Feature Extraction of Mine Water Inrush Precursor

Coal water inrush acoustic emission (AE) signal is characterized by time varying, nonstationary, unpredictable and transient properties. To extract effective features representing coal water inrush information, the AE signal is analyzed by the wavelet characteristic energy spectrum coefficient based...

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Main Authors: Ye Zhang, Yang Zhang, Xuguang Jia, Huashuo Li, Shoufeng Tang
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9187876/
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spelling doaj-9c489d2c62974eef9b4b40902b9b19902021-03-30T03:54:36ZengIEEEIEEE Access2169-35362020-01-01816325516325910.1109/ACCESS.2020.30227879187876Feature Extraction of Mine Water Inrush PrecursorYe Zhang0https://orcid.org/0000-0002-9569-9402Yang Zhang1Xuguang Jia2Huashuo Li3Shoufeng Tang4China University of Mining and Technology, Xuzhou, ChinaXuzhou Comprehensive Center for Inspection and Testing of Quality and Technical Supervision, Xuzhou, ChinaXuzhou Comprehensive Center for Inspection and Testing of Quality and Technical Supervision, Xuzhou, ChinaChina University of Mining and Technology, Xuzhou, ChinaChina University of Mining and Technology, Xuzhou, ChinaCoal water inrush acoustic emission (AE) signal is characterized by time varying, nonstationary, unpredictable and transient properties. To extract effective features representing coal water inrush information, the AE signal is analyzed by the wavelet characteristic energy spectrum coefficient based on wavelet theory. The feasibility of the wavelet feature coding has confirmed from code scheme's availability and consistency, and it proves that the coding method can be used as a sign of waveform identification. The inclusion of energy distribution characteristics makes the waveform features more ordered and simplified. While the analysis of the obtained feature encoding in chronological order, it is possible to obtain the state of the time series signals, to lay an important basis for analyzing the evolution of water inrush acoustic emission coal from the time-series level, such that a change dynamic characteristic acoustic emission signal becomes possible. And this will lay an important foundation for the time sequence analysis of acoustic emission event's evolution in mine water inrush, reduces the trans-mission of invalid signals and improves the efficiency of downhole communication.https://ieeexplore.ieee.org/document/9187876/Coal water inrushacoustic emissionwavelet feature codingwavelet characteristic energy spectrumwavelet theory
collection DOAJ
language English
format Article
sources DOAJ
author Ye Zhang
Yang Zhang
Xuguang Jia
Huashuo Li
Shoufeng Tang
spellingShingle Ye Zhang
Yang Zhang
Xuguang Jia
Huashuo Li
Shoufeng Tang
Feature Extraction of Mine Water Inrush Precursor
IEEE Access
Coal water inrush
acoustic emission
wavelet feature coding
wavelet characteristic energy spectrum
wavelet theory
author_facet Ye Zhang
Yang Zhang
Xuguang Jia
Huashuo Li
Shoufeng Tang
author_sort Ye Zhang
title Feature Extraction of Mine Water Inrush Precursor
title_short Feature Extraction of Mine Water Inrush Precursor
title_full Feature Extraction of Mine Water Inrush Precursor
title_fullStr Feature Extraction of Mine Water Inrush Precursor
title_full_unstemmed Feature Extraction of Mine Water Inrush Precursor
title_sort feature extraction of mine water inrush precursor
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Coal water inrush acoustic emission (AE) signal is characterized by time varying, nonstationary, unpredictable and transient properties. To extract effective features representing coal water inrush information, the AE signal is analyzed by the wavelet characteristic energy spectrum coefficient based on wavelet theory. The feasibility of the wavelet feature coding has confirmed from code scheme's availability and consistency, and it proves that the coding method can be used as a sign of waveform identification. The inclusion of energy distribution characteristics makes the waveform features more ordered and simplified. While the analysis of the obtained feature encoding in chronological order, it is possible to obtain the state of the time series signals, to lay an important basis for analyzing the evolution of water inrush acoustic emission coal from the time-series level, such that a change dynamic characteristic acoustic emission signal becomes possible. And this will lay an important foundation for the time sequence analysis of acoustic emission event's evolution in mine water inrush, reduces the trans-mission of invalid signals and improves the efficiency of downhole communication.
topic Coal water inrush
acoustic emission
wavelet feature coding
wavelet characteristic energy spectrum
wavelet theory
url https://ieeexplore.ieee.org/document/9187876/
work_keys_str_mv AT yezhang featureextractionofminewaterinrushprecursor
AT yangzhang featureextractionofminewaterinrushprecursor
AT xuguangjia featureextractionofminewaterinrushprecursor
AT huashuoli featureextractionofminewaterinrushprecursor
AT shoufengtang featureextractionofminewaterinrushprecursor
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