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Range-based localisation and tracking in non-line-of sight wireless channels with gaussian scatterer distribution model

机译:高斯散射分布模型在非视距无线信道中基于距离的定位和跟踪

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摘要

Range-based localisation and tracking methods use the time-of-arrival (TOA) between the mobile station and several base stations, but the multipath propagation of non-line-of-sight channels complicates the estimation and processing. For channel modelling, the Gaussian scatterer distribution model has been reported to have a reasonable match between its TOA probability density distribution (PDF) and measured TOA data. In this study, this TOA PDF is adapted, along with selection from multiple motion models of the mobile station, for a new location and tracking algorithm. Since the TOA PDF is non-Gaussian and is a nonlinear function of the position of the mobile, particle filtering is used which increases the complexity of the algorithm. The focus is on the tracking performance, and this is evaluated by simulation using idealised statistical channels, allowing direct comparison between different location algorithms. In this context, the presented algorithm is more accurate than the benchmarks of extended Kalman filter tracking, and positioning using least squares.
机译:基于范围的定位和跟踪方法使用了移动站和几个基站之间的到达时间(TOA),但是非视距信道的多径传播使估计和处理变得复杂。对于通道建模,据报道,高斯散射体分布模型在其TOA概率密度分布(PDF)与测得的TOA数据之间具有合理的匹配。在本研究中,此TOA PDF以及从移动站的多个运动模型中进行选择的过程都适用于新的定位和跟踪算法。由于TOA PDF是非高斯的,并且是移动设备位置的非线性函数,因此使用了粒子滤波,这增加了算法的复杂性。重点在于跟踪性能,这是通过使用理想化的统计渠道进行仿真来评估的,从而可以直接比较不同的定位算法。在这种情况下,提出的算法比扩展的卡尔曼滤波器跟踪基准和使用最小二乘法定位的基准更加准确。

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  • 来源
    《Communications, IET》 |2013年第18期|2034-2043|共10页
  • 作者单位

    Department of Electrical and Computer Engineering, University of Toronto, Toronto, ON, Canada|c|;

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  • 正文语种 eng
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