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[Keyword] mean-square stability(1hit)

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  • Partial-Update Normalized Sign LMS Algorithm Employing Sparse Updates

    Seong-Eun KIM  Young-Seok CHOI  Jae-Woo LEE  Woo-Jin SONG  

     
    LETTER-Digital Signal Processing

      Vol:
    E96-A No:6
      Page(s):
    1482-1487

    This paper provides a novel normalized sign least-mean square (NSLMS) algorithm which updates only a part of the filter coefficients and simultaneously performs sparse updates with the goal of reducing computational complexity. A combination of the partial-update scheme and the set-membership framework is incorporated into the context of L∞-norm adaptive filtering, thus yielding computational efficiency. For the stabilized convergence, we formulate a robust update recursion by imposing an upper bound of a step size. Furthermore, we analyzed a mean-square stability of the proposed algorithm for white input signals. Experimental results show that the proposed low-complexity NSLMS algorithm has similar convergence performance with greatly reduced computational complexity compared to the partial-update NSLMS, and is comparable to the set-membership partial-update NLMS.