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Steiglitz-McBride adaptive notch filter based on a variable-step-size LMS algorithm and its application to active noise control

机译:基于变步长LMS算法的Steiglitz-McBride自适应陷波滤波器及其在有源噪声控制中的应用

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This paper proposes a new Steiglitz-McBride (SM) adaptive notch filter (SM-ANF) based on a robust variable-step-size least-mean-square algorithm and its application to active noise control (ANC). The proposed SM-ANF not only has fast convergence but also has small misadjustment. The variable-step-size algorithm uses the sum of the squared cross correlation between the error signal and the delayed inputs corresponding to the adaptive weights. The cross correlation provides robustness to the broadband signal, which plays the role of noise. The proposed SM-ANF is computationally simpler than the existing Newton/recursive least-squares-type ANF. The frequency response of the new SM-ANF has a notch depth of about -25dB (for each of the three frequencies considered) and has spectral flatness within 5dB (peak to peak). This robust notch filter algorithm is used as an observation noise canceller for the secondary path estimation of an ANC system based on the SM method. The ANC with proposed SM-ANF provides not only faster convergence but also an 11-dB improvement in noise attenuation over the SM-based ANC without such a SM-ANF. Copyright (c) 2015John Wiley & Sons, Ltd.
机译:本文提出了一种基于鲁棒可变步长最小均方算法的新型Steiglitz-McBride(SM)自适应陷波滤波器(SM-ANF),并将其应用于主动噪声控制(ANC)。所提出的SM-ANF不仅收敛速度快,而且调整误差小。可变步长算法使用误差信号与对应于自适应权重的延迟输入之间的平方互相关平方和。互相关为宽带信号提供了鲁棒性,宽带信号起着噪声的作用。所提出的SM-ANF在计算上比现有的Newton /递归最小二乘型ANF更简单。新型SM-ANF的频率响应的陷波深度约为-25dB(对于所考虑的三个频率中的每一个),并且频谱平坦度在5dB以内(峰到峰)。这种鲁棒的陷波滤波器算法用作观察噪声消除器,用于基于SM方法的ANC系统的次级路径估计。与不带SM-ANF的基于SM的ANC相比,带有拟议的SM-ANF的ANC不仅提供了更快的收敛速度,而且在噪声衰减方面提高了11 dB。版权所有(c)2015 John Wiley&Sons,Ltd.

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