Maximum likelihood localization estimation based on received signal strength

A. Waadt, C. Kocks, Shangbo Wang, G. Bruck, P. Jung
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引用次数: 21

Abstract

This paper discusses a maximum likelihood (ML) estimator for the localization of mobile nodes in communication networks. The derived estimator is optimized for ranging measurements exploiting the received signal strength (RSS). For this purpose, the bias and uncertainties of the RSS based ranging procedure are analyzed, considering a path loss model of an indoor ultra-wideband (UWB) network under line of sight (LOS) conditions. The nonlinearity of the path loss model is first taken into account before the statistics of the observed RSS are approximated by a Taylor sequence of first order. The so found metrics describe a weighted least squares (WLS) method. The metrics of the estimator are analytically derived in closed-form. The performance of the derived estimator is investigated in Monte-Carlo simulations and compared with a simple least squares (LS) method and another method exploiting RSS fingerprints.
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基于接收信号强度的最大似然定位估计
本文讨论了通信网络中移动节点定位的最大似然估计。推导的估计器对利用接收信号强度(RSS)进行测距测量进行了优化。为此,考虑了室内超宽带(UWB)网络在视线(LOS)条件下的路径损耗模型,分析了基于RSS的测距过程的偏差和不确定性。首先考虑了路径损耗模型的非线性,然后用一阶泰勒序列逼近观测到的RSS统计量。所发现的指标描述了加权最小二乘(WLS)方法。该估计器的度量以封闭形式解析导出。在蒙特卡罗仿真中研究了该估计器的性能,并与简单最小二乘(LS)方法和另一种利用RSS指纹的方法进行了比较。
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