DocumentCode
1552184
Title
A normalized gradient descent algorithm for nonlinear adaptive filters using a gradient adaptive step size
Author
Mandic, Danilo P. ; Hanna, Andrew I. ; Razaz, Moe
Author_Institution
Sch. of Inf. Syst., East Anglia Univ., Norwich, UK
Volume
8
Issue
11
fYear
2001
Firstpage
295
Lastpage
297
Abstract
A fully adaptive normalized nonlinear gradient descent (FANNGD) algorithm for online adaptation of nonlinear neural filters is proposed. An adaptive stepsize that minimizes the instantaneous output error of the filter is derived using a linearization performed by a Taylor series expansion of the output error. For rigor, the remainder of the truncated Taylor series expansion within the expression for the adaptive learning rate is made adaptive and is updated using gradient descent. The FANNGD algorithm is shown to converge faster than previously introduced algorithms of this kind.
Keywords
adaptive filters; adaptive signal processing; convergence of numerical methods; filtering theory; gradient methods; nonlinear filters; series (mathematics); FANNGD algorithm; Taylor series expansion; adaptive learning rate; adaptive normalized nonlinear gradient descent; convergence; gradient adaptive step size; nonlinear adaptive filters; nonlinear neural filters; normalized gradient descent algorithm; online adaptation; output error minimisation; truncated Taylor series expansion; Adaptive filters; Adaptive systems; Convergence; Finite impulse response filter; Mathematical model; Neural networks; Neurons; Signal processing; Signal processing algorithms; Taylor series;
fLanguage
English
Journal_Title
Signal Processing Letters, IEEE
Publisher
ieee
ISSN
1070-9908
Type
jour
DOI
10.1109/97.969448
Filename
969448
Link To Document