Authors: Velimirović, Jelena 
Velimirović, Lazar 
Petkovski, Ivana 
Affiliations: Computer Science 
Mathematical Institute of the Serbian Academy of Sciences and Arts 
Title: XGBoost Session-Level Energy Demand Prediction for EV Charging Stations Using Behavioral and Contextual Data
First page: 572
Last page: 575
Related Publication(s): Proceedings of the 33rd Telecommunications Forum (TELFOR)
Conference: 33rd Telecommunications Forum (TELFOR), Belgrade, Serbia, 25-26 November 2025
Issue Date: 2025
Rank: M33
ISBN: 979-8-3315-9356-8
DOI: 10.1109/TELFOR67910.2025.11314443
Abstract: 
This paper proposes a data-driven approach to predict session-level EV energy demand using contextual station data and user behavior from historical logs. A large realistic dataset and a time-aware, user-level anti-leakage split ensured robust evaluation. The XGBoost model outperformed other regressors, offering accurate forecasts without vehicle telemetry. This scalable method enables operators to predict energy demand reliably, supporting smarter EV charging network management and allowing future integration of detailed user or technical data.
Keywords: EV charging station | XGBoost | Energy Demand Prediction
Publisher: IEEE

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