Blockchain-Enhanced Machine Learning for Dynamic Routing and Secure Communications in Autonomous Vehicle Networks

Usama Arshad, Abdallah Tubaishat, Abrar Ullah, Zahid Halim, Sajid Anwar

Research output: Contribution to conferencePaperpeer-review

Abstract

The advent of autonomous vehicles (AVs) marks a significant milestone in urban transportation, promising to enhance safety, reduce congestion, and improve environmental sustainability. However, deploying AVs on a mass scale comes with critical challenges related to secure and efficient vehicular communication. This research proposes a novel framework that combines the security features of blockchain technology with the adaptive capabilities of machine learning (ML) to address these major challenges. Integrating a blockchain-based protocol ensures tamper-proof and transparent communication within AV networks, protecting against a wide array of cyber threats. Concurrently, ML algorithms are employed to optimize real-time routing decisions based on comprehensive traffic data and environmental conditions. Through simulation in realistic urban scenarios, our framework demonstrates a significant improvement in communication security and routing efficiency, indicating a promising avenue for achieving scalable and reliable AVnetworks. Operational cost assessments further reveal the economic viability of the proposed model, underscoring its potential to deliver long-term savings through enhanced eff iciency and reduced human intervention. Thus an efficient solution in terms of security, dynamic routing, and scalability with respect to traditional models.
Original languageEnglish
Number of pages7
Publication statusPublished - 25 May 2025
EventAAAI 2025 Summer Symposium Series - Dubai, United Arab Emirates
Duration: 20 May 202522 May 2025

Other

OtherAAAI 2025 Summer Symposium Series
Country/TerritoryUnited Arab Emirates
CityDubai
Period20/05/2522/05/25

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