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An improved approximate QR-LS based second-order Volterra filter

机译:改进的基于近似QR-LS的二阶Volterra滤波器

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This paper proposes a new transform-domain approximate QR least-squares-based (TA-QR-LS) algorithm for adaptive Volterra filtering (AVF). It improves the approximate QR least-squares (A-QR-LS) algorithm for multichannel adaptive filtering by introducing a unitary transformation to decorrelate the input signal vector so as to achieve better convergence and tracking performances. Further, the Givens rotation is used instead of the Householder transformation to reduce the arithmetic complexity. Simulation results show that the proposed algorithm has much better initial convergence and steady state performance than the LMS-based algorithm. The fast RLS AVF algorithm [J. Lee and V. J. Mathews, Mar 1993] was found to exhibit superior steady state performance when the forgetting factor is chosen to be 0.995, but the tracking performance of the TA-QR-LS algorithm was found to be considerably better.
机译:本文提出了一种新的基于变换域近似QR最小二乘(TA-QR-LS)的自适应Volterra滤波(AVF)算法。它通过引入a变换来解相关输入信号矢量,从而改进了用于多通道自适应滤波的近似QR最小二乘(A-QR-LS)算法,从而实现了更好的收敛和跟踪性能。此外,使用Givens轮换代替Householder变换来减少算术复杂度。仿真结果表明,与基于LMS的算法相比,该算法具有更好的初始收敛性和稳态性能。快速RLS AVF算法[J. Lee和V. J. Mathews,[1993年3月]被发现在遗忘因子选择为0.995的情况下表现出优异的稳态性能,但是发现TA-QR-LS算法的跟踪性能要好得多。

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