IEEE Access (Jan 2020)

L₁/L₂-Mode Switching Adaptive Filter Algorithm Based on Novel Mean Square Deviation Analysis

  • Minho Lee,
  • Taesu Park,
  • Junwoong Hur,
  • Poogyeon Park

DOI
https://doi.org/10.1109/ACCESS.2020.3042284
Journal volume & issue
Vol. 8
pp. 218793 – 218802

Abstract

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This paper proposes an L1/L2-mode switching adaptive filter algorithm by comparing the performances in L1 and L2 modes. In the L1 or L2 mode, the proposed algorithm adopts, as the update equation, that of the normalized sign (NS) algorithm or that of the normalized least mean square (NLMS) algorithm, respectively. By analyzing the mean square deviations (MSDs) of the NS algorithm as well as of the NLMS algorithm, the algorithm selects the better mode in the sense that the next MSD of the algorithm in the selected mode becomes smaller than that in the other mode. The algorithm mainly operates in the L1 mode when the impulsive noises occur but in the L2 mode otherwise, which leads to robustness against the impulsive noises like the NS algorithm and also leads to a low steady-state misalignment like the NLMS algorithm. Furthermore, the proposed algorithm is faster than the NS and the NLMS algorithms in terms of the convergence rate. A modified reset algorithm is also applied to maintain performance when the unknown system is abruptly changed. Simulations conducted in various system identification scenarios show that the proposed algorithm outperforms the conventional algorithms in terms of the convergence rate and the steady-state misalignment, whenever impulsive noises exist or not.

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