期刊文献+

用于稀疏系统辨识的改进惩罚LMS算法研究 被引量:1

The Improvement of LMS Algorithm for Sparse System Identification
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摘要 基于加权零吸引因子最小均方算法(RZA-LMS),提出了一种应用于系统辨识的新型自适应滤波算法(ARZA-LMS)。RZA-LMS通过在标准LMS算法迭代过程中添加零吸引因子,促进了滤波器小权系数的收敛,从而在辨识稀疏系统时,加快了算法的整体收敛速度。但是RZA-LMS算法中的零吸引因子,选择了固定的e,过于武断,降低了算法的鲁棒性。通过在参数e与误差信号e之间建立非线性关系,使零吸引因子在最小化MSE更具有灵活性,提出了一种改进的RZA-LMS,提高了对系统辨识的收敛速度和稳定性。最后,计算机仿真验证了新算法的性能明显优于原算法和若干现有稀疏系统辨识的方法。 Based on RZA-LMS,a novel adaptive algorithm is presented for sparse system identification. The RZA-LMS algorithm generates a zero attractor in the LMS iteration due to the penalty item on coefficients,and the zero attractor promotes sparsity in taps during the filtering process,therefore convergence can be acceler-ated when identifying sparse systems. For the parameter e of the e-law compression in the zero attractor is con-stant,the algorithm is not robust. The proposed approach adaptively establishes nonlinear relationship between the parameter e and the error signal e,which makes the algorithm more flexible in an attempt to minimize the MSE. Simulation results demonstrate the advantages of the proposed filter in both convergence rate and steady-state behaviors under sparsity assumptions on the true coefficient vector.
出处 《华东交通大学学报》 2013年第6期62-66,共5页 Journal of East China Jiaotong University
基金 国家自然科学基金项目(61065003) 教育部人文社会科学研究规划基金项目(11YJCZH160)
关键词 自适应滤波器 最小均方算法 压缩传感 稀疏信道 零吸引因子 L1范数 adaptive filters least mean square compressive sensing sparse impulse response zero attractor L1 norm
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参考文献12

  • 1赵专政.一种改进的变步长LMS自适应滤波算法[J].微计算机信息,2010,26(16):231-232. 被引量:3
  • 2宋彦,汪萌,戴礼荣,王仁华.一种新的变步长自适应滤波算法及分析[J].电路与系统学报,2010,15(4):70-74. 被引量:7
  • 3GIVENS M. Enhanced-convergence normalized LMS algorithm [ J ]. IEEE Signal Processing Magazine, 2009,26 (3) : 81-95.
  • 4DUTTWEILER L D. Proportionate normalized least-mean-squares adaptation in echo cancellers [J]. IEEE Trans Speech Au- dio Processing, 2000,8 (5) : 508-518.
  • 5MEINSHAUSEN N, BIJHLMANN P. High-dimensional graphs and variable selection with the lasso [J]. The Annals of Sta- tistics, 2006,34(3 ) : 1436-1462.
  • 6BARANIUK R. Compressive sensing [J]. IEEE Signal Processing Magazine, 2007,24(4) : 118-121.
  • 7CANDIS E, WAKIN M. An introduction to compressive sampling [J]. IEEE Signal Processing Magazine, 2008,25 (2) : 21- 30.
  • 8郑轶,蔡体健.稀疏表示的人脸识别及其优化算法[J].华东交通大学学报,2012,29(1):10-14. 被引量:13
  • 9CHEN Y, GU Y, HERO A O. Sparse LMS for system identification [ J]. Acoustics, Speech and Signal Processing, 2009: 3125-3128.
  • 10KEVIN T WAGNER, MILOS I DOROSLOVACKI. Gain allocation in proportionate-type nlms algorithms for fast decay of output error at all times [ C ]//In Acoustics, Speech and Signal Processing, ICASSP 2009, IEEE International Conference on, IEEE, 2009 : 3117-3120.

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