The Wavelet Transform-Domain LMS Adaptive Filter Algorithm with Variable Step-Size

Authors

  • H. Mesgarani Faculty of Basic Sciences, Department of Applied Mathematics, Shahid Rajaee Teacher Training University, Tehran, Iran.
  • M. Shams Esfand Abadi the Faculty of Electrical Engineering, Shahid Rajaee Teacher Training University, Tehran, Iran.
  • S. M. Khademiyan Faculty of Basic Sciences, Department of Applied Mathematics, Shahid Rajaee Teacher Training University, Tehran, Iran.
Abstract:

The wavelet transform-domain least-mean square (WTDLMS) algorithm uses the self-orthogonalizing technique to improve the convergence performance of LMS. In WTDLMS algorithm, the trade-off between the steady-state error and the convergence rate is obtained by the fixed step-size. In this paper, the WTDLMS adaptive algorithm with variable step-size (VSS) is established. The step-size in each subfilter changes according to the largest decrease in mean square deviation. The simulation results show that the proposed VSS-WTDLMS has faster convergence rate and lower misadjustment than ordinary WTDLMS.

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Journal title

volume 13  issue 3

pages  213- 218

publication date 2017-09

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