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Variable step-size widely linear complex-valued NLMS algorithm and its performance analysis

机译:变步长宽线性复数值NLMS算法及其性能分析

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The shrinkage widely linear complex-valued least mean square (SWL-CLMS) algorithm with a variable step-size (VSS) overcomes the tradeoff between fast convergence and low steady-state misalignment, but meanwhile suffers from instability for highly correlated input signals because of the gradient noise amplification problem. To obtain a VSS that is also applicable to the case of highly correlated input signals, in this paper, we propose the VSS widely linear complex-valued normalized least mean square (VSS-WL-CNLMS) algorithm, where the VSS is derived by minimizing the mean-square deviation (MSD). Owing to the normalization, the VSS-WL-CNLMS algorithm is convergent in the mean square sense. By using the Rayleigh distribution, we calculate the mean step-size, which is then combined with the approximate uncorrelating transform to analyze the transient and steady-state mean square error (MSE) behaviors. Simulations for system identification scenario show that the proposed VSS-WL-CNLMS algorithm outperforms some well-known techniques and verify the accuracy of the theoretical analysis. (C) 2019 Elsevier B.V. All rights reserved.
机译:具有可变步长(VSS)的收缩宽线性复数值最小均方(SWL-CLMS)算法克服了快速收敛和低稳态失准之间的折衷,但同时由于以下原因而遭受了高度相关输入信号的不稳定性梯度噪声放大问题。为了获得也适用于高相关输入信号情况的VSS,本文提出了VSS宽线性复数值归一化最小均方(VSS-WL-CNLMS)算法,其中VSS是通过最小化获得的均方差(MSD)。由于归一化,VSS-WL-CNLMS算法在均方意义上收敛。通过使用瑞利分布,我们计算平均步长,然后将其与近似非相关变换相结合,以分析瞬态和稳态均方误差(MSE)行为。系统识别场景的仿真表明,本文提出的VSS-WL-CNLMS算法优于一些知名技术,验证了理论分析的准确性。 (C)2019 Elsevier B.V.保留所有权利。

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