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Spatial anomaly detection in sensor networks using neighborhood information

机译:使用邻域信息的传感器网络中的空间异常检测

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The field of wireless sensor networks (WSNs), embedded systems with sensing and networking capability, has now matured after a decade-long research effort and technological advances in electronics and networked systems. An important remaining challenge now is to extract meaningful information from the ever-increasing amount of sensor data collected by WSNs. In particular, there is strong interest in algorithms capable of automatic detection of patterns, events or other out-of-the order, anomalous system behavior. Data anomalies may indicate states of the system that require further analysis or prompt actions. Traditionally, anomaly detection techniques are executed in a central processing facility, which requires the collection of all measurement data at a central location, an obvious limitation for WSNs due to the high data communication costs involved. In this paper we explore the extent by which one may depart from this classical centralized paradigm, looking at decentralized anomaly detection based on unsupervised machine learning. Our aim is to detect anomalies at the sensor nodes, as opposed to centrally, to reduce energy and spectrum consumption. We study the information gain coming from aggregate neighborhood data, in comparison to performing simple, in-node anomaly detection. We evaluate the effects of neighborhood size and spatio-temporal correlation on the performance of our new neighborhood-based approach using a range of real-world network deployments and datasets. We find the conditions that make neighborhood data fusion advantageous, identifying also the cases in which this approach does not lead to detectable improvements. Improvements are linked to the diffusive properties of data (spatio-temporal correlations) but also to the type of sensors, anomalies and network topological features. Overall, when a dataset stems from a similar mixture of diffusive processes precision tends to benefit, particularly in terms of recall.. Our work paves the way towards understanding how distributed data fusion methods may help managing the complexity of wireless sensor networks, for instance in massive Internet of Things scenarios. (C) 2016 The Authors. Published by Elsevier B.V.
机译:经过十多年的研究努力以及电子和网络系统的技术进步,无线传感器网络(WSN)领域已成为具有传感和联网功能的嵌入式系统。现在剩下的一个重要挑战是从WSN收集的越来越多的传感器数据中提取有意义的信息。特别地,人们对能够自动检测模式,事件或其他乱序,异常系统行为的算法非常感兴趣。数据异常可能指示需要进一步分析或立即采取措施的系统状态。传统上,异常检测技术是在中央处理设备中执行的,这需要在中央位置收集所有测量数据,由于所涉及的高数据通信成本,WSN的明显局限性。在本文中,我们研究了基于无监督机器学习的分散式异常检测的程度,该范围可能偏离这种经典的集中式范式。我们的目标是检测传感器节点的异常(而不是集中检测),以减少能量和频谱消耗。与执行简单的节点内异常检测相比,我们研究了来自聚集邻域数据的信息增益。我们使用一系列实际网络部署和数据集,评估了邻域大小和时空相关性对基于新邻域方法的性能的影响。我们发现了使邻域数据融合变得有利的条件,还确定了这种方法不会导致可检测的改进的情况。改进与数据的扩散特性(时空相关性)相关,也与传感器的类型,异常和网络拓扑特征相关。总体而言,当数据集源自扩散过程的类似混合时,精度往往会受益,尤其是在召回方面。我们的工作为理解分布式数据融合方法如何帮助管理无线传感器网络的复杂性铺平了道路。大规模的物联网场景。 (C)2016作者。由Elsevier B.V.发布

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