Title :
Joint gradient-based time delay estimation and adaptive filtering
Author :
Boudreau, Daniel ; Kabal, Peter
Abstract :
A general estimation model is defined in which two observations are available; one is a noisy version of the transmitted signal, while the other is a noisy filtered and delayed version of the same transmitted signal. The time-varying delay and the filter are unknown quantities that must be estimated. A joint estimator composed of an adaptive delay element in conjunction with a transversal adaptive filter is proposed. The same error signal is used by the two adaptive algorithms to adjust the delay element and the filter such that the minimum mean square error is attained. Two joint gradient-based adaptation algorithms are studied. The joint steepest-descent (SD) algorithm is first investigated. The possibility of convergence to a multitude of solutions is established, and a condition of convergence is presented. A stochastic implementation of the joint SD algorithm, under the form of a joint least mean square (LMS) algorithm, is investigated. It is analyzed in terms of convergence in the mean and in the mean square of both the delay estimate and the adaptive filter weight vector estimate. The conditions of convergence of the joint LMS algorithm are established as functions of the power spectral densities of the observed signals and the minimum mean squared error
Keywords :
adaptive filters; convergence; delays; errors; filtering and prediction theory; least squares approximations; parameter estimation; adaptive delay element; adaptive filtering; convergence; error signal; filter weight vector estimate; general estimation model; joint LMS algorithm; joint estimator; joint gradient-based adaptation algorithms; joint least mean square; joint steepest-descent algorithm; minimum mean square error; power spectral densities; stochastic implementation; time delay estimation; time-varying delay; transversal adaptive filter; Adaptive filters; Clocks; Delay effects; Delay estimation; Filtering; Least squares approximation; Nonlinear filters; Performance analysis; Sampling methods; Transversal filters;
Conference_Titel :
Circuits and Systems, 1990., IEEE International Symposium on
Conference_Location :
New Orleans, LA
DOI :
10.1109/ISCAS.1990.112684