Optimisation de Routage dans les Réseaux VANETparApprentissage Supervisé
Date
2025
Authors
Journal Title
Journal ISSN
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Publisher
university of bordj bou arreridj
Abstract
This thesis focuses on optimizing routing in Vehicular Ad Hoc Networks (VA
NET), a key component of Intelligent Transportation Systems (ITS). These dynamic
networks enable vehicles to exchange real-time data (V2V and V2I), thereby enhan
cing road safety and improving traffic management. However, their dynamic nature,
unstable topology, and high node mobility complicate data routing, adversely affecting
the quality of service (QoS). To address these challenges, we propose the integration
of Artificial Intelligence (AI), specifically supervised machine learning, into the HRLB
SVDN protocol. The chosen model, CatBoostClassifier, can effectively analyze hetero
geneous data with high precision. Trained on realistic simulated datasets, it predicts
optimal communication paths based on parameters such as vehicle density, inter-node
distance, and link stability. The experimental results are highly promising : an accu
racy of 98.75%, a ROC-AUC score of 99.79%, an average precision of 99.71%, and a
logarithmic loss of just 0.038. These metrics demonstrate a strong ability to identify
reliable routing paths in dynamic network environments. Simulations also revealed a
significant improvement in protocol performance, with a 10.75% increase in average
delivery rate, a 7.86% increase in throughput, and a 10.08% reduction in average la
tency. In conclusion, this work highlights the effectiveness of AI-based approaches in
designing intelligent, robust, and adaptive routing protocols tailored to the demanding
requirements of modern VANET environments.
Description
Keywords
VANET, Routing, QoS, Artificial Intelligence, Supervised Learning, CatBoostClassifier, ITS