Intrusion Detection in Internet of Vehicles Using Machine Learning
NeutralArtificial Intelligence
- The Internet of Vehicles (IoV) is undergoing significant advancements in transportation due to enhanced connectivity and intelligent systems. However, this increased connectivity also exposes vehicles to cyber threats such as Denial-of-Service (DoS) and message spoofing. A new project aims to develop a machine learning-based intrusion detection system to classify malicious traffic on the Controller Area Network (CAN) using the CiCIoV2024 benchmark dataset.
- This development is crucial as it addresses the pressing need for robust cybersecurity measures in IoV, which is essential for ensuring the safety and reliability of modern vehicles. By effectively classifying attack patterns, the system can help prevent potential cyber-attacks that could compromise vehicle functionality and passenger safety.
- The focus on machine learning for intrusion detection reflects a broader trend in cybersecurity, where advanced algorithms are increasingly employed to combat sophisticated threats. This aligns with ongoing research into corner cases in automated driving and the need for high-quality datasets to train models effectively, highlighting the importance of continuous innovation in safeguarding connected technologies.
— via World Pulse Now AI Editorial System
