Two effective anomaly correction methods in embedded systems

Roghayeh Mojarad, H. Zarandi
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引用次数: 4

Abstract

In this paper, two anomaly correction methods are proposed which are based on Markov and Stide detection methods. Both methods consist of three steps: 1) Training, 2) Anomaly detection and 3) Anomaly Correction. In training step, the Morkov-based method constructs a transition matrix; Stidebased method makes a database by events with their frequency. In detection step, when the probability of transition from previous event to current event does not reach a predefined threshold, the morkov-based method detects an anomaly. While, if frequency of unmatched events exceeds from the threshold value, Stide-based method determined an anomaly. In the correction step, the methods check the defined constraints for each anomalous event to find source of anomaly and a suitable way to correct the anomalous event. Evaluation of the proposed methods are done using a total of 7000 data sets. The window size of corrector and the number of injected anomalies varied between 3 and 5, 1 and 7, respectively. The experiments have been done to measure the correction coverage rate for Markov-based and Stide-based methods which are on average 77.66% and 60.9%, respectively. Area consumptions in Makov-based and Stide-based methods are on average 415.48μm2 and 239.61μm2, respectively.
嵌入式系统中两种有效的异常校正方法
本文提出了两种基于马尔可夫和斯蒂德检测的异常校正方法。两种方法都包括三个步骤:1)训练,2)异常检测,3)异常校正。在训练步骤中,基于morkov的方法构造一个转移矩阵;基于频率的方法根据事件的频率创建数据库。在检测步骤中,当从先前事件到当前事件的转换概率未达到预定义的阈值时,基于morkov的方法检测异常。而如果不匹配事件的频率超过阈值,则基于stide的方法确定异常。在校正步骤中,对每个异常事件的约束条件进行检查,找出异常的来源和合适的方法来校正异常事件。使用总共7000个数据集对所提出的方法进行了评估。校正器的窗口大小和注入异常数量分别在3 ~ 5、1 ~ 7之间变化。实验测量了基于markov和stide方法的校正覆盖率,平均校正覆盖率分别为77.66%和60.9%。基于makov法和基于stide法的面积消耗平均分别为415.48μm2和239.61μm2。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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