Smoothed_Least-Laxity-First_Algorithm_for_Electric_Vehicle_Charging_Online_Decision_and_Performance_Analysis_with_Resource_Augmentation.pdf

Additional details

Created:
August 22, 2023
Modified:
October 23, 2023