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Anomaly Detection in Embedded Systems Using Power and Memory Side Channels

机译:使用电源和内存侧通道的嵌入式系统中的异常检测

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We propose multi-modal anomaly detection in embedded systems using time-correlated measurements of power consumption and memory accesses. Time series of power consumption of the processor and memory accesses between L2 cache and memory bus under known-good conditions are used to train one-class support vector machine (SVM) and isolation forest classifiers. These side channels have complementary anomaly detection capabilities. Experiments on a high-fidelity processor emulator show that the method accurately detects anomalies.
机译:我们建议使用功耗和内存访问的时间相关测量在嵌入式系统中进行多模式异常检测。在已知良好条件下,处理器功耗的时间序列以及二级缓存和内存总线之间的内存访问的时间序列用于训练一类支持向量机(SVM)和隔离林分类器。这些辅助通道具有互补的异常检测功能。在高保真处理器仿真器上进行的实验表明,该方法可以准确地检测异常。

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