A DOA Estimation Method in the presence of unknown mutual coupling based on Nested Arrays

Julan Xie, Fanghao Cheng, Zishu He, Huiyong Li
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引用次数: 0

Abstract

A novel DOA method is proposed to deal with the DOA estimation in the presence of the unknown mutual coupling for nested arrays. By using a new expression of the steering matrix in the presence of mutual coupling, a novel expression of the receiving data vector in the virtual array field is available. Then, based on a modified direction matrix constructed with block matrix, which relates to space discretized sampling grid, the sparse Bayesian compressive sensing method applies to estimate a vector, which contains the signal powers information and the mutual coupling information. The problem of off-grid DOAs is also considered for sparse Bayesian compressive sensing. Based on the estimated vector, a peak searching is performed to estimate the initial DOA. Finally, the estimation of DOA is modified to initial estimate plus off-grid error value. The advantage of fully utilizing the degree of freedom of nested arrays is preserved in this proposed algorithm. Moreover, no complicated calculation is needed to obtain the mutual coupling coefficients or rearrange the position of array element. Theoretical analysis and simulation results show the effectiveness of the proposed algorithm.
基于嵌套数组的未知互耦DOA估计方法
针对嵌套阵列存在未知互耦时的DOA估计问题,提出了一种新的DOA估计方法。在相互耦合的情况下,利用导向矩阵的新表达式,得到了虚拟阵列场中接收数据向量的新表达式。然后,基于与空间离散采样网格相关的块矩阵构造的改进方向矩阵,应用稀疏贝叶斯压缩感知方法估计一个包含信号功率信息和互耦信息的向量;稀疏贝叶斯压缩感知还考虑了离网DOAs问题。在估计矢量的基础上,进行峰值搜索来估计初始DOA。最后,将DOA估计修正为初始估计加离网误差值。该算法保留了充分利用嵌套数组自由度的优点。此外,不需要复杂的计算来获得相互耦合系数或重新排列阵列元素的位置。理论分析和仿真结果表明了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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