基于硬件加速的多维关注车辆CAN总线入侵检测

IF 2.9 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
He Xu;Xiaokang Shi;Hansheng Liu;Yanwen Wang;Jiwu Lu;Haibo Zeng;Renfa Li;Di Wu
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引用次数: 0

摘要

控制器局域网(CAN)协议是实现电子控制单元(ecu)之间通信的有效标准。然而,由于缺乏防御功能,CAN总线容易受到恶意攻击。本文开发了一种新型的车辆入侵检测系统。挑战在于,现有的ids技术很少考虑小批量攻击,具有攻击规模小、攻击模式隐蔽等特点,对驾驶安全构成重大威胁。为了解决这一问题,我们开发了一个融合多维长短期记忆(MD-LSTM)和自注意机制(SAM)的算法模型,简称MULSAM。将MULSAM模型与堆叠长短期记忆(LSTM)、MD-LSTM等基线模型进行比较。实验表明,该方法具有最佳的检测准确率(98.98%)和训练稳定性。此外,为了加快MULSAM的边缘推理速度,硬件加速器采用并行化、模块化、流水线和定点量化等技术在FPGA器件上实现。实验表明,基于fpga的加速方案比CPU平台具有更好的能效。即使在一定程度的量化下,MULSAM的加速模型仍然显示出98.81%的高检测精度和1.88 ms的低延迟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MULSAM: Multidimensional Attention With Hardware Acceleration for Efficient Intrusion Detection on Vehicular CAN Bus
Controller area network (CAN) protocol is an efficient standard enabling communication among electronic control units (ECUs). However, the CAN bus is vulnerable to malicious attacks because of a lack of defense features. In this article, a novel vehicle intrusion detection system (IDS) is developed. The challenge is that existing techniques of IDSs rarely consider attacks with small-batch, which are characterized by their small attack scale and concealed attack patterns, posing a significant threat to driving safety. To solve this problem, we developed an algorithm model that merges multidimensional long short-term memory (MD-LSTM) and self-attention mechanism (SAM), shortly named MULSAM. The MULSAM model was compared with other baseline models, including stacked long short-term memory (LSTM), MD-LSTM, etc. Experiments show that our approach has the best-detection accuracy (98.98%) and training stability. Further, to speed up the inference of MULSAM on edge, the hardware accelerator is implemented on FPGA devices using technologies, such as parallelization, modular, pipeline, and fixed-point quantization. Experiments show that our FPGA-based acceleration scheme has a better-energy efficiency than the CPU platform. Even with a certain degree of quantification, the acceleration model for MULSAM still displays a high-detection accuracy of 98.81% and a low latency of 1.88 ms.
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来源期刊
CiteScore
5.60
自引率
13.80%
发文量
500
审稿时长
7 months
期刊介绍: The purpose of this Transactions is to publish papers of interest to individuals in the area of computer-aided design of integrated circuits and systems composed of analog, digital, mixed-signal, optical, or microwave components. The aids include methods, models, algorithms, and man-machine interfaces for system-level, physical and logical design including: planning, synthesis, partitioning, modeling, simulation, layout, verification, testing, hardware-software co-design and documentation of integrated circuit and system designs of all complexities. Design tools and techniques for evaluating and designing integrated circuits and systems for metrics such as performance, power, reliability, testability, and security are a focus.
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