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首页> 外文期刊>IEEE Transactions on Antennas and Propagation >Adaptive linearly constrained inverse QRD-RLS beamforming algorithm for moving jammers suppression
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Adaptive linearly constrained inverse QRD-RLS beamforming algorithm for moving jammers suppression

机译:自适应线性约束逆QRD-RLS波束成形算法抑制移动干扰

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A general, linearly constrained (LC) recursive least squares (RLS) array-beamforming algorithm, based on an inverse QR decomposition, is developed for suppressing moving jammers efficiently. In fact, by using the inverse QR decomposition-recursive least squares (QRD-RLS) algorithm approach, the least-squares (LS) weight vector can be computed without back substitution and is suitable for implementation using a systolic array to achieve fast convergence and good numerical properties. The merits of this new constrained algorithm are verified by evaluating the performance, in terms of the learning curve, to investigate the convergence property and numerical efficiency, and the output signal-to-interference-and-noise ratio. We show that our proposed algorithm outperforms the conventional linearly constrained LMS (LCLMS) algorithm, and the one using the fast linear constrained RLS algorithm and its modified version.
机译:基于逆QR分解,开发了一种通用的线性约束(LC)递归最小二乘(RLS)阵列波束形成算法,可有效抑制移动干扰。实际上,通过使用逆QR分解递归最小二乘(QRD-RLS)算法,可以计算出最小二乘(LS)权重向量而无需反向替换,并且适合使用脉动阵列来实现快速收敛和良好的数值特性。通过根据学习曲线评估性能,研究收敛性和数值效率,以及输出信噪比,验证了这种新约束算法的优点。我们表明,我们提出的算法优于传统的线性约束LMS(LCLMS)算法,而使用快速线性约束RLS算法及其改进版本的算法。

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