Research on acoustic emission precursor characteristics of coal sample unloading failure based on discrete wavelet analysis

Abstract Acoustic emission information can describe the damage degree of rock samples in the process of failure. However, as a discrete non-stationary signal, acoustic emission information is difficult to be effectively processed by conventional methods, while wavelet analysis is an effective method...

Full description

Saved in:
Bibliographic Details
Main Authors: Shaojie Ma, Yan Zhou, Depeng Ma
Format: Article
Language:English
Published: Nature Portfolio 2024-12-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-024-83153-5
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1841559483844657152
author Shaojie Ma
Yan Zhou
Depeng Ma
author_facet Shaojie Ma
Yan Zhou
Depeng Ma
author_sort Shaojie Ma
collection DOAJ
description Abstract Acoustic emission information can describe the damage degree of rock samples in the process of failure. However, as a discrete non-stationary signal, acoustic emission information is difficult to be effectively processed by conventional methods, while wavelet analysis is an effective method for non-stationary signal processing. Therefore, acoustic emission signal is deeply studied by using wavelet analysis method. In this paper, on the basis of noise reduction of acoustic emission signal, Matlab calculation program is used to decompose the acoustic emission signal of coal sample under the confining pressure test of triaxial unloading, and the singularity detection is carried out. The results show that the time when the Lipschitz index value first appears α negative can be used as the prediction time. However, the corresponding time when the Lipschitz index value is -0.15~-0.31 should be excluded; The absolute range of the difference between the final forecast time and the actual rupture time of coal samples is [5.2s, 17.1s], and the coal samples with the absolute value of time difference within [5.2s, 10.0s] account for 63.6% of the total.
format Article
id doaj-art-18959acba72f4bee8bda7e5ecd188e52
institution Kabale University
issn 2045-2322
language English
publishDate 2024-12-01
publisher Nature Portfolio
record_format Article
series Scientific Reports
spelling doaj-art-18959acba72f4bee8bda7e5ecd188e522025-01-05T12:27:06ZengNature PortfolioScientific Reports2045-23222024-12-0114111110.1038/s41598-024-83153-5Research on acoustic emission precursor characteristics of coal sample unloading failure based on discrete wavelet analysisShaojie Ma0Yan Zhou1Depeng Ma2Chongqing Vocational Institute of EngineeringShandong Agricultural UniversityShandong Agricultural UniversityAbstract Acoustic emission information can describe the damage degree of rock samples in the process of failure. However, as a discrete non-stationary signal, acoustic emission information is difficult to be effectively processed by conventional methods, while wavelet analysis is an effective method for non-stationary signal processing. Therefore, acoustic emission signal is deeply studied by using wavelet analysis method. In this paper, on the basis of noise reduction of acoustic emission signal, Matlab calculation program is used to decompose the acoustic emission signal of coal sample under the confining pressure test of triaxial unloading, and the singularity detection is carried out. The results show that the time when the Lipschitz index value first appears α negative can be used as the prediction time. However, the corresponding time when the Lipschitz index value is -0.15~-0.31 should be excluded; The absolute range of the difference between the final forecast time and the actual rupture time of coal samples is [5.2s, 17.1s], and the coal samples with the absolute value of time difference within [5.2s, 10.0s] account for 63.6% of the total.https://doi.org/10.1038/s41598-024-83153-5Acoustic emissionUnloading confining pressureDiscrete waveletLipschitzCoal sample
spellingShingle Shaojie Ma
Yan Zhou
Depeng Ma
Research on acoustic emission precursor characteristics of coal sample unloading failure based on discrete wavelet analysis
Scientific Reports
Acoustic emission
Unloading confining pressure
Discrete wavelet
Lipschitz
Coal sample
title Research on acoustic emission precursor characteristics of coal sample unloading failure based on discrete wavelet analysis
title_full Research on acoustic emission precursor characteristics of coal sample unloading failure based on discrete wavelet analysis
title_fullStr Research on acoustic emission precursor characteristics of coal sample unloading failure based on discrete wavelet analysis
title_full_unstemmed Research on acoustic emission precursor characteristics of coal sample unloading failure based on discrete wavelet analysis
title_short Research on acoustic emission precursor characteristics of coal sample unloading failure based on discrete wavelet analysis
title_sort research on acoustic emission precursor characteristics of coal sample unloading failure based on discrete wavelet analysis
topic Acoustic emission
Unloading confining pressure
Discrete wavelet
Lipschitz
Coal sample
url https://doi.org/10.1038/s41598-024-83153-5
work_keys_str_mv AT shaojiema researchonacousticemissionprecursorcharacteristicsofcoalsampleunloadingfailurebasedondiscretewaveletanalysis
AT yanzhou researchonacousticemissionprecursorcharacteristicsofcoalsampleunloadingfailurebasedondiscretewaveletanalysis
AT depengma researchonacousticemissionprecursorcharacteristicsofcoalsampleunloadingfailurebasedondiscretewaveletanalysis