无线传感器网络估计的分布式测量滤波

Eric J. Msechu, G. Giannakis
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引用次数: 20

摘要

为了节省通信带宽和传感器传输能量,本文研究了无线传感器网络估计的数据选择问题。现有的数据选择方法固有地将传感和传输到中央融合单元视为同等成本。然而,用于传感的能量消耗通常只是通信所需能量的一小部分。为了减轻后者,本文提出了传感器节点的测量删减以减少数据,以及一种新的最大似然估计器,该估计器最佳地结合了删减数据模型的知识。进一步给出了估计量方差的cram - rao下界的一个封闭表达式。数值研究表明,在各种传感条件下,使用截短测量的估计器可以获得与其他方法竞争的误差值,同时保持较低的计算复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed measurement censoring for estimation with wireless sensor networks
Motivated by the savings in communication bandwidth and sensor transmission energy, data selection for estimation with wireless sensor networks is investigated in this paper. Existing approaches to data selection inherently treat sensing and transmission to a central fusion unit as of equal cost. However, energy expenditure in sensing is generally a fraction of that needed for communication. To alleviate the latter, measurement censoring at sensor nodes is proposed here for data reduction, along with a novel maximum likelihood estimator that optimally incorporates knowledge of the censored data model. Furthermore, a closed-form expression for the Cramér-Rao lower bound on the estimator variance is presented. Numerical studies show that the estimator using censored measurements achieves error values that are competitive with alternative methods, under various sensing conditions, while retaining lower computational complexity.
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