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基于机器学习的煤岩破裂诱发电磁辐射信号智能辨识研究

李保林 冯嘉琪 王恩元 孙新宇 王硕玮

李保林,冯嘉琪,王恩元,等. 基于机器学习的煤岩破裂诱发电磁辐射信号智能辨识研究[J]. 工矿自动化,2024,50(9):144-152.  doi: 10.13272/j.issn.1671-251x.2024070019
引用本文: 李保林,冯嘉琪,王恩元,等. 基于机器学习的煤岩破裂诱发电磁辐射信号智能辨识研究[J]. 工矿自动化,2024,50(9):144-152.  doi: 10.13272/j.issn.1671-251x.2024070019
LI Baolin, FENG Jiaqi, WANG Enyuan, et al. Intelligent identification of electromagnetic radiation signals induced by coal rock fractures using machine learning[J]. Journal of Mine Automation,2024,50(9):144-152.  doi: 10.13272/j.issn.1671-251x.2024070019
Citation: LI Baolin, FENG Jiaqi, WANG Enyuan, et al. Intelligent identification of electromagnetic radiation signals induced by coal rock fractures using machine learning[J]. Journal of Mine Automation,2024,50(9):144-152.  doi: 10.13272/j.issn.1671-251x.2024070019

基于机器学习的煤岩破裂诱发电磁辐射信号智能辨识研究

doi: 10.13272/j.issn.1671-251x.2024070019
基金项目: 国家自然科学基金项目(5230042436);国家资助博士后研究人员计划项目(GZC20241583);山西省基础研究计划项目(202203021222031,202203021222043)。
详细信息
    作者简介:

    李保林(1989—),男,山西灵丘人,副教授,研究方向为煤岩动力灾害防治,E-mail:baolinli234@126.com

  • 中图分类号: TD32

Intelligent identification of electromagnetic radiation signals induced by coal rock fractures using machine learning

  • 摘要: 电磁辐射作为一种有效监测技术已应用于冲击地压、煤与瓦斯突出等煤岩动力灾害监测预警,但因电磁信号产生机制复杂,易受井下环境干扰(干扰信号)而影响灾害危险监测预警准确性。准确辨识煤岩破裂诱发的电磁辐射信号(有效信号)是该技术应用推广的关键。开展了煤岩单轴压缩电磁辐射监测实验,分析了电磁辐射有效信号和干扰信号时域、频域及分形特征差异性,分别利用线性判别法、支持向量机和集成学习法等机器学习算法建立了电磁辐射有效信号和干扰信号智能辨识模型,并对比分析了不同模型的识别精度。结果表明:分形盒维数、平均频率、计数和峰值频率特征对电磁辐射有效信号和干扰信号区分较明显,单一特征识别准确率均在70%以上;信号特征集和机器学习算法对有效信号和干扰信号识别准确率均有影响,基于全部特征集的集成学习法识别准确率最高,对2类信号的平均识别准确率为94.5%,能够满足电磁辐射监测预警应用需求。

     

  • 图  1  煤岩加载电磁辐射监测实验系统

    Figure  1.  Electromagnetic radiation monitoring experimental system for coal rock loading

    图  2  试样加载过程应力、电磁辐射能量、计数时序变化

    Figure  2.  Stress, electromagnetic radiation energy, and counting during sample loading

    图  3  典型电磁辐射有效信号与干扰信号

    Figure  3.  Typical effective signals of electromagnetic radiationand interference signals

    图  4  电磁辐射信号时域特征

    Figure  4.  Time domain characteristics of electromagnetic radiation signals

    图  5  有效信号与干扰信号时域特征统计

    Figure  5.  Statistics of time-domain characteristics for effective signals and interference signals

    图  6  有效信号与干扰信号频域特征统计

    Figure  6.  Statistics of frequency domain characteristics of effective signals and interference signals

    图  7  有效信号与干扰信号分形特征统计

    Figure  7.  Statistics of fractal characteristics of effective signals and interference signals

    图  8  单一特征识别准确率对比

    Figure  8.  Comparison of single-feature recognition accuracy

    图  9  3种机器学习算法原理

    Figure  9.  Principles of three machine learning algorithms

    图  10  不同特征集及机器学习算法的识别准确率对比

    Figure  10.  Comparison of recognition accuracy for different feature sets and machine learning algorithms

    表  1  电磁辐射信号时域特征计算方法

    Table  1.   Calculation methods for time-domain characteristics of electromagnetic radiation signals

    信号特征 计算方法 含义
    计数 信号整个波动过程超过触发阈值的振荡次数 计数越大,说明信号波动越剧烈
    能量 经放大器放大后电磁辐射信号电压对时间的积分(包络线下面积) 表示信号整体波动情况,能量/绝对能量越大,说明超过触发阈值的幅值越大,持续时间越长
    绝对能量 经放大器放大前电磁辐射信号电压平方的时间积分除以10 kΩ
    上升时间 信号开始时刻到最大幅值对应时刻的时间间隔 上升时间越短,说明信号起伏波动越剧烈
    持续时间 信号有效成分波动开始时刻到结束时刻的时间间隔 持续时间越长,说明信号中超过触发阈值的数据点越多
    最大幅值 信号波动幅值的最大值,单位为dB,与电压的换算关系:A=20lg(Vm/Vr)-gA为最大幅值,Vm为要换算的电压,Vr为参考电压,规定1 μV对应0 dB,g为触发阈值 表示信号波动的最大范围,幅值越大,说明煤岩破裂或干扰引起的幅值波动范围越大
    均方根 $ {\text{RMS}} = \sqrt {\dfrac{1}{T}\displaystyle \int_{{T_1}}^{{T_2}} {{{V^2(t)}}{\mathrm{d}}t} } $ 表示信号幅值偏离均值的程度。均方根越大,说明信号波动过程中偏离均值的程度越大
    方差 $ {S^{\text{2}}} = \displaystyle \sum\limits_{{t=T_1}}^{{T_2}} {{{(V(t) - \bar V)}^2}/(n - 1)} $,$ \bar V $为信号开始时刻到结束时刻之间的平均幅值,n为持续时间内采样点总数 与均方根含义类似,方差越大,说明信号波动的离散程度越大
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  • 收稿日期:  2024-07-06
  • 修回日期:  2024-09-15
  • 网络出版日期:  2024-08-30

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