利用时空相关结构进行无线传感器网络检测

Sadiq Ali, J. López-Salcedo, G. Seco-Granados
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引用次数: 4

摘要

在密集无线传感器网络(WSN)中,传感器获得的连续测量值在涉及观察物理现象变化的应用中是时空相关的。为了利用这种时空结构进行事件检测,传统的GLRT测试在数据维数等于或大于样本量的情况下会退化。这是因为时空样本协方差矩阵变得病态或接近奇异。为了解决这一问题,我们改进了传统的GLRT检测器,将大的时空协方差矩阵分解为空间和时间协方差矩阵。此外,提出了几种在高维小样本量情况下具有鲁棒性的检测器。数值结果表明,当数据维数大于样本量时,本文提出的检测方法确实优于传统的检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting structure of spatio-temporal correlation for detection in Wireless Sensor Networks
In dense Wireless Sensor Networks (WSN) consecutive measurements obtained by sensors are spatio-temporally correlated in applications that involve the observation of the variation of a physical phenomenon. To exploit this spatiotemporal structure for event detection, the the traditional GLRT test degenerates in the case where dimensionality of data is equal to the sample size or larger. It is because the spatio-temporal sample covariance matrix becomes ill-conditioned or near singular. To circumvent this problem, we modify the traditional GLRT detector by splitting the large spatio-temporal covariance matrix into spatial and temporal covariance matrices. In addition, several detectors are proposed that are robust in the case of high dimensionality and small sample size. Numerical results are drawn, which show that the proposed detection schemes indeed out perform the traditional approaches when the dimension of data is larger than the sample size.
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