基于混合fpga的轻量级多攻击CAN入侵检测系统

Shashwat Khandelwal, Shanker Shreejith
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引用次数: 5

摘要

越来越多的车辆连接正在实现联网自动驾驶和先进驾驶辅助系统(ADAS)等新功能,以提高下一代车辆的安全性和可靠性。这种对车载功能访问的增加损害了使用传统车载网络(如控制器局域网(CAN))的关键功能,这些网络没有固有的安全性或身份验证机制。入侵检测和缓解方法,特别是使用机器学习模型,通过其推广到新向量的能力,在检测CAN中的多个攻击向量方面显示出有希望的结果。然而,大多数部署需要像gpu这样的专用计算单元来执行线速率检测,这消耗了更高的功率。在本文中,我们提出了一个轻量级的多攻击量化机器学习模型,该模型使用Xilinx的深度学习处理单元IP部署在Zynq Ultrascale+ (XCZU3EG) FPGA上,该模型使用公共CAN入侵检测数据集进行训练和验证。量化模型检测拒绝服务和模糊攻击的准确率超过99%,假阳性率为0.07%,可与文献中最先进的技术相媲美。在ECU上运行软件任务时,入侵检测系统(IDS)的执行仅消耗2.0 W,与最先进的实现相比,每条消息的处理延迟减少了25%。这种部署允许ECU功能与IDS共存,而对任务的改变最小,使其成为车载系统中实时IDS的理想选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lightweight Multi-Attack CAN Intrusion Detection System on Hybrid FPGAs
Rising connectivity in vehicles is enabling new capabilities like connected autonomous driving and advanced driver assistance systems (ADAS) for improving the safety and reliability of next-generation vehicles. This increased access to in-vehicle functions compromises critical capabilities that use legacy invehicle networks like Controller Area Network (CAN), which has no inherent security or authentication mechanism. Intrusion detection and mitigation approaches, particularly using machine learning models, have shown promising results in detecting multiple attack vectors in CAN through their ability to generalise to new vectors. However, most deployments require dedicated computing units like GPUs to perform line-rate detection, consuming much higher power. In this paper, we present a lightweight multi-attack quantised machine learning model that is deployed using Xilinx's Deep Learning Processing Unit IP on a Zynq Ultrascale+ (XCZU3EG) FPGA, which is trained and validated using the public CAN Intrusion Detection dataset. The quantised model detects denial of service and fuzzing attacks with an accuracy of above 99 % and a false positive rate of 0.07%, which are comparable to the state-of-the-art techniques in the literature. The Intrusion Detection System (IDS) execution consumes just 2.0 W with software tasks running on the ECU and achieves a 25 % reduction in per-message processing latency over the state-of-the-art implementations. This deployment allows the ECU function to coexist with the IDS with minimal changes to the tasks, making it ideal for real-time IDS in in-vehicle systems.
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