A reduced-rank approach to adaptive linearly constrained minimum variance beamforming based on joint iterative optimization of adaptive filters

R. D. de Lamare, M. Lowe
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引用次数: 1

Abstract

This paper presents a low-complexity reduced-rank approach to adaptive linearly constrained minimum variance (LCMV) beamforming. The proposed reduced-rank scheme is based on a constrained joint iterative optimization of adaptive filters according to the minimum variance criterion. The constrained joint iterative optimization procedure adjusts the parameters of a bank of full-rank adaptive filters that forms the projection matrix and an adaptive reduced-rank filter that operates at the output of the bank of filters. We describe LCMV expressions for the design of the projection matrix and the reduced-rank filter and low-complexity stochastic gradient adaptive algorithms for their efficient implementation. Simulations for a beamforming application show that the proposed scheme outperforms in convergence and tracking the state-of-the-art existing reduced-rank schemes with significantly lower complexity.
基于自适应滤波器联合迭代优化的自适应线性约束最小方差波束形成降阶方法
提出了一种低复杂度降阶自适应线性约束最小方差波束形成方法。该降阶方案基于自适应滤波器的约束联合迭代优化,并根据最小方差准则进行优化。约束联合迭代优化过程调整形成投影矩阵的一组全秩自适应滤波器和在滤波器组输出处运行的自适应降秩滤波器的参数。我们描述了投影矩阵设计的LCMV表达式,以及有效实现的降阶滤波器和低复杂度随机梯度自适应算法。波束形成应用的仿真表明,该方案在收敛和跟踪方面优于现有的最先进的降阶方案,且复杂度显著降低。
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