基于WSNs的复杂事件容错检测:以结构健康监测为例

Xuefeng Liu, Jiannong Cao, Shaojie Tang, Peng Guo
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引用次数: 19

摘要

在存在故障节点的情况下,可靠地检测事件是无线传感器网络(wsn)的一项基本任务,特别是具有错误读数的节点。现有的容错事件检测方案通常通过高级融合技术“掩盖”错误读数的影响。然而,在结构健康监测(SHM)和火山监测等一些应用中,检测感兴趣的事件需要来自多个传感器的低级数据协作。这意味着错误读数的影响一旦涉及到事件检测就不能被掩盖。必须首先检测出读数错误的节点,并将其从系统中移除。不幸的是,大多数现有的检测故障节点的技术只能将布尔或标量数据作为输入,而在这些应用中,从每个传感器生成的数据是一个动态数据序列。在本文中,我们使用SHM的一个示例来解决这些问题。在SHM中检测事件(即结构损伤)需要多个传感器的低水平协作,每个传感器产生一系列动态振动数据。我们在SHM中提出了一种称为FTED的容错事件检测方案。在FTED中,提出了三种新技术:(1)故障节点检测的分布式特征提取,(2)迭代故障节点检测(I-FUND)和(3)分布式事件检测。特别是,I-FUND以向量为输入,甚至可以处理“元素不匹配问题”,即向量中的可比元素位于未知的不同位置。仿真和实际实验验证了FTED的有效性。
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Fault tolerant complex event detection in WSNs: A case study in structural health monitoring
Reliably detecting event in the presence of faulty nodes, particularly nodes with faulty readings is a fundamental task in wireless sensor networks (WSNs). Existing fault-tolerant event detection schemes usually 'mask' the effect of faulty readings through high-level fusion techniques. However, in some applications such as structural health monitoring (SHM) and volcano monitoring, detecting the events of interest requires lowlevel data collaboration from multiple sensors. This implies that the effect of faulty readings cannot be masked once they are involved into event detection. Nodes with faulty readings must be firstly detected and removed from the system. Unfortunately, most existing techniques to detect faulty nodes can only take boolean or scalar data as input while in these applications, data generated from each sensor is a sequence of dynamic data. In this paper, we address these issues using an example of SHM. Detecting event in SHM (i.e. structural damage) requires low level collaboration from multiple sensors, and each sensor generates a sequence of dynamic vibrational data. We proposed a fault-tolerant event detection scheme in SHM called FTED. In FTED, three novel techniques are proposed: (1) distributed extraction of features for faulty node detection, (2) iterative faulty node detection (I-FUND), and (3) distributed event detection. In particular, I-FUND takes vector as input and can even handle the 'element mismatch problem' where comparable elements in vectors are located at unknown different positions. The effectiveness of FTED is demonstrated through both simulations and real experiments.
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