高阶BOC信号采集阶段的多滞后频率估计

David Gómez-Casco, E. Lohan, J. López-Salcedo, G. Seco-Granados
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引用次数: 1

摘要

在全球卫星导航系统的背景下,本文研究了在采集阶段对高阶二进制偏置载波(BOC)信号进行后相关处理时提供的多普勒频率估计的改进问题。由于从采集阶段获得的估计通常不够精确,无法跟踪跟踪阶段的信号,因此必须进行多普勒频率的细化。在这项工作中,我们只使用在获取阶段创建的交叉模糊函数(CAF)来执行细化。最小二乘估计已经被用来缓解这个问题。我们提出了一种新的技术,称为多滞后最小二乘估计器,它通过利用高阶BOC信号的自相关形状来提高最小二乘估计器的性能。此外,还推导了Cramer-Rao界和期望Cramer-Rao界作为比较最小二乘估计和多滞后最小二乘估计性能的基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilag frequency estimation for high-order BOC signals in the acquisition stage
In the context of global navigation satellite systems, this paper addresses the problem of refining the Doppler frequency estimation provided in the acquisition stage for highorder binary offset carrier (BOC) signals in post-correlation. The refinement of Doppler frequency must be done because the estimation obtained from the acquisition stage is not usually accurate enough to track the signal in the tracking stage. In this work, we only use the cross-ambiguity function (CAF) created in the acquisition stage to perform the refinement. A least squares estimator has been already applied to mitigate this problem. We propose a new technique, referred to as multilag least squares estimator, which improves the performance of the least squares estimator by exploiting the autocorrelation shape of high-order BOC signals. Moreover, the Cramer-Rao bound and the expected Cramer-Rao bound are derived as benchmark to compare the performance of the least squares and multilag least squares estimators.
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