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Modified MM Algorithm and Bayesian Expectation Maximization-Based Robust Localization Under NLOS Contaminated Environments

机译:在NLOS受污染环境下修改的MM算法和贝叶斯期望基于最大化的鲁棒本地化

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摘要

Robust localization methods that employ distance measurements to predict the position of an emitter are proposed in this paper. The occurrence of outliers due to the non-line-of sight (NLOS) propagation of signals can drastically degrade the localization performance in crowded urban areas and indoor situations. Hence, robust positioning methods are considered to mitigate the effects of outliers. Specifically, localization methods based on robust statistics are considered. Modified multi-stage ML-type method (MM) based weighted least squares (WLS), maximum a posteriori (MAP) expectation maximization (EM) WLS and variational Bayes (VB) EM WLS algorithms are developed under various outlier-contaminated environments. Simulation results show that the position estimation accuracy of the proposed modified MM WLS method, which uses the novel weight, is higher than that of the other methods under most outlier-contaminated conditions. Furthermore, the MAP-EM WLS and VB-EM WLS methods are the most accurate among algorithms that do not require statistical testing. Additionally, the mean square error (MSE) and asymptotic unbiasedness of the proposed algorithms are analyzed.
机译:本文提出了采用距离测量来预测发射器的位置的鲁棒定位方法。由于非界面的视线(NLOS)传播而导致的异常值可能会急剧地降低拥挤的城市地区和室内情况的本地化性能。因此,稳健定位方法被认为是减轻异常值的影响。具体地,考虑基于鲁棒统计的本地化方法。修改的多级ML型方法(MM)加权最小二乘(WLS),最大<斜体XMLNS:mml =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http: //www.w3.org/1999/xlink"> psertiori (地图)期望最大化(EM)和变分贝叶斯(VB)EM WLS算法在各种异常污染的环境下开发。仿真结果表明,采用新重量的提出的改性MM WLS方法的位置估计精度高于大多数异常污染条件下的其他方法的位置估计精度。此外,地图-EM WLS和VB-EM WLS方法是不需要统计测试的算法中最准确的。另外,分析了所提出的算法的平均误差(MSE)和渐近的非偏见。

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