Extraction method of weak underwater acoustic signal based on the combination of wavelet transform and empirical mode decomposition

When studying underwater acoustic exploration, tracking and positioning, the target signals collected by hydrophones are often submerged in strong intermittent noise and environmental noise. In this paper, an algorithm that combines empirical mode decomposition and wavelet transform is proposed to a...

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Main Authors: Shi Junbing, Wang Yingmin, Zhang Xiaoyong, Yang Libo
Format: Article
Language:English
Published: EDP Sciences 2021-01-01
Series:International Journal of Metrology and Quality Engineering
Subjects:
Online Access:https://www.metrology-journal.org/articles/ijmqe/full_html/2021/01/ijmqe200051/ijmqe200051.html
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spelling doaj-435f638765fb4350a063e3f7f3c568fb2021-09-02T21:20:57ZengEDP SciencesInternational Journal of Metrology and Quality Engineering2107-68472021-01-0112710.1051/ijmqe/2021005ijmqe200051Extraction method of weak underwater acoustic signal based on the combination of wavelet transform and empirical mode decompositionShi JunbingWang YingminZhang XiaoyongYang LiboWhen studying underwater acoustic exploration, tracking and positioning, the target signals collected by hydrophones are often submerged in strong intermittent noise and environmental noise. In this paper, an algorithm that combines empirical mode decomposition and wavelet transform is proposed to achieve the efficient extraction of target signals in the environment with strong noise. First the calibration of baseline drift is performed on the algorithm, and then it is decomposed into different intrinsic mode functions via empirical mode. The wavelet threshold processing is conducted according to the correlation coefficient of each mode component and the original signal, and finally the signals are reconstructed. The simulation and experiment results show that compared with the conventional empirical mode decomposition method and wavelet threshold method, when the signal-to-noise ratio is low and there exist high-frequency intermittent jamming and baseline drift, the combined algorithm can better extract the target signal, laying the foundation for direction-of-arrival estimation and target positioning in the next step.https://www.metrology-journal.org/articles/ijmqe/full_html/2021/01/ijmqe200051/ijmqe200051.htmlsignal-to-noise ratioempirical mode decompositionwavelet transformintrinsic mode component
collection DOAJ
language English
format Article
sources DOAJ
author Shi Junbing
Wang Yingmin
Zhang Xiaoyong
Yang Libo
spellingShingle Shi Junbing
Wang Yingmin
Zhang Xiaoyong
Yang Libo
Extraction method of weak underwater acoustic signal based on the combination of wavelet transform and empirical mode decomposition
International Journal of Metrology and Quality Engineering
signal-to-noise ratio
empirical mode decomposition
wavelet transform
intrinsic mode component
author_facet Shi Junbing
Wang Yingmin
Zhang Xiaoyong
Yang Libo
author_sort Shi Junbing
title Extraction method of weak underwater acoustic signal based on the combination of wavelet transform and empirical mode decomposition
title_short Extraction method of weak underwater acoustic signal based on the combination of wavelet transform and empirical mode decomposition
title_full Extraction method of weak underwater acoustic signal based on the combination of wavelet transform and empirical mode decomposition
title_fullStr Extraction method of weak underwater acoustic signal based on the combination of wavelet transform and empirical mode decomposition
title_full_unstemmed Extraction method of weak underwater acoustic signal based on the combination of wavelet transform and empirical mode decomposition
title_sort extraction method of weak underwater acoustic signal based on the combination of wavelet transform and empirical mode decomposition
publisher EDP Sciences
series International Journal of Metrology and Quality Engineering
issn 2107-6847
publishDate 2021-01-01
description When studying underwater acoustic exploration, tracking and positioning, the target signals collected by hydrophones are often submerged in strong intermittent noise and environmental noise. In this paper, an algorithm that combines empirical mode decomposition and wavelet transform is proposed to achieve the efficient extraction of target signals in the environment with strong noise. First the calibration of baseline drift is performed on the algorithm, and then it is decomposed into different intrinsic mode functions via empirical mode. The wavelet threshold processing is conducted according to the correlation coefficient of each mode component and the original signal, and finally the signals are reconstructed. The simulation and experiment results show that compared with the conventional empirical mode decomposition method and wavelet threshold method, when the signal-to-noise ratio is low and there exist high-frequency intermittent jamming and baseline drift, the combined algorithm can better extract the target signal, laying the foundation for direction-of-arrival estimation and target positioning in the next step.
topic signal-to-noise ratio
empirical mode decomposition
wavelet transform
intrinsic mode component
url https://www.metrology-journal.org/articles/ijmqe/full_html/2021/01/ijmqe200051/ijmqe200051.html
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AT wangyingmin extractionmethodofweakunderwateracousticsignalbasedonthecombinationofwavelettransformandempiricalmodedecomposition
AT zhangxiaoyong extractionmethodofweakunderwateracousticsignalbasedonthecombinationofwavelettransformandempiricalmodedecomposition
AT yanglibo extractionmethodofweakunderwateracousticsignalbasedonthecombinationofwavelettransformandempiricalmodedecomposition
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