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Advanced Analytics for Connected Car Cybersecurity

机译:互联汽车网络安全的高级分析

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The vehicular connectivity revolution is fueling the automotive industry's most significant transformation seen in decades. However, as modern vehicles become more connected, they also become much more vulnerable to cyber-attacks. In this paper, a fully working machine learning approach is proposed to protect connected vehicles (fleets and individuals) against such attacks. We present a system that monitors different vehicle interfaces (Network, CAN, and OS), extracts relevant information based on configurable rules, and sends it to a trained generative model to detect deviations from normal behavior. Using a configurable data collector, we provide a higher level of data abstraction as the model is trained based on events instead of raw data, which has a noise-filtering effect and eliminates the need to retrain the model whenever a protocol changes. We present a new approach for detecting anomalies, tailored to the temporal nature of our domain. Adapting a hybrid approach to the fully temporal setting, we first train a Hidden Markov Model to learn normal vehicle behavior, and then a regression model to calibrate the likelihood threshold for anomaly. Using this architecture, our method detects sophisticated and realistic anomalies, which are missed by other existing methods monitoring the CAN bus only. We also demonstrate the superiority of adaptive thresholds over static ones. Furthermore, our approach scales efficiently from monitoring individual cars to serving large fleets. We demonstrate the competitive advantage of our model via encouraging empirical results.
机译:车辆连接性革命正在推动汽车行业数十年来最重大的变革。但是,随着现代车辆之间的连接越来越紧密,它们也变得更加容易受到网络攻击。在本文中,提出了一种完全有效的机器学习方法,以保护连接的车辆(车队和个人)免受此类攻击。我们提出了一个系统,该系统监视不同的车辆界面(网络,CAN和OS),基于可配置的规则提取相关信息,并将其发送到经过训练的生成模型中,以检测与正常行为的偏差。使用可配置的数据收集器,由于模型是基于事件而不是原始数据进行训练的,因此我们可以提供更高级别的数据抽象,这具有噪声过滤效果,并且无需在协议更改时就重新训练模型。我们提出了一种新的方法来检测异常,这是针对我们域的时间性质而量身定制的。将混合方法应用于全时态设置,我们首先训练隐马尔可夫模型以学习正常的车辆行为,然后训练回归模型以校准异常的可能性阈值。使用这种架构,我们的方法可以检测复杂而现实的异常,而其他仅监视CAN总线的现有方法会忽略这些异常。我们还证明了自适应阈值优于静态阈值。此外,我们的方法可以有效地扩展,从监视单个汽车到为大型车队提供服务。我们通过令人鼓舞的经验结果证明了我们模型的竞争优势。

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