Self-adapting root-MUSIC algorithm and its real-valued formulation for acoustic vector sensor array

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Abstract

In this paper, based on the root-MUSIC algorithm for acoustic pressure sensor array, a new self-adapting root-MUSIC algorithm for acoustic vector sensor array is proposed by self-adaptive selecting the lead orientation vector, and its real-valued formulation by Forward-Backward(FB) smoothing and real-valued inverse covariance matrix is also proposed, which can reduce the computational complexity and distinguish the coherent signals. The simulation experiment results show the better performance of two new algorithm with low Signal-to-Noise (SNR) in direction of arrival (DOA) estimation than traditional MUSIC algorithm, and the experiment results using MEMS vector hydrophone array in lake trails show the engineering practicability of two new algorithms. © 2012 Wang et al; licensee Springer.

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Wang, P., Zhang, G. J., Xue, C. Y., Zhang, W. D., & Xiong, J. J. (2012). Self-adapting root-MUSIC algorithm and its real-valued formulation for acoustic vector sensor array. Eurasip Journal on Advances in Signal Processing, 2012(1). https://doi.org/10.1186/1687-6180-2012-228

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