弱DS-SS信号的PN序列估计与跟踪

Tianqi Zhang, Shao-sheng Dai, Liufei Yang, Xuesong Li
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引用次数: 8

摘要

提出了一种改进的Sanger广义Hebbian神经网络方法来估计和跟踪弱直接序列扩频信号的伪噪声序列。该方法基于接收信号的特征分析。首先对接收到的信号进行采样,并根据时间窗将其分割为不重叠的信号矢量,时间窗的持续时间为PN序列的一个周期。然后计算一个自相关矩阵,将这些信号向量逐个累加。最后利用矩阵的主特征向量对伪噪声序列进行估计和跟踪。针对估计的伪噪声序列变长或估计的伪噪声序列时变时特征分析方法效率低下的问题,采用改进的Sanger广义Hebbian神经网络自适应有效地实现了对弱输入信号的伪噪声序列的估计和跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimate and Track the PN Sequence of Weak DS-SS Signals
This paper proposes a modified Sanger's generalized Hebbian neural network method to estimate and track the pseudo noise sequence of weak direct sequence spread spectrum signals. The proposed method is based on eigen-analysis of received signals. The received signal is firstly sampled and divided into non-overlapping signal vectors according to a temporal window, which duration is a periods of PN sequence. Then an autocorrelation matrix is computed and accumulated by these signal vectors one by one. The pseudo noise sequence can be estimated and tracked by the principal eigenvector of the matrix in the end. Because the eigen-analysis method becomes inefficiency when the estimated pseudo noise sequence becomes longer or the estimated pseudo noise sequence becomes time varying, we use a modified Sanger's generalized Hebbian neural network to realize the pseudo noise sequence estimation and tracking from weak input signals adaptively and effectively.
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