Sensor fusion-based event detection in Wireless Sensor Networks

Majid Bahrepour, N. Meratnia, P. Havinga
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引用次数: 57

Abstract

Recently, Wireless Sensor Networks (WSN) community has witnessed an application focus shift. Although, monitoring was the initial application of wireless sensor networks, in-network data processing and (near) real-time actuation capability have made wireless sensor networks suitable candidate for event detection and alarming applications as well. Unreliability and dynamic (e.g. in terms of deployment area, network resources, and topology) are normal practices in the field of WSN. Therefore, effective and trustworthy event detection techniques for the WSN require robust and intelligent methods of mining hidden patterns in the sensor data, while supporting various kinds of dynamicity. Due to the fact that events are often functions of more than one attribute, data fusion and use of more features can help increasing event detection rate and reducing false alarm rate. In addition, sensor fusion can lead to more accurate and robust event detection by eliminating outliers and erroneous readings of individual sensor nodes and combining individual event detection decisions. In this paper, we propose a two-level sensor fusion-based event detection technique for the WSN. The first level of event detection in our proposed approach is conducted locally inside the sensor nodes, while the second level is carried out in a level higher (e.g., in a cluster head or gateway) and incorporates a fusion algorithm to reach a consensus among individual detection decisions made by sensor nodes. By considering fire as an event, we evaluate our approach through several experiments and illustrate impact of sensor fusion on achieving better results.
基于传感器融合的无线传感器网络事件检测
近年来,无线传感器网络(WSN)社区见证了应用重点的转变。虽然监测是无线传感器网络的最初应用,但网络内数据处理和(近)实时驱动能力使无线传感器网络也适合用于事件检测和报警应用。不可靠性和动态性(例如部署区域、网络资源和拓扑结构)是WSN领域的常规做法。因此,有效和可信的WSN事件检测技术需要鲁棒和智能的方法来挖掘传感器数据中的隐藏模式,同时支持各种动态。由于事件往往是多个属性的函数,因此数据融合和使用更多的特征有助于提高事件检测率,降低虚警率。此外,传感器融合可以通过消除异常值和单个传感器节点的错误读数以及结合单个事件检测决策来实现更准确和更稳健的事件检测。本文提出了一种基于两级传感器融合的无线传感器网络事件检测技术。在我们提出的方法中,第一级事件检测是在传感器节点内部局部进行的,而第二级是在更高一级(例如,在簇头或网关中)进行的,并包含融合算法,以便在传感器节点做出的单个检测决策之间达成共识。通过将火灾视为一个事件,我们通过几个实验评估了我们的方法,并说明了传感器融合对获得更好结果的影响。
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