Combined nonlinear filtering architectures involving sparse functional link adaptive filters
Publisher:
Elsevier
Issued date:
2017-06
Citation:
Comminiello, D., Scarpiniti, M., Azpicueta-Ruiz, L. A., Arenas-García, J. & Uncini, A. (2017). Combined nonlinear filtering architectures involving sparse functional link adaptive filters. Signal Processing, 135, 168–178.
ISSN:
0165-1684
xmlui.dri2xhtml.METS-1.0.item-contributor-funder:
Comunidad de Madrid
Ministerio de Economía y Competitividad (España)
Sponsor:
The work of M. Scarpiniti and A. Uncini is partially supported by the Italian National Project "GAUChO - A Green Adaptive Fog Computing and Networking Architecture", under grant number 2015YPXH4W. The work of L. A. Azpicueta-Ruiz is partially supported by Comunidad de Madrid under grant 'CASI-CAM-CM' (id. S2013/ICE-2845), by the Spanish Ministry of Economy and Competitiveness (under grant DAMA (TIN2015-70308-REDT) and grant TEC2014-52289-R), and by the European Union. The work of J. Arenas-García has been partly funded by MINECO project TEC2014-52289-R, and by Comunidad de Madrid project PRICAM S2013/ICE-2933.
Project:
Comunidad de Madrid. S2013/ICE-2845
Comunidad de Madrid. S2013/ICE-2933
Gobierno de España. TEC2014-52289-R
Gobierno de España. TIN2015-70308-REDT
Keywords:
Nonlinear adaptive filtering
,
Functional links
,
Linear-in-the-parameters nonlinear filters
,
Sparse adaptive filters
,
Combination of filters
,
Acoustic echo cancellation
,
Convex combination
,
Channel estimation
,
PNLMS algorithm
,
Identification
,
Systems
,
Representation
,
Convergence
,
Kernels
Rights:
© 2017 Elsevier B.V. All rights reserved.
Atribución-NoComercial-SinDerivadas 3.0 España
Abstract:
Sparsity phenomena in learning processes have been extensively studied, since their detection allows to derive suited regularized optimization algorithms capable of improving the overall learning performance. In this paper, we investigate the sparsity behavior
Sparsity phenomena in learning processes have been extensively studied, since their detection allows to derive suited regularized optimization algorithms capable of improving the overall learning performance. In this paper, we investigate the sparsity behavior that may occur in nonlinear adaptive filtering problems and how to leverage it and develop enhanced algorithms. In particular, we focus on a particular class of linear-in-the-parameters nonlinear adaptive filters, whose nonlinear transformation is based on a functional link expansion. The analysis of the sparsity in functional links leads us to derive a family of adaptive combined filtering architectures that is capable of exploiting any sparseness degree in the nonlinear filtering. We propose two different filtering schemes based on a new block-based combined approach, well suited for sparse adaptive algorithms. Moreover, a hierarchical architecture is also proposed that generalizes the different combined schemes and does not need any a priori information about the nature of the nonlinearity to be modeled. Experimental results prove the effectiveness of the proposed combined architectures in exploiting any sparseness degree and improving the modeling performance in nonlinear system identification problems.
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