Rapid, Multi-vehicle and Feed-forward Neural Network based Intrusion Detection System for Controller Area Network Bus

Muhammad R. Sami, M. Ibarra, Anamaria C. Esparza, S. Al-Jufout, Mehrdad Aliasgari, M. Mozumdar
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引用次数: 1

Abstract

In this paper, an Intrusion Detection System (IDS) in the Controller Area Network (CAN) bus of modern vehicles has been proposed. NESLIDS is an anomaly detection algorithm based on the supervised Deep Neural Network (DNN) architecture that is designed to counter three critical attack categories: Denial-of-service (DoS), fuzzy, and impersonation attacks. Our research scope included modifying DNN parameters, e.g. number of hidden layer neurons, batch size, and activation functions according to how well it maximized detection accuracy and minimized the false positive rate (FPR) for these attacks. Our methodology consisted of collecting CAN Bus data from online and in real-time, injecting attack data after data collection, preprocessing in Python, training the DNN, and testing the model with different datasets. Results show that the proposed IDS effectively detects all attack types for both types of datasets. NESLIDS outperforms existing approaches in terms of accuracy, scalability, and low false alarm rates.
基于快速、多车前馈神经网络的控制器局域网总线入侵检测系统
本文提出了一种基于现代车辆控制器局域网(CAN)总线的入侵检测系统。NESLIDS是一种基于监督深度神经网络(DNN)架构的异常检测算法,旨在应对三种关键攻击类别:拒绝服务(DoS)、模糊攻击和模拟攻击。我们的研究范围包括修改DNN参数,例如隐藏层神经元的数量,批处理大小和激活函数,根据它最大化检测精度和最小化这些攻击的假阳性率(FPR)的程度。我们的方法包括从在线和实时收集CAN总线数据,在数据收集后注入攻击数据,在Python中进行预处理,训练DNN,并用不同的数据集测试模型。实验结果表明,本文提出的入侵检测方法能够有效检测两类数据集的所有攻击类型。NESLIDS在准确性、可伸缩性和低误报率方面优于现有方法。
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