Publication: The krylov-proportionate normalized least mean fourth approach: formulation and performance analysis
Program
KU-Authors
KU Authors
Co-Authors
Sayın, Muhammed O.
Yılmaz, Yasin
Kozat, Süleyman S.
Editor & Affiliation
Compiler & Affiliation
Translator
Other Contributor
Date
Language
Type
Embargo Status
N/A
Journal Title
Journal ISSN
Volume Title
Alternative Title
Abstract
We propose novel adaptive filtering algorithms based on the mean-fourth error objective while providing further improvements on the convergence performance through proportionate update. We exploit the sparsity of the system in the mean-fourth error framework through the proportionate normalized least mean fourth (PNLMF) algorithm. In order to broaden the applicability of the PNLMF algorithm to dispersive (non-sparse) systems, we introduce the Krylov-proportionate normalized least mean fourth (KPNLMF) algorithm using the Krylov subspace projection technique. We propose the Krylov-proportionate normalized least mean mixed norm (KPNLMMN) algorithm combining the mean-square and mean-fourth error objectives in order to enhance the performance of the constituent filters. Additionally, we propose the stable-PNLMF and stable-KPNLMF algorithms overcoming the stability issues induced due to the usage of the mean fourth error framework. Finally, we provide a complete performance analysis, i.e., the transient and the steady-state analyses, for the proportionate update based algorithms, e.g., the PNLMF, the KPNLMF algorithms and their variants; and analyze their tracking performance in a non-stationary environment. Through the numerical examples, we demonstrate the match of the theoretical and ensemble averaged results and show the superior performance of the introduced algorithms in different scenarios.
Source
Publisher
Subject
Engineering, electrical and electronic
Citation
Has Part
Source
Signal Processing
Book Series Title
Edition
DOI
10.1016/j.sigpro.2014.10.015
item.page.datauri
Link
Rights
N/A
