Applying time series analysis and neighbourhood voting in a decentralised approach for fault detection and classification in WSNs

T. Nguyen, Doina Bucur, Marco Aiello, K. Tei
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引用次数: 26

Abstract

In pervasive computing environments, wireless sensor networks play an important infrastructure role, collecting reliable and accurate context information so that applications are able to provide services to users on demand. In such environments, sensors should be self-adaptive by taking correct decisions based on sensed data in real-time in a decentralised manner; however, sensed data is often faulty. We thus design a decentralised scheme for fault detection and classification in sensor data in which each sensor node does localised fault detection. A combination of neighbourhood voting and time series data analysis techniques are used to detect faults. We also study the comparative accuracy of both the union and the intersection of the two techniques. Then, detected faults are classified into known fault categories. An initial evaluation with SensorScope, an outdoor temperature dataset, confirms that our solution is able to detect and classify faulty readings into four fault types, namely, 1) random, 2) mal-function, 3) bias, and 4) drift with accuracy up to 95%. The results also show that, with the experimental dataset, the time series data analysis technique performs comparable well in most of the cases, whilst in some other cases the support from neighbourhood voting technique and histogram analysis helps our hybrid solution to successfully detects the faults of all types.
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将时间序列分析和邻域投票方法应用于wsn的故障检测和分类
在普适计算环境中,无线传感器网络扮演着重要的基础设施角色,收集可靠、准确的上下文信息,使应用程序能够按需向用户提供服务。在这样的环境中,传感器应该通过以分散的方式根据实时感知的数据做出正确的决策来自适应;然而,感知到的数据往往是错误的。因此,我们设计了一种分散的方案,用于传感器数据的故障检测和分类,其中每个传感器节点都进行局部故障检测。结合邻域投票和时间序列数据分析技术进行故障检测。我们还研究了两种技术的联合和交叉的比较精度。然后,将检测到的故障分类到已知的故障类别中。对室外温度数据集SensorScope的初步评估证实,我们的解决方案能够检测并将故障读数分为四种故障类型,即1)随机,2)故障,3)偏差和4)漂移,准确率高达95%。结果还表明,在实验数据集上,时间序列数据分析技术在大多数情况下表现相当好,而在其他一些情况下,邻域投票技术和直方图分析的支持有助于我们的混合解决方案成功检测所有类型的故障。
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