Title :
LMS coupled adaptive prediction and system identification: a statistical model and transient mean analysis
Author :
Mboup, Mamadou ; Bonnet, Madeleine ; Bershad, Neil
Author_Institution :
Univ. Rene Descartes, Paris, France
fDate :
10/1/1994 12:00:00 AM
Abstract :
The LMS algorithm has been successfully used in many system identification problems. However, when the input data covariance matrix is ill-conditioned, the algorithm converges slowly. To overcome the slow convergence, an adaptive structure is studied, which incorporates an LMS adaptive predictor (prewhitener) prior to the LMS algorithm for system identification (canceler). Since the prewhitener is also adaptive, the input to the LMS canceler is nonstationary, even when the input is stationary. Because of the coupling and the nonstationarity of LMS canceler input, analysis of the performance of the two adaptations is extremely difficult. A simple theoretical model of the coupled adaptations is presented and analyzed. First and second moment analysis indicates that the adaptive predictor significantly speeds up the LMS canceler as compared to a system without prewhitening and enlarges the stability domain of the canceler (larger allowable μ). Monte-Carlo simulations are presented which are in good agreement with the predictions of the mathematical model
Keywords :
Monte Carlo methods; adaptive filters; convergence of numerical methods; filtering and prediction theory; identification; least squares approximations; matrix algebra; numerical analysis; statistical analysis; telecommunication channels; LMS algorithm; Monte-Carlo simulations; adaptive prediction; canceler; convergence; input data covariance matrix; moment analysis; nonstationarity; performance; prewhitener; stability domain; statistical model; system identification; transient mean analysis; Adaptive systems; Convergence; Covariance matrix; Filters; Least squares approximation; Predictive models; Signal processing algorithms; System identification; Transient analysis; Underwater acoustics;
Journal_Title :
Signal Processing, IEEE Transactions on