DocumentCode
81587
Title
New Sparse Adaptive Algorithms Based on the Natural Gradient and the
-Norm
Author
Pelekanakis, Konstantinos ; Chitre, Mandar
Author_Institution
Acoust. Res. Lab., Nat. Univ. of Singapore, Singapore, Singapore
Volume
38
Issue
2
fYear
2013
fDate
Apr-13
Firstpage
323
Lastpage
332
Abstract
A new algorithmic framework for sparse channel identification is proposed. Although the focus of this paper is on sparse underwater acoustic channels, this framework can be applied in any field where sequential noisy signal samples are obtained from a linear time-varying system. A suit of new algorithms is derived by minimizing a differentiable cost function that utilizes the underlying Riemannian structure of the channel as well as the L0-norm of the complex-valued channel taps. The sparseness effect of the proposed algorithms is successfully demonstrated by estimating a mobile shallow-water acoustic channel. The clear superiority of the new algorithms over state-of-the-art sparse adaptive algorithms is shown. Moreover, the proposed algorithms are employed by a channel-estimate-based decision-feedback equalizer (CEB DFE). These CEB DFE structures are compared with a direct-adaptation DFE (DA DFE), which is based on sparse and nonsparse adaptation. Our results confirm the improved error-rate performance of the new CEB DFEs when the channel is sparse.
Keywords
acoustic signal processing; channel estimation; decision feedback equalisers; gradient methods; underwater acoustic communication; CEB DFE structures; DA DFE; L0-norm; Riemannian structure; algorithmic framework; channel-estimate-based decision-feedback equalizer; complex-valued channel taps; differentiable cost function; direct-adaptation DFE; improved error-rate performance; linear time-varying system; natural gradient; nonsparse adaptation algorithm; sparse adaptive algorithms; sparse channel identification; sparse underwater acoustic channels; Acoustics; Adaptive algorithms; Channel estimation; Complexity theory; Cost function; Decision feedback equalizers; Vectors; $L_{0}$ -norm; ${L}_{1}$ -RRLS; Acoustic echo cancellation; improved-proportionate affine projection algorithm (IPAPA); improved-proportionate normalized least mean square (IPNLMS); proportionate algorithms; sparse equalization; sparse recursive least squares (RLS); underwater acoustic communications;
fLanguage
English
Journal_Title
Oceanic Engineering, IEEE Journal of
Publisher
ieee
ISSN
0364-9059
Type
jour
DOI
10.1109/JOE.2012.2221811
Filename
6365766
Link To Document