Research on the Algorithm of Nonuniform Compressive Sensing in DOA

Xuerong Cui, B. Guo, Haihua Chen, Yucheng Zhang, Shibao Li, Xiaochen Lian
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Abstract

Direction of Arrival (DOA) estimation is one of the most fundamental problems in array signal processing, and it is widely used in many fields such as radar, sonar, and communications. This paper uses Compressed Sensing (CS) technology to focus on DOA estimation. Aiming at the problems caused by fewer snapshots in the practical application of DOA estimation, a Nonuniform Overcomplete Dictionary (NUOD) combining initialization space is proposed. In addition, the new DOA estimation algorithm of Orthogonal Match Pursuit (OMP) is improved by a Genetic Algorithm (GA). Furthermore, in order to improve the performance of DOA estimation of CS technology, the following three improvements are proposed. (1) Make full use of the Estimation of Signal Parameters via Rotational Invariance Techniques (ESPRIT) to determine the initialization point and then determine the scope of the initialization space according to the Crame’r–Rao bound (CRB). (2) Aiming at a large amount of calculation, the algorithm can realize the nonuniform over-complete dictionary design of the popular array matrix according to the sparse representation of the partition of the initialization space. (3) To further improve the algorithm’s performance, the nonuniform over-complete dictionary design is combined with the processing flow of the GA improved OMP algorithm. The simulation results prove that the method in this paper has the advantages of less computing time, low estimation error, and wide application range.
DOA中非均匀压缩感知算法研究
DOA估计是阵列信号处理中最基本的问题之一,在雷达、声纳、通信等领域有着广泛的应用。本文采用压缩感知(CS)技术来进行DOA估计。针对DOA估计在实际应用中由于快照数量少而产生的问题,提出了一种结合初始化空间的非均匀过完备字典(NUOD)。此外,利用遗传算法对正交匹配追踪(OMP)的DOA估计算法进行了改进。此外,为了提高CS技术的DOA估计性能,本文提出了以下三点改进。(1)充分利用旋转不变性技术估计信号参数(ESPRIT)确定初始化点,然后根据Crame’r - rao界(CRB)确定初始化空间的范围。(2)针对计算量大的问题,该算法根据初始化空间划分的稀疏表示,实现了流行数组矩阵的非均匀过完备字典设计。(3)为了进一步提高算法的性能,将非均匀过完备字典设计与GA改进的OMP算法的处理流程相结合。仿真结果表明,该方法具有计算时间短、估计误差小、适用范围广等优点。
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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