Calibrating nested sensor arrays with model errors

IEEE Transactions on Antennas and Propagation(2015)

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摘要
We consider the problem of direction of arrival (DOA) estimation based on a nonuniform linear nested array which can provide O(N2) degrees of freedom using only N sensors. Both subspace-based and sparsity-based algorithms require certain modeling assumptions, for example, exact known array geometry, including sensor gain and phase. In practice, however, the actual sensor gain and phase are often perturbed from their nominal values, which results in failure of the existing DOA estimation algorithms. In this paper, we investigate the self-calibration problem for perturbed nested arrays, proposing corresponding robust algorithms to estimate both the model errors and the DOAs. The partial Toeplitz structure of the covariance matrix is employed to estimate the gain errors, and the sparse total least squares is used to deal with the phase error issue. Additionally, for the first time, we extend the proposed approaches to calibrate general non-uniform linear arrays. Numerical examples are provided to verify the effectiveness of the proposed strategies.
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关键词
sparsity-based algorithm,sparse,calibration,array geometry,doa estimation,general nonuniform linear arrays,gain error estimation,model error,o(n2) degree-of-freedom,sensor gain,covariance matrices,self-calibration problem,toeplitz,direction of arrival estimation,array signal processing,least squares approximations,nonuniform linear nested array,calibrating nested sensor arrays,nested array,direction-of-arrival estimation,total least squares,sparse total least squares,subspace-based algorithm,perturbed nested arrays,model error estimation,partial toeplitz structure,nominal value,covariance matrix
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