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Steady-State Mean-Square Error Analysis for Non-Negative Least Lncosh Algorithm

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Lncosh cost function is regarded as a natural logarithm obtaining from a hyperbolic cosine function, which has drawn growing attention due to its robust to impulsive noise. In this brief,… Click to show full abstract

Lncosh cost function is regarded as a natural logarithm obtaining from a hyperbolic cosine function, which has drawn growing attention due to its robust to impulsive noise. In this brief, a nonnegative adaptive algorithm is proposed based on lncosh function, named as NNLlncosh, which is derived by incorporating the nonnegativity constraint into lncosh cost function to deal with a nonnegativity constraint optimization problem under impulsive system noises. The steady-state excess mean square error (EMSE) for the newly constructed NNLlncosh algorithm is presented. Obtained results from the computer simulation validate the theoretical analysis and verify the excellent characteristics of the NNLlncosh over various non-Gaussian system noises.

Keywords: square error; mean square; algorithm; steady state; function

Journal Title: IEEE Transactions on Circuits and Systems II: Express Briefs
Year Published: 2021

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