Variable regularization for normalized subband adaptive filter

Jae Jin Jeong, Keunhwi Koo, Gyogwon Koo, Sang Woo Kim

Research output: Contribution to journalArticlepeer-review

9 Scopus citations

Abstract

To overcome the performance degradation of least mean square (LMS)-type algorithms when input signals are correlated, the normalized subband adaptive filter (NSAF) was developed. In the NSAF, the regularization parameter influences the stability and performance. In addition, there is a trade-off between convergence rate and steady-state mean square deviation (MSD) according to the change of the parameter. Therefore, to achieve both fast convergence rate and low steady-state MSD, the parameter should be varied. In this paper, a variable regularization scheme for the NSAF is derived on the basis of the orthogonality between the weight-error vector and weight vector update, and by using the calculated MSD. The performance of the variable regularization algorithm is evaluated in terms of MSD. Our simulation results exhibit fast convergence and low steady-state MSD when using the proposed algorithm.

Original languageEnglish
Pages (from-to)432-436
Number of pages5
JournalSignal Processing
Volume104
DOIs
StatePublished - Nov 2014

Keywords

  • Adaptive filters
  • Mean-square deviation (MSD)
  • Normalized subband adaptive filter (NSAF)
  • Variable regularization

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