Title of article
Analysis of Stability and Performance of Adaptation Algorithms With Time-Invariant Gains
Author/Authors
A. Ahlén، نويسنده , , L. Lindbom، نويسنده , , and M. Sternad، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2004
Pages
14
From page
103
To page
116
Abstract
Adaptation laws that track parameters of linear
regression models are investigated. The considered class of algorithms
apply linear time-invariant filtering on the instantaneous
gradient vector and includes least mean squares (LMS) as its
simplest member. The asymptotic stability and steady-state
tracking performance for prediction and smoothing estimators
is analyzed for parameter variations described by stochastic
processes with time-invariant statistics. The analysis is based
on a novel technique that decomposes the inherent feedback
of adaptation algorithms into one time-invariant loop and one
time-varying loop. The impact of the time-varying feedback on
the tracking error covariance can be neglected under certain
conditions, and the performance analysis then becomes straightforward.
Performance analysis in the presence of a non-negligible
time-varying feedback is performed for algorithms that use scalar
measurements. Convergence in mean square error (MSE) and the
MSE tracking performance is investigated, assuming independent
consecutive regression vectors. Closed-form expressions for the
tracking MSE are thereafter derived without this independence
assumption for a subclass of algorithms applied to finite impulse
response (FIR) models with white inputs. This class includes
Wiener LMS adaptation.
Keywords
least mean squares method , Adaptive signal processing , adaptive filtering , tracking.
Journal title
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Serial Year
2004
Journal title
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Record number
403447
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