A new scheme for energy-efficient estimation in a sensor network

Xun Chen, Rick S. Blum, Brian M. Sadler
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引用次数: 8

Abstract

In this paper, energy efficient estimation of an unknown parameter in Gaussian noise is studied in a sensor networking context. A new approach is suggested to obtain a good approximation to the traditional maximum likelihood (ML) estimate, which can save energy by reducing the number of sensor transmissions. Specifically, we describe a new and simple transmission scheme in which the sensor transmissions are ordered according to the magnitude of their measurements, and the sensors with small magnitude measurements, smaller than a threshold, do not transmit. A bound on the error of approximation is derived, which can be utilized to dynamically determine the threshold such that a trade-off between the accuracy of the approximation and the energy savings can be maintained. Through the numerical results, we show that our approach can be very energy efficient with only a negligible estimation error introduced.
一种传感器网络中能效估计的新方案
本文研究了传感器网络环境下高斯噪声下未知参数的节能估计问题。提出了一种与传统的最大似然(ML)估计近似的新方法,通过减少传感器传输的次数来节省能量。具体来说,我们描述了一种新的简单的传输方案,其中传感器传输按照其测量值的大小排序,并且测量值较小的传感器(小于阈值)不传输。导出了近似误差的边界,利用该边界可以动态确定阈值,从而在近似精度和节能之间保持平衡。通过数值计算结果,我们表明,我们的方法可以非常节能,只有一个可以忽略不计的估计误差引入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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