Electronics Optics & Control, Volume. 29, Issue 4, 37(2022)
A DOA Estimation Algorithm Based on Off-Grid Sparse Bayesian Learning in Improved Nested Sparse Circular Array
The existing DOA estimation methods based on Nested Sparse Circular Arrays (NSCA) suffer from high computational complexity and the difficulty in fast selecting of super parameters.To solve the problemsan Off-Grid Sparse Bayesian Learning (OGSBL) method based on the improved NSCA is proposed.The covariance matrix of the received signals of the improved NSCA is vectorizedand an extended observation matrix is constructed.Thenthe under-determined DOA estimation is realized by using the off-grid model and the Sparse Bayesian Learning (SBL) algorithm.The simulation results show that the proposed algorithm reduces computational complexitythe super parameters of the model can be adjusted adaptivelyand the performance of the proposed algorithm is better than that of the DOA estimation algorithms based on the original NSCA and the traditional uniform circular arrays under the conditions of low SNRsmall snapshots and multiple sources.
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SHI Xinlei, ZHANG Zhenkai. A DOA Estimation Algorithm Based on Off-Grid Sparse Bayesian Learning in Improved Nested Sparse Circular Array[J]. Electronics Optics & Control, 2022, 29(4): 37
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Received: Mar. 13, 2021
Accepted: --
Published Online: Apr. 22, 2022
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