Node Localisation in Wireless Ad Hoc Networks

J. Arnold, N. Bean, M. Kraetzl, M. Roughan
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引用次数: 6

Abstract

Wireless ad hoc networks often require a method for estimating their nodes' locations. Typically this is achieved by the use of pair-wise measurements between nodes and their neighbours, where a number of nodes already accurately know their location and the remaining nodes must calculate theirs using these known locations. Typically, a minimum mean square estimate (MMSE), or a maximum likelihood estimate (MLE) is used to generate the unknown node locations, making use of range estimates derived from measurements between the nodes. In this paper we investigate the efficacy of using radio frequency, received signal strength (RSS) measurements for the accurate location of the transmitting nodes over long ranges. We show with signal strength measurements from three or more wireless probes in noisy propagation conditions, that by using a weighted MMSE approach we can obtain significant improvements in the variance of the location estimate over both the standard MMSE and MLE approaches.
无线自组织网络中的节点定位
无线自组织网络通常需要一种估计其节点位置的方法。通常,这是通过使用节点及其邻居之间的成对测量来实现的,其中许多节点已经准确地知道它们的位置,其余节点必须使用这些已知位置来计算它们的位置。通常,使用最小均方估计(MMSE)或最大似然估计(MLE)来生成未知节点位置,利用从节点之间的测量中获得的距离估计。在本文中,我们研究了使用无线电频率,接收信号强度(RSS)测量的效果,用于远距离发射节点的准确位置。我们通过在噪声传播条件下对三个或更多无线探头的信号强度测量表明,通过使用加权MMSE方法,我们可以比标准MMSE和MLE方法显著改善位置估计的方差。
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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