ATVSA:用于态势感知的车辆驾驶员分析

Rashid Khan, N. Saxena, O. Rana, P. Gope
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引用次数: 1

摘要

越来越多的车辆连接和自动化导致更大的潜在攻击面。车辆内部的此类漏洞也可用于自动盗窃,从而增加了攻击者禁用汽车制造商实施的防盗机制的可能性。我们利用来自控制器区域网络(CAN)总线流量的模式来验证驾驶员的“行为”,作为防止车辆被盗的基础。我们提出的模型使用半监督学习,使用从CAN总线流量中提取的特征连续地描述驾驶员。我们选择了15个关键特征,并使用包含10个不同驱动程序的51个特征的数据集获得了99%的准确率。我们使用了大量的数据分析算法,如J48,随机森林,JRip和聚类,使用94K的记录。我们的结果表明,J48在训练和测试方面表现最好(分别记录1.95秒和0.44秒)。我们还分析了使用滑动窗口对算法性能的影响,通过改变窗口的大小来确定对预测精度的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ATVSA: Vehicle Driver Profiling for Situational Awareness
Increasing connectivity and automation in vehicles leads to a greater potential attack surface. Such vulnerabilities within vehicles can also be used for auto-theft, increasing the potential for attackers to disable anti-theft mechanisms implemented by vehicle manufacturers. We utilize patterns derived from Controller Area Network (CAN) bus traffic to verify driver “behavior”, as a basis to prevent vehicle theft. Our proposed model uses semi-supervised learning that continuously profiles a driver, using features extracted from CAN bus traffic. We have selected 15 key features and obtained an accuracy of 99% using a dataset comprising a total of 51 features across 10 different drivers. We use a number of data analysis algorithms, such as J48, Random Forest, JRip and clustering, using 94K records. Our results show that J48 is the best performing algorithm in terms of training and testing (1.95 seconds and 0.44 seconds recorded, respectively). We also analyze the effect of using a sliding window on algorithm performance, altering the size of the window to identify the impact on prediction accuracy.
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