The automation and connectivity of CAV inherit most of the cyber-physical vulnerabilities of incumbent technologies such as evolving network architectures, wireless communications, and AI-based automation. This book chapter entails the cyber-physical vulnerabilities and risks that originated in IT, OT, and the physical domains of the CAV ecosystem, eclectic threat landscapes, and threat intelligence. To deal with the security threats in high-speed, high dimensional, multimodal data and assets from eccentric stakeholders of the CAV ecosystem, this chapter presents and analyzes some of the state of art deep learning-based threat intelligence for attack detection. The frontiers in deep learning, namely Meta-Learning and Federated Learning, along with their challenges have been included in the chapter. We have proposed, trained, and tested the deep CNN-LSTM architecture for CAV threat intelligence; assessed and compared the performance of the proposed model against other deep learning algorithms such as DNN, CNN, LSTM. Our results indicate the superiority of the proposed model although DNN and 1d-CNN also achieved more than 99% of accuracy, precision, recall, f1-score, and AUC on the CAV-KDD dataset. The good performance of deep CNN-LSTM comes with the increased model complexity and cumbersome hyperparameters tuning. Still, there are open challenges on deep learning adoption in the CAV cybersecurity paradigm due to lack of properly developed protocols and policies, poorly defined privileges between stakeholders, costlier training, adversarial threats to the model, and poor generalizability of the model under out of data distributions.
翻译:CAV的自动化和连通性继承了现有技术的大多数网络-物理脆弱性,如不断演变的网络结构、无线通信和AI-自动化等。该书章包括了源于IT、OT和CAV生态系统物理领域的网络-物理脆弱性和风险,以及CAV的隐形威胁景观和威胁情报。为了应对高速、高维、多式数据以及来自CAV生态系统偏心利益攸关方的资产中的安全威胁,本章介绍并分析了用于侦查袭击的基于深层次威胁情报的先进学习状态。深层学习的前沿,即Meta-Learning和Fed Learning及其挑战都列入了该章。我们提议、培训和测试了CAN-LSTM的深层威胁情报领域;评估并比较了拟议模式与其他深层次学习算法,如DNNN、CNN、LSTM、LSTM等。我们的结果表明,拟议模式的优越性优劣模式,尽管DNNN和1-CNN还取得了超过99%的准确性、回顾、F1-CRE-LE及其挑战。我们提议、CAV-CD-DM的低廉定的模型和高清晰的模型在CAV-DDDDM的深度学习中,在高标准方面缺乏的低标准中,在高标准的低标准、低标准和低标准中,在高标准方面缺乏和低廉标准方面缺乏和低廉标准方面缺乏和低度的学习。