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An enhanced normalized step-size algorithm based on adjustable nonlinear transformation function for active control of impulsive noise

机译:一种基于可调非线性变换功能的增强型归一化梯形尺寸算法,用于脉冲噪声的主动控制

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摘要

Impulsive noise is widely distributed in various scenarios and becomes an important challenge for the practical applications of active noise control (ANC) system. The conventional ANC algorithms based on the transformation function have a fixed compression level for error signal, leading to slow convergence and weak noise reduction under certain circumstances. To overcome this defect, this paper proposes an enhanced filtered-x arctangent error Least Mean Square (EFxatanLMS) algorithm by designing an adjustable nonlinear transformation function of error signal with arctangent form. Specifically, a compression factor is introduced in the transformation function to govern the compression shape of the function so as to realize ideal effect on impulsive noise with different intensities. For the purpose of further optimizing the capability of the proposed algorithm, an improved normalized step-size EFxatanLMS (NSS-EFxatanLMS) algorithm is proposed. It adopts a novel time-varying normalized function to adjust the step-size coefficient to the appropriate value adaptively. Numerical simulations verify the effectiveness of the proposed algorithms for Gaussian noise and non-Gaussian impulsive noise. (C) 2020 Elsevier Ltd. All rights reserved.
机译:脉冲噪声在各种场景中广泛分布,成为主动噪声控制(ANC)系统的实际应用的重要挑战。基于变换函数的传统ANC算法具有误差信号的固定压缩电平,导致在某些情况下慢速收敛和弱降噪。为了克服这种缺陷,本文提出了增强的滤波器 - X Arctantangent误差最小均值(efxatanlms)算法,通过设计具有畸形形式的误差信号的可调非线性变换函数。具体地,在变换函数中引入压缩因子以控制功能的压缩形状,以实现不同强度的脉冲噪声的理想效果。为了进一步优化所提出的算法的能力,提出了一种改进的归一化步长eFxatanlMS(NSS-EFXATANLMS)算法。它采用一种新的时变归一化功能,可自适应地将阶梯大小的系数调整到适当的值。数值模拟验证了所提出的高斯噪声和非高斯冲动噪声的算法的有效性。 (c)2020 elestvier有限公司保留所有权利。

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