DocumentCode :
1138411
Title :
Statistical Performance of the Memoryless Nonlinear Gradient Algorithm for the Constrained Adaptive IIR Notch Filter
Author :
Xiao, Yegui ; Ma, Liying ; Khorasani, K. ; Ikuta, Akira
Author_Institution :
Dept. of Manage. & Inf. Syst., Prefectural Univ. of Hiroshima, Japan
Volume :
52
Issue :
8
fYear :
2005
Firstpage :
1691
Lastpage :
1702
Abstract :
Gradient-type algorithms for the adaptive infinite-impulse response (IIR) notch filters are very attractive in terms of both performance and computational requirements for various real-life applications. This paper presents, in detail, a statistical analysis of the memoryless nonlinear gradient (MNG) algorithm applied to the well-known second-order adaptive IIR notch filter with constrained poles and zeros. This analysis is based on a proper use of Taylor series expansion and nonlinearization of output signals of the notch and gradient filters. Two difference equations are derived first for the convergence in the mean and mean square senses, respectively. Two closed-form expressions, one for the steady-state estimation bias and the other for the mean-square error, are then derived based on the difference equations, with the former valid for both fast and slow adaptations and the latter valid for slow adaptation only. A closed-form coarse stability bound for the step size parameter of the algorithm is also derived. Extensive simulations are performed to reveal the validity and limitations of the analytical findings. Comparisons between the MNG and the conventional plain gradient algorithm are also made.
Keywords :
IIR filters; adaptive filters; circuit stability; convergence of numerical methods; gradient methods; mean square error methods; network analysis; notch filters; poles and zeros; statistical analysis; Taylor series expansion; adaptive infinite-impulse response notch filters; circuit stability; closed-form coarse stability bound; closed-form expressions; constrained IIR notch filter; constrained adaptive IIR notch filters; convergence of numerical methods; difference equations; gradient filters; gradient methods; mean square error methods; memoryless nonlinear gradient algorithm; network analysis; poles and zeros; second-order adaptive IIR notch filter; statistical analysis; statistical performance; steady-state estimation bias; Adaptive filters; Closed-form solution; Convergence; Difference equations; IIR filters; Poles and zeros; Signal analysis; Statistical analysis; Steady-state; Taylor series; Adaptive notch filtering; constrained IIR notch filter; estimated bias; mean-square error; memoryless nonlinear gradient algorithm; steady-state performance;
fLanguage :
English
Journal_Title :
Circuits and Systems I: Regular Papers, IEEE Transactions on
Publisher :
ieee
ISSN :
1549-8328
Type :
jour
DOI :
10.1109/TCSI.2005.851713
Filename :
1495735
Link To Document :
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