M Shanthalakshmi, R S Ponmagal
Department of Computing Technologies, SRM Institute of Science and Technology, Kattankulathur, Chennai, 603203, Tamil Nadu, India.
Sci Rep. 2024 Sep 5;14(1):20795. doi: 10.1038/s41598-024-70835-3.
Smart cities have developed advanced technology that improves people's lives. A collaboration of smart cities with autonomous vehicles shows the development towards a more advanced future. Cyber-physical system (CPS) are used blend the cyber and physical world, combined with electronic and mechanical systems, Autonomous vehicles (AVs) provide an ideal model of CPS. The integration of 6G technology with Autonomous Vehicles (AVs) marks a significant advancement in Intelligent Transportation Systems (ITS), offering enhanced self-sufficiency, intelligence, and effectiveness. Autonomous vehicles rely on a complex network of sensors, cameras, and software to operate. A cyber-attack could interfere with these systems, leading to accidents, injuries, or fatalities. Autonomous vehicles are often connected to broader transportation networks and infrastructure. A successful cyber-attack could disrupt not only individual vehicles but also public transportation systems, causing widespread chaos and economic damage. Autonomous vehicles communicate with other vehicles (V2V) and infrastructure (V2I) for safe and efficient operation. If these communication channels are compromised, it could lead to collisions, traffic jams, or other dangerous situations. So we present a novel approach to mitigating these security risks by leveraging pre-trained Convolutional Neural Network (CNN) models for dynamic cyber-attack detection within the cyber-physical systems (CPS) framework of AVs. The proposed Intelligent Intrusion Detection System (IIDS) employs a combination of advanced learning techniques, including Data Fusion, One-Class Support Vector Machine, Random Forest, and k-Nearest Neighbor, to improve detection accuracy. The study demonstrates that the EfficientNet model achieves superior performance with an accuracy of up to 99.97%, highlighting its potential to significantly enhance the security of AV networks. This research contributes to the development of intelligent cyber-security models that align with 6G standards, ultimately supporting the safe and efficient integration of AVs into smart cities.
智慧城市已经开发出先进技术,改善了人们的生活。智慧城市与自动驾驶车辆的合作展示了向更先进未来的发展趋势。网络物理系统(CPS)用于融合网络世界和物理世界,结合电子和机械系统,自动驾驶车辆(AV)提供了CPS的理想模型。6G技术与自动驾驶车辆(AV)的集成标志着智能交通系统(ITS)的重大进步,提供了更高的自给自足、智能和效率。自动驾驶车辆依靠复杂的传感器、摄像头和软件网络来运行。网络攻击可能会干扰这些系统,导致事故、受伤或死亡。自动驾驶车辆通常连接到更广泛的交通网络和基础设施。一次成功的网络攻击不仅可能扰乱个别车辆,还可能扰乱公共交通系统,造成广泛的混乱和经济损失。自动驾驶车辆与其他车辆(V2V)和基础设施(V2I)通信以实现安全高效运行。如果这些通信渠道受到损害,可能会导致碰撞、交通堵塞或其他危险情况。因此,我们提出了一种新颖的方法,通过利用预训练的卷积神经网络(CNN)模型在自动驾驶车辆(AV)的网络物理系统(CPS)框架内进行动态网络攻击检测,来减轻这些安全风险。所提出的智能入侵检测系统(IIDS)采用了包括数据融合、单类支持向量机、随机森林和k近邻在内的先进学习技术组合,以提高检测准确性。研究表明,EfficientNet模型实现了卓越的性能,准确率高达99.97%,突出了其显著增强AV网络安全性的潜力。这项研究有助于开发符合6G标准的智能网络安全模型,最终支持自动驾驶车辆安全高效地融入智慧城市。