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A robust and stable variable step-size design for the least-mean fourth algorithm using quotient form

机译:使用商数形式的最小均值第四算法的鲁棒且稳定的可变步长设计

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摘要

The least-mean fourth (LMF) algorithm is well-known to provide fast convergence and lower steady-state error, especially in non-Gaussian noise environments in contrast to the well-known least-mean square (LMS) algorithm. However, the standard LMF algorithm suffers from two main problems: initial instability due to a larger error term (as it involves a cube of the error term) and steady-state performance degradation due to input and noise statistics. This has motivated researchers to search for different variants of the LMF algorithm. But all the existing solutions are found to be either very sensitive to input and/or noise statistics or suffer from instability. Therefore, in this work, we propose a new variable step-size least-mean fourth (VSSLMF) algorithm with the aim to achieve both robust and stable design. The key idea of the design is based on employing a quotient form of the weighted error energies that achieves significant improvement in terms of the mean square error (MSE) while keeping its inherent superiority over the LMS algorithm in non-Gaussian environments. We also thoroughly investigate the performance of the proposed algorithm analytically in both stationary and non-stationary environments. Consequently, we derive the expressions for excess mean square error (EMSE) and mean square deviation (MSD) in both the transient and the steady-state scenarios. Extensive simulations are carried out to substantiate the theoretical findings. (C) 2019 Published by Elsevier B.V.
机译:众所周知,与众所周知的最小均方(LMS)算法相比,最小均四(LMF)算法可提供快速收敛和较低的稳态误差,尤其是在非高斯噪声环境中。但是,标准的LMF算法存在两个主要问题:由于误差项较大(包括误差项的立方)而导致的初始不稳定性,以及由于输入和噪声统计信息而导致的稳态性能下降。这激发了研究人员寻找LMF算法的不同变体。但是发现所有现有解决方案要么对输入和/或噪声统计非常敏感,要么遭受不稳定的困扰。因此,在这项工作中,我们提出了一种新的可变步长最小均四(VSSLMF)算法,旨在实现鲁棒和稳定的设计。该设计的关键思想是基于采用加权误差能量的商形式,该形式在均方误差(MSE)方面取得了显着改善,同时在非高斯环境中保持了优于LMS算法的固有优势。我们还通过分析在固定和非固定环境下彻底研究了所提出算法的性能。因此,我们导出了在瞬态和稳态情况下均方误差(EMSE)和均方差(MSD)的表达式。进行了广泛的模拟以证实理论发现。 (C)2019由Elsevier B.V.发布

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