• DocumentCode
    1760348
  • Title

    Adaptive Sparse Channel Estimation under Symmetric alpha-Stable Noise

  • Author

    Pelekanakis, Konstantinos ; Chitre, Mandar

  • Author_Institution
    Acoust. Res. Lab., Nat. Univ. of Singapore, Singapore, Singapore
  • Volume
    13
  • Issue
    6
  • fYear
    2014
  • fDate
    41791
  • Firstpage
    3183
  • Lastpage
    3195
  • Abstract
    We tackle the problem of channel estimation in environments that exhibit both sparse, time-varying impulse responses and impulsive noise with Symmetric alpha-Stable (SαS) statistics. Two novel frameworks are proposed for designing online adaptive algorithms that exploit channel sparseness and achieve robust performance against impulses. The first framework generates recursive least-squares (RLS)-type algorithms based on a differentiable cost function that combines robust nonlinear methods with sparse-promoting L0 norm regularization. The second framework employs the natural gradient (NG) and incorporates non-linear methods for the channel prediction error as well as the L0 norm of the channel taps. From these frameworks, we derive linear and quadratic complexity algorithms. The improved performance of the proposed RLS-type and NG-type algorithms relative to conventional robust algorithms, such as the recursive least M-estimate (RLM) algorithm and the recursive least p-norm (RLP) algorithm, is validated by using extensive computer simulations as well as signal analysis from an underwater acoustic communications experiment. In addition, we discovered that RLM is not robust under specific SαS noise conditions, contrary to the claim inthinspace. Finally, our results also demonstrate the clear superiority of the NG-type algorithms over their RLS-type counterparts.
  • Keywords
    channel estimation; compressed sensing; least squares approximations; recursive estimation; statistical analysis; time-varying channels; NG-type algorithms; RLM algorithm; RLP algorithm; RLS-type algorithms; SαS statistics; adaptive sparse channel estimation; channel prediction error; channel sparseness; impulsive noise; natural gradient-type algorithms; online adaptive algorithms; quadratic complexity algorithms; recursive least M-estimate algorithm; recursive least p-norm algorithm; recursive least-squares-type algorithms; robust nonlinear methods; signal analysis; symmetric alpha-stable noise; symmetric alpha-stable statistics; time-varying impulse responses; underwater acoustic communications experiment; Algorithm design and analysis; Channel estimation; Cost function; Noise; Prediction algorithms; Robustness; Signal processing algorithms; M-estimate algorithm; Robust system identification; outlier rejection; robust statistics;
  • fLanguage
    English
  • Journal_Title
    Wireless Communications, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1536-1276
  • Type

    jour

  • DOI
    10.1109/TWC.2014.042314.131432
  • Filename
    6807569