Further results on the Cramér–Rao bound for sparse linear arrays

M Wang, Z Zhang, A Nehorai - IEEE Transactions on Signal …, 2019 - ieeexplore.ieee.org
IEEE Transactions on Signal Processing, 2019ieeexplore.ieee.org
Sparse linear arrays, such as co-prime and nested arrays, can identify up O (M 2)
uncorrelated sources with only O (M) sensors by utilizing their difference coarray model. In
our previous work, we derived closed-form asymptotic mean-squared error (MSE)
expressions for two coarray based MUSIC algorithms and analyzed the Cramer-Rao bound
(CRB) in high signal-to-noise ratio (SNR) regions, under the assumption of uncorrelated
sources. In this paper, we provide further analysis of the CRB presented in our previous …
Sparse linear arrays, such as co-prime and nested arrays, can identify up O(M 2 ) uncorrelated sources with only O(M) sensors by utilizing their difference coarray model. In our previous work, we derived closed-form asymptotic mean-squared error (MSE) expressions for two coarray based MUSIC algorithms and analyzed the Cramer-Rao bound (CRB) in high signal-to-noise ratio (SNR) regions, under the assumption of uncorrelated sources. In this paper, we provide further analysis of the CRB presented in our previous work. We first establish the connection between two CRBs, the CRB derived with the assumption that the sources are uncorrelated, and the classical stochastic CRB derived without this assumption. We show that they are asymptotically equal in high SNR regions for uncorrelated sources. Next, we analyze the behavior of the former CRB for co-prime and nested arrays with a large number of sensors. We investigate the effect of configuration parameters on this CRB. We show that, for co-prime and nested arrays, this CRB can decrease at a rate of O(M -5 ) for large values of M, while this rate is only O(M -3 ) for an M-sensor ULA. This finding analytically demonstrates that co-prime and nested arrays can achieve better asymptotic estimation performance when the number of sensors is a limiting factor. We also show that for a fixed aperture, co-prime and nested arrays require more snapshots to achieve the same performance as ULAs, showing the tradeoff between the number of spatial samples and the number of temporal samples. Finally, we demonstrate our analytical results with numerical experiments.
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