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 language | English |
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Number of pages | 7 |
Publication status | Published - 25 May 2025 |
Event | AAAI 2025 Summer Symposium Series - Dubai, United Arab Emirates Duration: 20 May 2025 → 22 May 2025 |
Other
Other | AAAI 2025 Summer Symposium Series |
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Country/Territory | United Arab Emirates |
City | Dubai |
Period | 20/05/25 → 22/05/25 |