无线传感器网络中的动态协同变点检测

M. Haghighi, Chris J. Musselle
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引用次数: 8

摘要

随着无线传感器网络(WSN)随时可用,并且能够随着时间的推移监测多种物理现象,现在可以很容易地以多个共同发展的数据流的形式生成大量数据。这为分析师提出了许多具有挑战性的任务,他们经常寻求实时监控这些数据,以进行总结、异常检测和预测。无线传感器网络通常受到严重的资源限制,这使得它们无法像传统系统那样在大型数据集上应用计算算法。Sensomax是一个基于代理和面向对象的WSN中间件,它能够根据所需的操作范式执行多个并发应用程序。其基于组件的架构特点是在整个网络的不同层次上无缝集成轻量级计算算法。本文介绍了一种新型算法的初步工作,该算法能够以无监督的方式在多个数据流中并行检测重要的变化点或“兴趣点”。该算法基于一种称为子空间跟踪的增量降维方法。Sensomax利用该算法来检测变化点,并动态响应应用程序的需求,同时执行并发应用程序,切换操作范式,并在集群和网络级别进行重组。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Collaborative Change Point Detection in Wireless Sensor Networks
With wireless sensor networks (WSN) now readily available and capable of monitoring multiple physical phenomena over time, large volumes of data can now easily be generated in the form of multiple co-evolving data streams. This presents a number of challenging tasks for the analyst, who often seeks to monitor such data in real-time for the purposes of summarisation, anomaly detection and prediction. WSNs often suffer from severe resource constraints that prevent them from applying computational algorithms on large datasets as in conventional systems. Sensomax is an agent-based and object-oriented WSN middleware, which is capable of executing multiple concurrent applications based on their required operational paradigm. Its component-based architecture features seamless integration of light-weight computational algorithms at different levels throughout the network. This paper presents the preliminary work on a novel algorithm capable of detecting significant change points, or "points of interest" in an unsupervised fashion across multiple data streams in parallel. The algorithm is based on an incremental dimensionality reduction approach known as subspace tracking. Sensomax exploits this algorithm to detect the change points and dynamically respond to the applications' demands whilst executing concurrent applications, switching operational paradigms and reorganising at cluster and network levels.
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