用单矢量水听器估计信号的二维DOA联合频率

Guolong Liang, Ke Zhang, Jin Fu, Wei-qun Ma
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引用次数: 0

摘要

在单矢量水听器的基础上,利用延时数据构造了两个相同阵的子矩阵,构成了信号数据矩阵。在LS-ESPRIT的基础上,对信号数据矩阵进行一次特征值分解,得到包含频率和角度信息的特征值和对应的特征向量,实现了对窄带信号的二维DOA和频率联合估计。该方法具有较好的估计精度,不需要任何搜索过程,可自动实现三维参数匹配。与基于单矢量水听器的DOA矩阵方法和基于声压阵列的LS-ESPRIT方法进行了比较,结果表明该方法具有更好的估计性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of 2-D DOA joint frequency of signal via a single vector hydrophone
Based on a single vector hydrophone, two sub-matrix of the same formation which formed signal data matrix was constructed by delayed time data. On the basis of LS-ESPRIT, the signal data matrix was decomposed by one eigenvalue decomposition to get its eigenvalues and corresponding eigenvectors, which included the information of frequency and angle, so two-dimensional DOA and frequency joint estimation was realized for narrow-band signal. This method had better estimation accuracy, which didn't need any search procedure, the three-dimensional parameter matching was automatically achieved by this method. Compare with DOA matrix method via a single vector hydrophone and LS-ESPRIT method via acoustic pressure array by MATLAB, the results showed that this method have better estimation performance.
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