CRAIDec 31, 2024

Collaborative Approaches to Enhancing Smart Vehicle Cybersecurity by AI-Driven Threat Detection

arXiv:2501.00261v12 citationsh-index: 3ThyssenKrupp techforum
Originality Synthesis-oriented
AI Analysis

This is an incremental review of existing technologies for enhancing cybersecurity in smart vehicles, targeting the automotive industry and cybersecurity professionals.

The paper addresses the need for robust cybersecurity in connected and automated vehicles (CAVs) by exploring collaborative approaches and AI-driven threat detection, but it does not report specific results or concrete numbers.

The introduction sets the stage for exploring collaborative approaches to bolstering smart vehicle cybersecurity through AI-driven threat detection. As the automotive industry increasingly adopts connected and automated vehicles (CAVs), the need for robust cybersecurity measures becomes paramount. With the emergence of new vulnerabilities and security requirements, the integration of advanced technologies such as 5G networks, blockchain, and quantum computing presents promising avenues for enhancing CAV cybersecurity . Additionally, the roadmap for cybersecurity in autonomous vehicles emphasizes the importance of efficient intrusion detection systems and AI-based techniques, along with the integration of secure hardware, software stacks, and advanced threat intelligence to address cybersecurity challenges in future autonomous vehicles.

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