Authors
Jerónimo Arenas-García, Manel Martínez-Ramón, Angel Navia-Vazquez, Aníbal R Figueiras-Vidal
Publication date
2006/9/1
Journal
Signal Processing
Volume
86
Issue
9
Pages
2430-2438
Publisher
Elsevier
Description
For least mean-square (LMS) algorithm applications, it is important to improve the speed of convergence vs the residual error trade-off imposed by the selection of a certain value for the step size. In this paper, we propose to use a mixture approach, adaptively combining two independent LMS filters with large and small step sizes to obtain fast convergence with low misadjustment during stationary periods. Some plant identification simulation examples show the effectiveness of our method when compared to previous variable step size approaches. This combination approach can be straightforwardly extended to other kinds of filters, as it is illustrated with a convex combination of recursive least-squares (RLS) filters.
Total citations
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Scholar articles
J Arenas-García, M Martínez-Ramón, A Navia-Vazquez… - Signal Processing, 2006