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Joint Frequency and Time Estimation Algorithms

机译:联合频率和时间估计算法

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摘要

In this paper, we present six subspace decomposition based methods for joint time of arrival (TOA) and frequency of arrival (FOA) estimation of multiple incident sources. These are LU-TLS, QR-TLS, direct TSQR-TLS, direct TSLU-TLS, parallel TSQR-TLS, and parallel TSLUTLS. The direct and parallel TSQR/TSLU-TLS are recently developed methods in subspace decomposition and are employed in this work for time and frequency estimation. The proposed methods employ a pair of spatially separated sensors to receive multiple incident source signals. A data matrix is constructed in the form of a Hankel matrix from multiple snapshots of the received signal. The information of both TOA and FOA of multiple incident sources is extracted from the data matrix by applying LU/QR techniques (in the first set of the methods) and a tall skinny TSLU/TSQR factorization in the second set. The estimates of the TOA and FOA are obtained from the signal subspace by applying the total least squares (TLS) method. Simulation results are presented to assess the performance of the proposed methods. The effect of parametric variations on the performance has also been analyzed for all the proposed methods. Further, the computational times and complexities of the proposed methods are also computed and compared with each other.
机译:本文介绍了六个基于子空间分解的方法,用于到达的联合时间(TOA)和多次入射源的到达频率和到达频率(FOA)估计。这些是LU-TLS,QR-TLS,直接TSQR-TLS,直接TSLU-TLS,并联TSQR-TLS和并联TSLUTL。最近直接和并行TSQR / TSLU-TLS在本空间分解中开发了方法,并在这项工作中采用时间和频率估计。所提出的方法采用一对空间分离的传感器来接收多个入射源信号。数据矩阵以来自接收信号的多个快照的Hankel矩阵的形式构成。通过在第二组中应用LU / QR技术(在第一组方法中)和高瘦的TSLU / TSQR分解,从数据矩阵中提取多种入射源的TOA和FOA的信息。通过应用总量最小二乘(TLS)方法,从信号子空间获得TOA和FOA的估计。提出了仿真结果评估了所提出的方法的性能。参数变化对所有所提出的方法也已经分析了性能的影响。此外,还计算所提出的方法的计算时间和复杂性并彼此比较。

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