On the sensitivity of transversal RLS algorithms to random perturbations in the filter coefficients

The author investigates the sensitivity of the RLS algorithm to random perturbations about the optimum filter coefficients. Expressions are derived for the mean and variance of the deviation from the optimum error power for the prewindowed growing memory and the experimentally windowed ( lambda >

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