Federated learning-based electric vehicle energy consumption prediction and charging station recommendation

dc.contributor
Universitat Politècnica de Catalunya. Doctorat en Enginyeria Telemàtica
dc.contributor
Universitat Politècnica de Catalunya. Departament d'Enginyeria Telemàtica
dc.contributor
Universitat Politècnica de Catalunya. SISCOM - Smart Services for Information Systems and Communication Networks
dc.contributor.author
Al-zuhairi, Yaqoob
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Ali, Aya Maher
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Bazán Guillén, Alberto
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Aguilar Igartua, Mónica
dc.date.accessioned
2026-02-13T05:11:41Z
dc.date.available
2026-02-13T05:11:41Z
dc.date.issued
2025
dc.identifier
Al-zuhairi, Y. [et al.]. Federated learning-based electric vehicle energy consumption prediction and charging station recommendation. A: International ACM Conference on Modeling, Analysis and Simulation of Wireless and Mobile Systems. «The 27th International IEEE Conference on Modeling, Analysis and Simulation of Wireless and Mobile Systems (MSWiM 2025), Barcelona, Spain, October 27-31, 2025: proceedings book». Institute of Electrical and Electronics Engineers (IEEE), 2025, p. 721-722. ISBN 979-8-3315-6873-3. DOI 10.1109/MSWiM67937.2025.11309129 .
dc.identifier
979-8-3315-6873-3
dc.identifier
https://hdl.handle.net/2117/455027
dc.identifier
10.1109/MSWiM67937.2025.11309129
dc.identifier.uri
http://hdl.handle.net/2117/455027
dc.description.abstract
Electric vehicles (EVs) offer significant potential for reducing emissions, yet their expansion is constrained by long charging times, limited charging infrastructure, and inefficient charging station (CS) utilization. This study proposes an intelligent platform that explicitly supports drivers in multiple aspects: predicting EV energy consumption (EVEC), estimating the remaining energy at the destination, and determining the remaining driving range, thereby assisting drivers in deciding whether to continue their trip or stop for recharging. The system also recommends the most appropriate CS by considering driver preferences. Using SUMO simulations with OpenStreetMap data to prepare realistic traffic scenarios, the platform combines ensemble machine learning (ML) models with federated learning (FL) to optimize EV charging decisions. Through the integration of Bi-LSTM + XGBoost for EVEC prediction and FFNN + XGBoost for the optimal CS selection, the proposed framework significantly outperforms conventional methods by minimizing total travel time and resulting in mean absolute error (MAE) values ranging from 2.3 to 4.5 minutes under varying traffic conditions.
dc.description.abstract
This work was partially supported by the Spanish Government under research projects: (i) DISCOVERY PID2023-148716OB-C32, funded by MCIN/AEI/10.13039/501100011033; (ii) the Generalitat de Catalunya under AGAUR grant ”2021 SGR 01413”; (iii) MultiMO project TSI-100123-2024-60; and (iv) Predoctoral Scholarship under Grant PRE2021-099.
dc.description.abstract
Peer Reviewed
dc.description.abstract
Postprint (published version)
dc.format
2 p.
dc.format
application/pdf
dc.language
eng
dc.publisher
Institute of Electrical and Electronics Engineers (IEEE)
dc.relation
https://ieeexplore.ieee.org/document/11309129
dc.relation
info:eu-repo/grantAgreement/AEI/Plan Estatal de Investigación Científica y Técnica y de Innovación 2021-2023/PID2023-148716OB-C32/ES/DISCOVERY: PROTOCOLOS EN REDES DE COMUNICACIONES Y PRIVACIDAD DE DATOS/
dc.relation
info:eu-repo/grantAgreement/PLAN DE RECUPERACIÓN, TRANSFORMACIÓN Y RESILIENCIA/TSI-100123-2024-060
dc.rights
Restricted access - publisher's policy
dc.subject
Àrees temàtiques de la UPC::Enginyeria de la telecomunicació::Telemàtica i xarxes d'ordinadors
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Electric vehicles charging management
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Federated learning
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Deep learning
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XGBoost regressor
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Realistic urban scenarios
dc.title
Federated learning-based electric vehicle energy consumption prediction and charging station recommendation
dc.type
Conference lecture


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