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Closely spaced multipath mitigation in GNSS receiver based on maximum likelihood estimation

机译:基于最大似然估计的GNSS接收机中的近距离多径缓解

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Multipath is the dominant source of positioning error in modern GNSS receiver. Maximum likelihood (ML) parameter estimation is an optimal method to mitigate the multipath effects while ML involves nonlinear optimization and requires iterative algorithms. Iterative methods usually lack of global convergence when the paths are closely spaced, if the initial value is arbitrarily assigned. In this paper, however, we first employ a grid search method to choose the initial value before iteration. Most computation of the grid search can be done offline. After that, an iterative method with simple forms is used to improve the parameter accuracy and global convergence can be achieved with just a few iterations. The simulations results show the estimator of time delay is almost unbiased when the time relative delay of two paths is larger than 0.20 chips.
机译:在现代GNSS接收机中,多径是定位误差的主要来源。最大似然(ML)参数估计是减轻多径效应的最佳方法,而ML涉及非线性优化,并且需要迭代算法。如果初始值是任意指定的,则迭代方法通常在路径间隔很近时缺乏全局收敛性。但是,在本文中,我们首先采用网格搜索方法在迭代之前选择初始值。网格搜索的大多数计算都可以离线完成。之后,使用简单形式的迭代方法来提高参数精度,并且只需几次迭代就可以实现全局收敛。仿真结果表明,当两条路径的时间相对延迟大于0.20码片时,时间延迟估计量几乎是无偏的。

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