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Direction of arrival estimation using weighted subspace fitting with unknown number of signal sources

机译:使用加权子空间拟合的未知方向信号源估计到达方向

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In this paper, we propose a new approach on DOA estimation under the number of signal sources is unknown. This can be applicable even to the case of fully correlated sources for which existing algorithms such as AIC and MDL are not workable. AIC and MDL are well-known “information theoretic criterion” algorithms for estimating the number of sources observed by a direction finding array. In the proposed approach, the computational complexity for determining the source number is remarkably reduced by performing the estimation of DOAs and detection of the number of signals simultaneously. In addition, it can be applied to any geometry of array including ULA. The performance of the proposed approach is demonstrated using a numerical simulation. Results show that the probability of correct classification (PCC) of the number of incoming sources is satisfactory in most of simulations. Especially, the PCC of the approach for incoherent and coherent signals under the condition of two signals is very high so that it can classify signal sources reliably (i.e., accuracy ≫ 90%) at the SNR above 2 dB.
机译:在本文中,我们提出了一种在信号源数量未知的情况下进行DOA估计的新方法。这甚至适用于完全相关的源的情况,对于这些源,现有算法(例如AIC和MDL)不可行。 AIC和MDL是众所周知的“信息理论标准”算法,用于估计测向阵列观测到的震源数量。在所提出的方法中,通过同时进行DOA的估计和信号数量的检测,显着降低了确定源数量的计算复杂度。另外,它可以应用于包括ULA在内的任何阵列几何形状。使用数值模拟证明了所提出方法的性能。结果表明,在大多数模拟中,对传入源的数量进行正确分类(PCC)的概率令人满意。特别地,在两个信号的情况下,用于非相干和相干信号的方法的PCC非常高,使得它可以在SNR高于2 dB时可靠地对信号源进行分类(即,精度≥90%)。

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