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Statistical Time-based Intrusion Detection in Embedded Systems

机译:嵌入式系统中基于时间的统计入侵检测

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摘要

This paper presents a statistical method based on cumulative distribution functions (CDF) to analyze an embedded system’s behavior to detect anomalous and malicious executions behaviors. The proposed method analyzes the internal timing of the system by monitoring individual operations and sequences of operations, wherein the timing of operations is decomposed into multiple timing subcomponents. Creating the normal model of the system utilizing the internal timing adds resilience to zero-day attacks, and mimicry malware. The combination of CDF-based statistical analysis and timing subcomponents enable both higher detection rates and lower false positives rates. We demonstrate the effectiveness of the approach and compare to several state-of-theart malware detection methods using two embedded systems benchmarks, namely a network connected pacemaker and an unmanned aerial vehicle, utilizing seven different malware.
机译:本文提出了一种基于累积分布函数(CDF)的统计方法,用于分析嵌入式系统的行为,以检测异常和恶意执行行为。所提出的方法通过监视各个操作和操作序列来分析系统的内部时序,其中,操作时序被分解为多个时序子组件。利用内部计时来创建系统的正常模型,可以为零时差攻击和模仿恶意软件增加弹性。基于CDF的统计分析和计时子组件的组合可以实现更高的检测率和更低的误报率。我们演示了该方法的有效性,并与使用两种嵌入式系统基准测试的几种最新的恶意软件检测方法进行了比较,这些基准测试分别是使用七个不同恶意软件的网络连接的起搏器和无人飞行器。

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