Robust DOA Estimation of Complex Correlated Signals in Non-Gaussian CES Distributed Models
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Abstract
The sample covariance matrix (SCM) is commonly used in DOA estimation methods when the noise or observations are circular complex Gaussian(C CG) distributed. However, with a very heavy-tailed non-Gaussian noise model, the SCM-based Direction-of-arrival (DOA) estimation methods fail to provide an accurate estimate of DOA. This paper presents a numerical analysis of the resolving capability of subspace-based circular (C) and non-circular (NC) MUSIC DOA estimation methods of arbitrarily narrowband correlated signal sources corrupted by circular complex elliptical symmetric (C CES) distributed noise. It evaluates the robustness of these methods for correlated C and NC sources by employing the robust complex M-estimators instead of SCM. It study also the effects of correlation on robust MUSIC-based DOA estimation algorithms accuracy as a function of the magnitude and phase of the correlation coefficients. Simulations results show that the NC MUSIC algorithm which requires fewer sensor elements yields robust estimates of DOA for correlated sources than the C MUSIC algorithm using the M-estimators.
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