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New sequential partial-update least mean M-estimate algorithms for robust adaptive system identification in impulsive noise

机译:用于脉冲噪声中鲁棒自适应系统识别的新的顺序部分更新最小均值m-估计算法

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摘要

The sequential partial-update least mean square (S-LMS)-based algorithms are efficient methods for reducing the arithmetic complexity in adaptive system identification and other industrial informatics applications. They are also attractive in acoustic applications where long impulse responses are encountered. A limitation of these algorithms is their degraded performances in an impulsive noise environment. This paper proposes new robust counterparts for the S-LMS family based on M-estimation. The proposed sequential least mean M-estimate (S-LMM) family of algorithms employ nonlinearity to improve their robustness to impulsive noise. Another contribution of this paper is the presentation of a convergence performance analysis for the S-LMS/S-LMM family for Gaussian inputs and additive Gaussian or contaminated Gaussian noises. The analysis is important for engineers to understand the behaviors of these algorithms and to select appropriate parameters for practical realizations. The theoretical analyses reveal the advantages of input normalization and the M-estimation in combating impulsive noise. Computer simulations on system identification and joint active noise and acoustic echo cancellations in automobiles with double-talk are conducted to verify the theoretical results and the effectiveness of the proposed algorithms. © 2010 IEEE.
机译:基于顺序部分更新最小均方(S-LMS)的算法是用于降低自适应系统识别和其他工业信息学应用中算法复杂性的有效方法。它们在遇到长脉冲响应的声学应用中也很有吸引力。这些算法的局限性在于它们在脉冲噪声环境中的性能下降。本文基于M估计为S-LMS系列提出了新的健壮对等物。所提出的顺序最小均值M估计(S-LMM)系列算法利用非线性来提高其对脉冲噪声的鲁棒性。本文的另一个贡献是针对S-LMS / S-LMM系列针对高斯输入和加性高斯或受污染的高斯噪声的收敛性能分析。该分析对于工程师了解这些算法的行为并为实际实现选择合适的参数非常重要。理论分析揭示了输入归一化和M估计在对抗脉冲噪声方面的优势。进行了计算机仿真的双向通话汽车的系统识别以及联合有源噪声和声学回声消除,以验证理论结果和所提出算法的有效性。 ©2010 IEEE。

著录项

  • 作者

    Zhou Y; Chan SC; Ho KL;

  • 作者单位
  • 年度 2011
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  • 原文格式 PDF
  • 正文语种 eng
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