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DoA Estimation in the Presence of Mutual Coupling Using Root-MUSIC Algorithm

机译:使用root-music算法在相互耦合存在下的DOA估计

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The effect of unknown mutual coupling in receiving array seriously degrades the performance of direction-of-arrival (DoA) estimation algorithms. In order to compensate this effect, this paper develops an auto-calibration method for the uniform linear array (ULA) based on Root-MUltiple SIgnal Classification (MUSIC) algorithm. The proposed method can estimate the DoAs of the received signal and mutual coupling coefficients using the subspace principle without using any calibration source. Moreover, it can reduce computational complexity due to analytically estimating DoA without any spectrum search. In this paper, Monte-Carlo simulation is used to elucidate the errors in DoA and coupling parameter estimation. Cramer-Rao lower bound (CRB) is also presented to support the estimation results. Simulation results illustrate that the proposed Friedlander & Weiss (F&W) Root-MUSIC method efficiently estimates the DoA and mutual coupling coefficients, and also the performance of F&W Root-MUSIC is better than F&W MUSIC algorithm's.
机译:未知相互耦合在接收阵列中的影响严重降低了到达方向(DOA)估计算法的性能。为了补偿这种效果,本文基于根多信号分类(音乐)算法,为均匀线性阵列(ULA)开发了一种自动校准方法。所提出的方法可以在不使用任何校准源的情况下估计使用子空间原理的接收信号和相互耦合系数的DOA。此外,由于在没有任何频谱搜索的情况下,它可以降低由于分析估计DOA而导致的计算复杂性。在本文中,Monte-Carlo仿真用于阐明DOA中的误差和耦合参数估计。还提出了Cramer-Rao下限(CRB)以支持估计结果。仿真结果表明,建议的弗里德兰德(F&W)root-Music方法有效地估计了DOA和互联耦合系数,以及F&W根音乐的性能优于F&W音乐算法。

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