基于逆QR分解的自适应波束形成方法

T. Ogunfunmi, Zhuobin Chen
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引用次数: 0

摘要

将基于逆qr的分解算法应用于自适应波束形成。逆QR算法采用正交旋转操作来更新滤波器权值,从而保持了QR法求解递推最小二乘(RLS)问题的固有稳定性。波束形成器的权向量以递归方式更新,同时避免了QR算法解决RLS估计问题所需的高度串行反向替换步骤。而且,逆QR算法的逆Cholesky因子总是满秩的,而正QR算法的逆Cholesky因子可能是缺秩的。我们已经演示了逆QR算法在有约束(以及无约束)自适应滤波应用(如自适应波束形成)中的效用,通过修改该应用中算法所需的递归更新。仿真结果表明,逆QR算法既具有基于rls算法的快速初始收敛性,又保持了正交旋转方法的长期稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A method for adaptive beamforming based on an inverse QR decomposition
The inverse QR-based decomposition algorithm is applied to adaptive beamforming. The inverse QR algorithm employs orthogonal rotation operations to update the filter weights thereby preserving the inherent stability properties of the QR method for solving the recursive least squares (RLS) problem. The weight vector for the beamformer is updated in a recursive way while avoiding the highly serial backsubstitution step required in the QR algorithm for solving the RLS estimation problem. Furthermore, the inverse Cholesky factor of the inverse QR algorithm is always a full rank while the Cholesky factor of the direct QR algorithm may be of deficient rank. We have demonstrated the utility of the inverse QR algorithm in constrained (as well as unconstrained) adaptive filtering applications such as adaptive beamforming by modifying the recursive updates required in the algorithm for this application. Simulation results show that the inverse QR algorithm possesses rapid initial convergence typical of RLS-based algorithms and also maintains the long-term stability properties of the orthogonal rotation methods.<>
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