Mitigation of leverage observation effects in GNSS robust positioning

A. Angrisano, S. Gaglione
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引用次数: 1

Abstract

Nowadays GNSSs are the most commonly used systems for localization; they are able to provide user absolute position with metric accuracy in benign environment, i.e. in scenarios without significant obstacles surrounding the user. On the other hand, in harsh scenarios GNSS performance are degraded, owing to the shortage of available measurements and/or to the presence of blunders among them. The blunder issue is usually addressed through RAIM techniques or robust estimation; the latter approach demonstrates often better performance, but suffers anyway the cases of multiple blunders and low redundancy. M-estimators, a particular class of robust estimators, are based on the minimization of functions of least squares residuals. A possible way to strengthen a M-estimator is to take into account for leverage observations, defined as measurements with high potential to affect estimation results. In this work, the Huber M-estimator is adapted to include information about leverage observations and is used to process GPS measurements, collected in harsh environment. The obtained results are very promising, with position errors reduction even beyond 50% with respect to classical Huber method.
GNSS稳健定位中杠杆观测效应的缓解
目前,gnss是最常用的定位系统;它们能够在良性环境中为用户提供具有度量精度的绝对位置,即在用户周围没有明显障碍物的情况下。另一方面,在恶劣的情况下,由于缺乏可用的测量和/或其中存在错误,GNSS性能会下降。错误问题通常通过RAIM技术或鲁棒估计来解决;后一种方法通常表现出更好的性能,但无论如何都会出现多次错误和低冗余的情况。m估计量是一类特殊的鲁棒估计量,它基于最小二乘残差函数的最小化。加强m估计器的一种可能的方法是考虑杠杆观察,杠杆观察被定义为对估计结果有很大影响的测量。在这项工作中,Huber m估计器适应于包括杠杆观测信息,并用于处理在恶劣环境中收集的GPS测量。得到的结果非常有希望,与经典的Huber方法相比,位置误差降低了50%以上。
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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