Joint Estimation of Mutual Coupling and Direction of Arrival for 2D Sparse Arrays using CMA-ES

2023 IEEE International Symposium on Antennas and Propagation and USNC-URSI Radio Science Meeting (USNC-URSI)(2023)

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摘要
2D sparse arrays have better performance than uniformly-spaced arrays with the same number of elements when applied in direction of arrival (DOA) estimation problems. In practice, when these elements are closely spaced, mutual coupling effects distort the commonly assumed spatial model and compromise the standard DOA techniques. If the exact mutual coupling matrix (MCM) is not known a priori, the MCM and DOAs must be jointly estimated. This results in a difficult, nonlinear optimization problem. Nature inspired algorithms have been shown to be effective in complex electromagnetic optimization problems including 1D sparse array problems for DOA estimation. In this paper, covariance matrix adaptation evolution strategy (CMA-ES) is used to jointly compensate for mutual coupling and estimate direction of arrival for 2D sparse arrays. Results for a nested sparse array configuration are presented.
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关键词
1D sparse array problems,2D sparse arrays,CMA-ES,commonly assumed spatial model,complex electromagnetic optimization problems,difficult optimization problem,DOA estimation,exact mutual coupling matrix,joint estimation,mutual coupling effects,nested sparse array configuration,nonlinear optimization problem,standard DOA techniques,uniformly-spaced arrays
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