Memorized error and varying error bound for extending adaptiveness for normalized subband adaptive filtering
This paper extends the adaptive normalized sub-band adaptive filtering (NSAF) by introducing variable error bound and memorizing the error convergence. The variable error bound attempts to vary the updating point of the filter coefficients. The error memory aids in updating the point based on the hi...
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Series: | Alexandria Engineering Journal |
Online Access: | http://www.sciencedirect.com/science/article/pii/S111001681730248X |
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doaj-6413f637a8a044f5ac6879b06bfe95c82021-06-02T03:02:30ZengElsevierAlexandria Engineering Journal1110-01682018-12-0157424452453Memorized error and varying error bound for extending adaptiveness for normalized subband adaptive filteringB. Samuyelu0P. Rajesh Kumar1Department of ECE, PVP Siddhartha Institute of Technology, Vijayawada, Andhra Pradesh, India; Corresponding author.Department of ECE, Andhra University College of Engineering, Visakhapatnam, Andhra Pradesh, IndiaThis paper extends the adaptive normalized sub-band adaptive filtering (NSAF) by introducing variable error bound and memorizing the error convergence. The variable error bound attempts to vary the updating point of the filter coefficients. The error memory aids in updating the point based on the history of error rather than the previous error. The extended adaptiveness significantly improved NSAF in terms of convergence, complexity and noise robustness. The algorithm is also proved for its stability though the step-size is varied. The characteristics of the step-size are also investigated to determine its significance and nature on minimizing the error. The superiority of the MVS-SNSAF algorithm is proved against conventional algorithm using the aforesaid analysis. Keywords: NSAF, Step-size, Subbands, Stability, Convergence, Adaptive, Memoryhttp://www.sciencedirect.com/science/article/pii/S111001681730248X |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
B. Samuyelu P. Rajesh Kumar |
spellingShingle |
B. Samuyelu P. Rajesh Kumar Memorized error and varying error bound for extending adaptiveness for normalized subband adaptive filtering Alexandria Engineering Journal |
author_facet |
B. Samuyelu P. Rajesh Kumar |
author_sort |
B. Samuyelu |
title |
Memorized error and varying error bound for extending adaptiveness for normalized subband adaptive filtering |
title_short |
Memorized error and varying error bound for extending adaptiveness for normalized subband adaptive filtering |
title_full |
Memorized error and varying error bound for extending adaptiveness for normalized subband adaptive filtering |
title_fullStr |
Memorized error and varying error bound for extending adaptiveness for normalized subband adaptive filtering |
title_full_unstemmed |
Memorized error and varying error bound for extending adaptiveness for normalized subband adaptive filtering |
title_sort |
memorized error and varying error bound for extending adaptiveness for normalized subband adaptive filtering |
publisher |
Elsevier |
series |
Alexandria Engineering Journal |
issn |
1110-0168 |
publishDate |
2018-12-01 |
description |
This paper extends the adaptive normalized sub-band adaptive filtering (NSAF) by introducing variable error bound and memorizing the error convergence. The variable error bound attempts to vary the updating point of the filter coefficients. The error memory aids in updating the point based on the history of error rather than the previous error. The extended adaptiveness significantly improved NSAF in terms of convergence, complexity and noise robustness. The algorithm is also proved for its stability though the step-size is varied. The characteristics of the step-size are also investigated to determine its significance and nature on minimizing the error. The superiority of the MVS-SNSAF algorithm is proved against conventional algorithm using the aforesaid analysis. Keywords: NSAF, Step-size, Subbands, Stability, Convergence, Adaptive, Memory |
url |
http://www.sciencedirect.com/science/article/pii/S111001681730248X |
work_keys_str_mv |
AT bsamuyelu memorizederrorandvaryingerrorboundforextendingadaptivenessfornormalizedsubbandadaptivefiltering AT prajeshkumar memorizederrorandvaryingerrorboundforextendingadaptivenessfornormalizedsubbandadaptivefiltering |
_version_ |
1721409063177158656 |