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Sparse Spatial and Temporal Estimation for Multipath Mitigation in GNSS

机译:GNSS中多径缓解的稀疏时空估计

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The multipath signals will degrade the tracking performance and increase the positioning errors of the Global Navigation Satellite System (GNSS). Superior multipath mitigation can be obtained by jointly estimating the angles of arrival and delays of both the line of sight signal and the multipath signals. In to do so, this paper proposes the use of the multiple Bayesian learning (MSBL) method together with the joint angle and delay estimation technique in GNSS multipath scenarios. Moreover, to further enhance the resolution, off-grid estimation is adopted to delay while on-grid estimation is kept for angle to reduce the complexity. Simulation results are presented to evaluate the performance of the proposed joint on-grid angle and off-grid delay estimation based on MSBL algorithm under several multipath scenarios and it is shown to outperform existing methods even in the most difficult cases of spatially correlated multipath signals and low carrier-to-noise ratio.
机译:多径信号将降低跟踪性能,并增加全球导航卫星系统(GNSS)的定位误差。可以通过联合估计视线信号和多径信号的到达角度和延迟角度来获得出色的多径缓解效果。为此,本文提出在GNSS多路径场景中使用多重贝叶斯学习(MSBL)方法以及联合角度和延迟估计技术。而且,为了进一步提高分辨率,采用离网估计来延迟,同时保持对角度的并网估计以降低复杂度。给出了仿真结果,以评估在多个多径情况下基于MSBL算法的联合并网角和离网时延估计的性能,即使在最困难的空间相关多径信号情况下,仿真结果也优于现有方法。载噪比低。

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