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Performance analysis of time frequency subspace based direction finding algorithms in presence of perturbed array manifold

机译:基于时间频率子空间的扰动阵列歧管存在的时间频率子空间的性能分析

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Conventional subspace based direction finding approaches such as MUSIC and ESPRIT algorithms commonly use the array data covariance matrix. In non stationary context, the use of the Spatial Time-Frequency Distribution (STFD) instead of the covariance matrix can significantly improve the performance of such algorithms. In this paper we are interested in the performance analysis of such approaches in the presence of both additive noise and perturbed array manifold. An unified expression of the Direction Of Arrival (DOA) error estimation is derived for both approaches. The obtained results show that for low Signal to Noise Ratio (SNR) and high Signal to Sensor Perturbation Ratio (SPR) the STFD based DOA estimations perform better, while for high SNR and for the same SPR both Covariance and STFD based approaches have similar performance.
机译:基于传统的基于子空间的方向查找诸如音乐和esprit算法之类的方法,通常使用阵列数据协方差矩阵。在非静止背景下,使用空间时频分布(STFD)代替协方差矩阵可以显着提高这种算法的性能。在本文中,我们对在附加噪声和扰动阵列歧管的存在下对这些方法的性能分析感兴趣。对于两种方法导出到达方向(DOA)误差估计的统一表达。所得结果表明,对于低信噪比(SNR)和高信号传感器扰动比(SPR),基于STFD的DOA估计表现更好,而对于高SNR和同样的SPR两种协方差和STFD的方法都具有类似的性能。

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