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Volume 45 Issue 1
Jan.  2023
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Article Contents
LI Zhen-lei, LI Na, YANG Fei, SOBOLEV Aleksei, SONG Da-zhao, WANG Hong-lei, NA Ran, CAO Ya-li. Applying feature extraction of acoustic emission and machine learning for coal failure forecasting[J]. Chinese Journal of Engineering, 2023, 45(1): 19-30. doi: 10.13374/j.issn2095-9389.2022.02.07.003
Citation: LI Zhen-lei, LI Na, YANG Fei, SOBOLEV Aleksei, SONG Da-zhao, WANG Hong-lei, NA Ran, CAO Ya-li. Applying feature extraction of acoustic emission and machine learning for coal failure forecasting[J]. Chinese Journal of Engineering, 2023, 45(1): 19-30. doi: 10.13374/j.issn2095-9389.2022.02.07.003

Applying feature extraction of acoustic emission and machine learning for coal failure forecasting

doi: 10.13374/j.issn2095-9389.2022.02.07.003
More Information
  • Corresponding author: E-mail: songdz@ustb.edu.cn
  • Received Date: 2022-02-07
    Available Online: 2022-05-17
  • Publish Date: 2023-01-01
  • Recently, with increasing mining scale, intensity, and depth, the geological and mining conditions in coal mines are becoming more complicated; therefore, it has resulted in a more difficult situation of coal mine dynamic hazards, including rockburst, coal and gas outburst etc. Dynamic hazards are now posing a serious threat to the safety of coal mining. The precise forecasting of dynamic hazards is significant to their effective control. The acoustic emission (AE) monitoring technique is an effective geophysical monitoring and early warning method which can effectively reveal the characteristics and laws of coal and rock failure under loading. It has been successfully applied in the laboratory and engineering fields. To deeply analyze the characteristics of AE signals in the process of coal-rock damage and failure, thus, to help realize the precise monitoring and early warning of coal mine dynamic hazards, this study first conducted a uniaxial compression test on coal samples in the laboratory, and at the meantime, synchronously collected the full waveform data of AE and the loading data in the entire process of coal failure. Subsequently, using the feature extraction technique in the field of automatic speech recognition, this study extracted the Mel-frequency cepstral coefficient (MFCC) of AE and used it as the sample feature; the stress state of the coal sample was defined as the ratio of the current load the sample bore to its peak load and was employed as the sample label; a model for coal failure state forecasting was established by adopting machine learning methodology. Finally, the model’s forecasting accuracy was evaluated using the five-fold cross-validation method; the influence of different MFCC combinations as sample features on the forecasting accuracy of the model was discussed. The results show that MFCC can well characterize the failure state of coal samples. This parameter behaves in regular variation with increasing loading and shows the law of an obvious sudden increase or sudden decrease or increase followed by a sudden decrease when the loading exceeds 80% of the coal sample’s peak load. The established model can be well used to forecast coal failure state. The accuracy (ACC), true positive rate (TPR), true negative rate (TNR), and area under the curve (AUC) of the model forecasting reach 88.61%, 72.34%, 93.16%, and 0.93, respectively. Machine learning methodology can fully use MFCC features of AE and can identify essential sample features that are difficult to identify with the human eyes. Significant and key features included in the samples are the keys to the high forecasting accuracy of the model. TPR, TNR, and AUC of the model forecasting would be significantly influenced if crucial features were excluded from the samples. Adding features with low importance to the samples has little influence on the forecasting result of the model. This study’s results can provide a reference for further improving the prediction and early warning of coal and rock dynamic hazards.

     

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  • [1]
    李長洪, 卜磊, 魏曉明, 等. 深部開采安全機理及災害防控現狀與態勢分析. 工程科學學報, 2017, 39(8):1129

    Li C H, Bu L, Wei X M, et al. Current status and future trends of deep mining safety mechanism and disaster prevention and control. Chin J Eng, 2017, 39(8): 1129
    [2]
    李夕兵, 宮鳳強. 基于動靜組合加載力學試驗的深部開采巖石力學研究進展與展望. 煤炭學報, 2021, 46(3):846

    Li X B, Gong F Q. Research progress and prospect of deep mining rock mechanics based on coupled static-dynamic loading testing. J China Coal Soc, 2021, 46(3): 846
    [3]
    劉志強, 宋朝陽, 紀洪廣, 等. 深部礦產資源開采礦井建設模式及其關鍵技術. 煤炭學報, 2021, 46(3):826

    Liu Z Q, Song Z Y, Ji H G, et al. Construction mode and key technology of mining shaft engineering for deep mineral resources. J China Coal Soc, 2021, 46(3): 826
    [4]
    齊慶新, 潘一山, 舒龍勇, 等. 煤礦深部開采煤巖動力災害多尺度分源防控理論與技術架構. 煤炭學報, 2018, 43(7):1801

    Qi Q X, Pan Y S, Shu L Y, et al. Theory and technical framework of prevention and control with different sources in multi-scales for coal and rock dynamic disasters in deep mining of coal mines. J China Coal Soc, 2018, 43(7): 1801
    [5]
    何學秋, 竇林名, 牟宗龍, 等. 煤巖沖擊動力災害連續監測預警理論與技術. 煤炭學報, 2014, 39(8):1485

    He X Q, Dou L M, Mu Z L, et al. Continuous monitoring and warning theory and technology of rock burst dynamic disaster of coal. J China Coal Soc, 2014, 39(8): 1485
    [6]
    Li Z L, He S Q, Song D Z, et al. Microseismic temporal-spatial precursory characteristics and early warning method of rockburst in steeply inclined and extremely thick coal seam. Energies, 2021, 14(4): 1186 doi: 10.3390/en14041186
    [7]
    婁全, 何學秋, 宋大釗, 等. 基于全波形的煤樣單軸壓縮破壞聲電時頻特征. 工程科學學報, 2019, 41(7):874

    Lou Q, He X Q, Song D Z, et al. Time-frequency characteristics of acoustic-electric signals induced by coal fracture under uniaxial compression based on full-waveform. Chin J Eng, 2019, 41(7): 874
    [8]
    郭敬遠, 張玉柱. 煤單軸壓縮破壞過程聲發射特征分析. 煤炭技術, 2021, 40(4):129

    Guo J Y, Zhang Y Z. Analysis on acoustic emission characteristics of coal under uniaxial compression. Coal Technol, 2021, 40(4): 129
    [9]
    劉娟紅, 趙力, 宋少民, 等. 混凝土硫酸鹽腐蝕損傷的聲波與聲發射變化特征及機理. 工程科學學報, 2016, 38(8):1075

    Liu J H, Zhao L, Song S M, et al. Ultrasonic velocity and acoustic emission properties of concrete eroded by sulfate and its damage mechanism. Chin J Eng, 2016, 38(8): 1075
    [10]
    張進, 柴孟瑜, 項靖海, 等. 基于聲發射監測的316LN不銹鋼的疲勞損傷評價. 工程科學學報, 2018, 40(4):461

    Zhang J, Chai M Y, Xiang J H, et al. Fatigue damage evaluation of 316LN stainless steel using acoustic emission monitoring. Chin J Eng, 2018, 40(4): 461
    [11]
    Jin P J, Wang E Y, Song D Z. Study on correlation of acoustic emission and plastic strain based on coal-rock damage theory. Geomech Eng, 2017, 12(4): 627 doi: 10.12989/gae.2017.12.4.627
    [12]
    鄧緒彪, 劉遠征, 邢礦, 等. 基于聲發射時空演化的巖石全應力-應變曲線階段特征分析. 巖石力學與工程學報, 2018, 37(Suppl 2): 4086

    Deng X B, Liu Y Z, Xing K, et al. Analysis based on AE space-time evolution characteristics for stage division of whole stress-strain curve of rock. Chin J Rock Mech Eng, 2018, 37(Suppl 2): 4086
    [13]
    任建喜, 景帥, 張琨. 沖擊傾向性煤巖動靜載下破壞機理及聲發射特性研究. 煤炭科學技術, 2021, 49(3):57

    Ren J X, Jing S, Zhang K. Study on failure mechanism and acoustic emission characteristics of outburst proneness coal rock under dynamic and static loading. Coal Sci Technol, 2021, 49(3): 57
    [14]
    紀洪廣, 穆楠楠, 張月征. 沖擊地壓事件AE與壓力耦合前兆特征分析. 煤炭學報, 2013, 38(Suppl 1): 1

    Ji H G, Mu N N, Zhang Y Z. Analysis on precursory characteristics of coupled acoustic emission and pressure for rock burst events. J China Coal Soc, 2013, 38(Suppl 1): 1
    [15]
    Chelali F Z, Djeradi A. Text dependant speaker recognition using MFCC, LPC and DWT. Int J Speech Technol, 2017, 20(3): 725 doi: 10.1007/s10772-017-9441-1
    [16]
    Deshwal D, Sangwan P, Kumar D. Feature extraction methods in language identification: A survey. Wireless Pers Commun, 2019, 107(4): 2071 doi: 10.1007/s11277-019-06373-3
    [17]
    Mei Q P, Gül M, Boay M. Indirect health monitoring of bridges using Mel-frequency cepstral coefficients and principal component analysis. Mech Syst Signal Process, 2019, 119: 523 doi: 10.1016/j.ymssp.2018.10.006
    [18]
    江鶯, 俞銘津, 張夢琦. 基于BP神經網絡的電除塵火花放電識別. 信息與控制, 2019, 48(6):754

    Jiang Y, Yu M J, Zhang M Q. Spark discharge identification of electrostatic dust removal based on the back-propagation neural network. Inf Control, 2019, 48(6): 754
    [19]
    Wang H L, Song D Z, Li Z L, et al. Acoustic emission characteristics of coal failure using automatic speech recognition methodology analysis. Int J Rock Mech Min Sci, 2020, 136: 104472 doi: 10.1016/j.ijrmms.2020.104472
    [20]
    裴艷宇, 楊小彬, 傳金平, 等. 一維卷積神經網絡特征提取下微震能級時序預測. 工程科學學報, 2021, 43(7):1003

    Pei Y Y, Yang X B, Chuan J P, et al. Time series prediction of microseismic energy level based on feature extraction of onedimensional convolutional neural network. Chin J Eng, 2021, 43(7): 1003
    [21]
    何正祥, 彭平安, 廖智勤. 基于梅爾倒譜系數的礦山復雜微震信號自動識別分類方法. 中國安全生產科學技術, 2018, 14(12):41

    He Z X, Peng P G, Liao Z Q. An automatic identification and classification method of complex microseismic signals in mines based on Mel-frequency cepstral coefficients. J Saf Sci Technol, 2018, 14(12): 41
    [22]
    解滔, 鄭曉東, 張?. 基于線性預測倒譜系數的地震相分析. 地球物理學報, 2016, 59(11):4266 doi: 10.6038/cjg20161127

    Xie T, Zheng X D, Zhang Y. Seismic facies analysis based on linear prediction cepstrum coefficients. Chin J Geophys, 2016, 59(11): 4266 doi: 10.6038/cjg20161127
    [23]
    陳潤航, 黃漢明, 柴慧敏. 地震和爆破事件源波形信號的卷積神經網絡分類研究. 地球物理學進展, 2018, 33(4):1331 doi: 10.6038/pg2018BB0326

    Chen R H, Huang H M, Chai H M. Study on the discrimination of seismic waveform signals between earthquake and explosion events by convolutional neural network. Prog Geophys, 2018, 33(4): 1331 doi: 10.6038/pg2018BB0326
    [24]
    Davis S, Mermelstein P. Comparison of parametric representations for monosyllabic word recognition in continuously spoken sentences. IEEE Trans Acoust Speech Signal Process, 1980, 28(4): 357 doi: 10.1109/TASSP.1980.1163420
    [25]
    武夢婷, 陳秋松, 齊沖沖. 基于機器學習的邊坡安全穩定性評價及防護措施. 工程科學學報, 2022, 44(2):180

    Wu M T, Chen Q S, Qi C C. Slope safety, stability evaluation, and protective measures based on machine learning. Chin J Eng, 2022, 44(2): 180
    [26]
    李博. 機器學習實踐應用. 北京: 人民郵電出版社, 2017

    Li B. Practical Application of Machine Learning. Beijing: Posts & Telecom Press, 2017
    [27]
    余東昌, 趙文芳, 聶凱, 等. 基于LightGBM算法的能見度預測模型. 計算機應用, 2021, 41(4):1035

    Yu D C, Zhao W F, Nie K, et al. Visibility forecast model based on LightGBM algorithm. J Comput Appl, 2021, 41(4): 1035
    [28]
    周志華. 機器學習. 北京: 清華大學出版社, 2016

    Zhou Z H. Machine Learning. Beijing: Tsinghua University Press, 2016
    [29]
    Jung Y. Multiple predicting K-fold cross-validation for model selection. J Nonparametric Stat, 2018, 30(1): 197 doi: 10.1080/10485252.2017.1404598
    [30]
    Rodriguez J D, Perez A, Lozano J A. Sensitivity analysis of k-fold cross validation in prediction error estimation. IEEE Trans Pattern Anal Mach Intell, 2010, 32(3): 569 doi: 10.1109/TPAMI.2009.187
    [31]
    Qi C C, Fourie A, Du X H, et al. Prediction of open stope hangingwall stability using random forests. Nat Hazards, 2018, 92(2): 1179 doi: 10.1007/s11069-018-3246-7
    [32]
    劉弘歷, 武森, 魏桂英, 等. 基于深度神經網絡的點擊率預測模型. 工程科學學報,https://doi.org/10.13374/j.issn2095-9389.2021.03.23.002

    Liu H L, Wu S, Wei G Y, et al. Click-through rate prediction model based on a deep neural network. Chin J Eng,https://doi.org/10.13374/j.issn2095-9389.2021.03.23.002
    [33]
    Xue Y G, Bai C H, Qiu D H, et al. Predicting rockburst with database using particle swarm optimization and extreme learning machine. Tunn Undergr Space Technol, 2020, 98: 103287 doi: 10.1016/j.tust.2020.103287
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