A novel variable step size LMS algorithm based on decorrelation

CISP), 2010 3rd International Congress(2010)

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摘要
With highly correlated input signal, the variable step size (VSS) algorithms always suffer from a low convergence speed. One way to overcome this problem is to decorrelate the input signal before passing it to the equalizer. In this paper, we propose a novel variable step size least mean square (LMS) algorithm based on decorrelation. In this algorithm, the update of the coefficients is matched to the correlation properties of input. The computer simulation results are consistent with the theoretical analysis and also show that the algorithm proposed can achieve a faster convergence rate and a smaller mean square error (MSE).
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关键词
variable step size lms algorithm,mean square error,variable step size least mean square algorithm,highly correlated input signal,lms algorithm,least mean squares methods,variable step size,variable step size algorithm,adaptive,equalizer,decorrelation,convergence,least mean square,correlation,least squares approximation,computer simulation,steady state,convergence rate,algorithm design and analysis
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