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A New Variable-Regularized Transform-Domain NLMS Algorithm with Automatic Step-Size Selection for Adaptive System Identification/Filtering

机译:一种具有自动步长选择的可变规则化变换域NLMS算法,用于自适应系统识别/过滤

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摘要

A new variable-regularized (VR) switch-mode noise-constrained (SNC) transform-domain normalized least mean squares (VR-SNC-TDNLMS) algorithm for adaptive system identification and filtering is proposed. It exploits prior knowledge of the additive noise variance and results in a generalized VR-TDNLMS algorithm with a variable step-size (VSS) for improving convergence speed. It also reduces estimation variance, sensitivity to input signal level and eigenvalue spread by means of variable-regularization and decorrelation transformation. To select the variable step-size online, the convergence behavior of the proposed algorithm is analyzed. From the mean convergence analysis, the maximum step-size (MSS) for convergence is first determined. The theoretical results suggest that improved performance can be obtained if the MSS is employed initially while the NC adaptation is adopted near convergence to reduce steady- state misadjustment. Therefore, a switch-mode scheme which employs a MSS mode together with a NC mode is incorporated to further improve its convergence speed. The mean square convergence behavior is also studied by means of a Lyapunov stability-based method to characterize its convergence condition and steady-state misadjustment. Based on the theoretical results, a new automatic threshold selection method for mode switching is developed. General recommendations for choosing other algorithmic parameters are also proposed to facilitate its online and practical usage. The proposed method is expected to find a wide range of applications in areas related to instrumentation and measurement involving low-complexity and recursive linear estimation. In particular, its potential application and effectiveness in system identification problems and several acoustic applications are demonstrated by computer simulations.
机译:提出了一种用于自适应系统识别和滤波的可变正则化(VR)开关模式噪声约束(SNC)变换域归一化最小均方(VR-SNC-TDNLMS)算法。它利用了累加噪声方差的先验知识,并得出了具有可变步长(VSS)的通用VR-TDNLMS算法,以提高收敛速度。它还通过变量正则化和去相关变换来降低估计方差,对输入信号电平的敏感性和特征值扩展。为了在线选择可变步长,分析了所提算法的收敛性。根据平均收敛分析,首先确定收敛的最大步长(MSS)。理论结果表明,如果最初采用MSS,而NC适应性接近收敛以减少稳态失调,则可以提高性能。因此,结合了采用MSS模式和NC模式的开关模式方案以进一步提高其收敛速度。还使用基于Lyapunov稳定性的方法研究了均方收敛行为,以表征其收敛条件和稳态失调。基于理论结果,开发了一种新的模式切换自动阈值选择方法。还提出了选择其他算法参数的一般建议,以促进其在线和实际使用。所提出的方法有望在涉及低复杂度和递归线性估计的仪器和测量相关领域中找到广泛的应用。特别地,通过计算机仿真证明了其在系统识别问题和几种声学应用中的潜在应用和有效性。

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