基于稀疏贝叶斯学习的部分校准阵列测向

Yihan Su, Guangbin Zhang, Tianyao Huang, Yimin Liu, Xiqin Wang
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引用次数: 0

摘要

部分标定阵的测向是一种存在子阵间误差的分布式阵,受到了广泛的研究。近年来,稀疏恢复被用于利用信号的块和秩稀疏性来自校正误差和恢复方向,取得了良好的性能。与传统的基于子空间分离的方法相比,稀疏恢复方法对少量快照和相关源的敏感性较低。然而,现有的稀疏恢复方法解决的是一个复杂的半确定规划问题,具有很高的时间和空间复杂度。在SBL框架下,提出了一个误差自校正的稀疏恢复问题,并推导出了求解该问题的封闭迭代。仿真结果表明,该方法具有可行性,并且比现有的稀疏恢复方法具有更小的时间复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Direction Finding in Partly Calibrated Arrays Using Sparse Bayesian Learning
Direction finding in partly calibrated arrays, a distributed array with errors between subarrays, receives wide studies. Recently, sparse recovery is used to exploit the blockand rank- sparsity of the signals to self-calibrate the errors and recover the directions, which achieves good performance. Compared with traditional methods based on subspace separation, sparse recovery methods are less sensitive to few snapshots and correlated sources. However, existing sparse recovery methods solve a complex semi-definite programming (SDP) problem, which suffers from high time and space complexity. To this end, we consider to introduce sparse Bayesian learning (SBL) to partly calibrated arrays instead. In a SBL framework, we formulate a sparse recovery problem with self-calibration on errors, and derive the closed-form iterations to solve the problem. Simulations show the feasibility of our proposed method and less time complexity than existing sparse recovery methods.
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