基于RSS测量的移动节点的最大似然轨迹估计

A. Coluccia, F. Ricciato
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引用次数: 20

摘要

在本文中,我们提出了从接收信号强度(RSS)测量的移动节点的最大似然(ML)轨迹估计。参考场景包括许多固定和已知位置的节点(锚点)和一个运动中的目标节点(盲点),其瞬时位置未知。我们首先考虑从锚点到锚点测量的信道参数的动态估计,根据众所周知的路径损耗传播模型进行统计建模。然后,我们基于一组盲锚RSS测量值来解决盲节点位置和速度的ML估计问题。我们还将该算法与基于ml的单点定位算法进行了比较,并讨论了两种方法对缓慢移动节点的适用性。我们给出了仿真结果来评估所提出的解决方案在定位误差和速度估计(模量和角度)方面的准确性。分析了定位误差在初始点和最终点上的分布,并推导了封闭表达式。
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Maximum Likelihood trajectory estimation of a mobile node from RSS measurements
In this paper we present a Maximum Likelihood (ML) trajectory estimation of a mobile node from Received Signal Strength (RSS) measurements. The reference scenario includes a number of nodes in fixed and known positions (anchors) and a target node (blind) in motion whose instantaneous position is unknown. We first consider the dynamic estimation of the channel parameters from anchor-to-anchor measurements, statistically modeled according to the well-known Path-Loss propagation model. Then, we address the ML estimation problem for the position and velocity of the blind node based on a set of blind-to-anchor RSS measurements. We compare also the algorithm with a ML-based single-point localization algorithm, and discuss the applicability of both methods for slowly moving nodes. We present simulation results to assess the accuracy of the proposed solution in terms of localization error and velocity estimation (modulus and angle). The distribution of the localization error on the initial and final point is analyzed and closed-form expressions are derived.
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