Bi-scale LMS equalization for improved performance

A. Beex, T. Ikuma
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引用次数: 3

Abstract

Recent results show that an adaptive transversal least-mean-square (LMS) equalizer in a narrowband-interference dominated environment operates at a mean weight vector that is different from that of the Wiener equalizer of the same structure. In addition, the time-varying component of the LMS weight vector results in a steady-state mean square error (MSE) that can be substantially lower than that for the fixed Wiener equalizer. However, the MSE for this LMS equalizer is higher than the MSE prediction in which LMS is assumed to be operating in a neighborhood of the Wiener weight vector. We find that -although the transversal LMS equalizer itself does not produce the Wiener weight vector as its steady-state mean - the adaptive algorithm can be modified so that its mean weight vector is the fixed Wiener weight vector, while simultaneously facilitating the time-varying weight behavior that is responsible for the reduction in MSE. The resulting bi-scale LMS (BLMS) algorithm achieves further improvement in MSE.
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双尺度LMS均衡,提高性能
最近的研究结果表明,在窄带干扰占主导的环境下,自适应横向最小均方均衡器(LMS)工作在不同于相同结构的维纳均衡器的平均权向量上。此外,LMS权重向量的时变分量导致稳态均方误差(MSE)大大低于固定维纳均衡器。然而,这个LMS均衡器的MSE高于假设LMS在维纳权向量的邻域内工作的MSE预测。我们发现,尽管横向LMS均衡器本身不产生维纳权向量作为其稳态均值,但可以修改自适应算法,使其平均权向量是固定的维纳权向量,同时促进时变权行为,这是导致MSE降低的原因。所得到的双尺度LMS (BLMS)算法在MSE方面得到了进一步的改进。
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