Authors: Velimirović, Jelena 
Velimirović, Lazar 
Vranić, Petar 
Affiliations: Computer Science 
Mathematical Institute of the Serbian Academy of Sciences and Arts 
Title: Adaptive Multi-Criteria Optimization of EV Charging Decisions using XGboost and TOPSIS
First page: 337
Last page: 342
Related Publication(s): Proceedings of the 52nd Symposium on Operational Research – SYM-OP-IS
Conference: 52nd Symposium on Operational Research – SYM-OP-IS 2025, Palić, Serbia, 7–10 September 2025
Issue Date: 2025
Rank: M33
ISBN: 978-86-7680-494-8
DOI: 10.5281/zenodo.17532080
Abstract: 
The paper presents user-specific multi-criteria analysis integrating predictive machine learning to develop a decision-making framework for electric vehicle charging optimization. The framework utilizes an XGBoost model trained on both synthetic and real-world data to predict optimal charger selections across various station-time combinations, with the goal of minimizing charging duration. Three user profiles — time-sensitive, price-sensitive, and speed-sensitive — are incorporated into a TOPSIS-based optimization, which utilizes predictions and includes charging price and speed. The results show that varying user types have significantly different preference for choices: each time-sensitive user chooses fast chargers day / time, each price-sensitive user chooses standard but less expensive chargers, and speed-sensitive users select chargers that provide the highest power charging rate independent of wait time and price. The limitations of static optimization are demonstrated, as well as value of a custom and adaptable approach. The model achieves high prediction accuracy and provides intelligent, user-centric recommendations regarding electric vehicle charging options.
Keywords: XGBoost | TOPSIS | Multi-criteria decision making | EV charging
Publisher: University of Belgrade - Faculty of Organizational Sciences

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