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A Marginalized Likelihood Ratio Approach for detecting and estimating multipath biases on GNSS measurements

机译:一种用于检测和估计GNSS测量上的多径偏差的边际似然比方法

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In urban canyons, non-line-of-sight (NLOS) multipath interferences affect position estimation based on Global Navigation Satellite Systems (GNSS). In this paper, the effects of NLOS multipath interferences are modeled as mean value jumps appearing on the GNSS pseudo-range measurements. The Marginalized Likelihood Ratio Test (MLRT) is proposed to detect, identify and estimate the NLOS multipath biases. However, the MLRT test statistics is generally difficult to compute. In this work, we consider a Monte Carlo integration technique based on bias magnitude sampling. The Jensen inequality allows this Monte Carlo integration to be simplified. The interacting multiple model algorithm is also used to update the prior information for each bias magnitude sample. Finally, some strategies are designed for estimating and correcting the NLOS multipath biases. Simulation results show that the proposed approach can effectively improve the positioning accuracy in the presence of NLOS multipath interferences.
机译:在城市峡谷中,非视距(NLOS)多径干扰会影响基于全球导航卫星系统(GNSS)的位置估计。在本文中,将NLOS多径干扰的影响建模为GNSS伪距测量中出现的平均值跳跃。提出了边缘化似然比检验(MLRT),以检测,识别和估计NLOS多径偏差。但是,MLRT测试统计信息通常很难计算。在这项工作中,我们考虑了基于偏差幅度采样的蒙特卡洛积分技术。詹森不等式使这种蒙特卡洛积分得以简化。交互多模型算法还用于更新每个偏差量样本的先验信息。最后,设计了一些策略来估计和纠正NLOS多径偏差。仿真结果表明,在存在NLOS多径干扰的情况下,该方法可以有效地提高定位精度。

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