wsn逻辑子视图中的异常检测

R. Zakrzewski, Trevor P. Martin, G. Oikonomou
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引用次数: 0

摘要

无线传感器网络通常是分布的、多样的、庞大的,这使得它们的监控变得困难。解决这个问题的一种方法是通过创建逻辑子视图来关注系统的一部分,这些子视图可以被视为整个系统操作的代理。在本文中,逻辑子视图由流量聚合器及其拓扑组成,用于监视异常。根据系统中的多样性和重要性选择聚合器,并将其建模为图,以捕获聚合拓扑和数据分布。提出了聚合器的选择标准、部分重叠子视图的比较方法、正常聚合剖面的获取以及异常度量方法。利用模拟无线传感器网络获取边缘数据,并应用该方法证明,关注系统子视图和比较聚合概况有助于检测系统其他地方引起的异常以及异常对聚合器的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection in Logical Sub-Views of WSNs
Wireless sensor networks are often distributed, diverse, and large making their monitoring hard. One way to tackle it is to focus on part of the system by creating logical sub-views which can be seen as proxies of the overall system operations. In this manuscript, logical sub-views consist of traffic aggregators and their topology which are monitored for anomaly. The aggregators are selected based on diversity and importance in the system and they are modelled as graphs to capture aggregation topology and data distributions. The aggregators' selection criteria, the method for comparison of partially overlapping sub-views, normal aggregation profiles acquisition, and measures of anomaly are proposed. A simulated wireless sensor network is used to acquire data at the edge and apply the method to demonstrate that focusing on system sub-views and comparing aggregation profiles facilitates anomaly detection also caused elsewhere in the system and the impact the anomaly has on aggregators.
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