曾一凡, 梅傲霜, 武 强, 华照来, 赵 頔, 杜 鑫, 王 路, 吕 扬, 潘 旭. 基于水化学场与水动力场示踪模拟耦合的矿井涌( 突) 水水源判识[J]. 煤炭学报, 2022, 47(12): 4482-4494.
引用本文: 曾一凡, 梅傲霜, 武 强, 华照来, 赵 頔, 杜 鑫, 王 路, 吕 扬, 潘 旭. 基于水化学场与水动力场示踪模拟耦合的矿井涌( 突) 水水源判识[J]. 煤炭学报, 2022, 47(12): 4482-4494.
ZENG Yifan, MEI Aoshuang, WU Qiang, HUA Zhaolai, ZHAO Di, DU Xin, WANG Lu, LÜ Yang, PAN Xu. Source discrimination of mine water inflow or inrush using hydrochemical field and hydrodynamic field tracer simulation coupling[J]. Journal of China Coal Society, 2022, 47(12): 4482-4494.
Citation: ZENG Yifan, MEI Aoshuang, WU Qiang, HUA Zhaolai, ZHAO Di, DU Xin, WANG Lu, LÜ Yang, PAN Xu. Source discrimination of mine water inflow or inrush using hydrochemical field and hydrodynamic field tracer simulation coupling[J]. Journal of China Coal Society, 2022, 47(12): 4482-4494.

基于水化学场与水动力场示踪模拟耦合的矿井涌( 突) 水水源判识

Source discrimination of mine water inflow or inrush using hydrochemical field and hydrodynamic field tracer simulation coupling

  • 摘要: 为了弥补现有方法判识结果缺少实际水循环的支撑与验证,以及对实际采矿过程中 涌( 突) 水现象与矿井立体水文地质模型等结合不足的问题,提出一种基于水化学场机器学习分析 与水动力场反向示踪模拟耦合的矿井涌(突)水水源综合判识技术。 该技术首先利用水文地球化 学的原理揭示矿井涌(突)水及其可能来源含水层(水体)的水化学特征,利用特征的相似性对 涌(突)水来源进行定性分析;随后利用机器学习算法对涌(突)水来源进行定量判识;最后建立渗 流场数值模型,实现涌(突)水来源的再验证与涌水路径的可视化输出。 以曹家滩煤矿为工程实 例,运用该方法对 122108 和 122109 两个工作面的涌水来源进行判识,研究结果表明:随着深度的 增加,研究区地下水中阴离子始终以 HCO-3 为主导,而阳离子则呈现由 Ca2+ 为主导过渡到 Na+ +K+ 为主导的趋势;支持向量机(SVM)需要额外利用遗传算法(GA)等方法对惩罚系数 c 和核函数参 数 g 进行优选,而随机森林(RF)无需复杂的参数设置和优化便能得到较为满意的性能,且具有更 高的准确性;矿井涌(突)水渗流场可视化模型反向示踪显示 122109 工作面在红土隔水层“天窗” 附近,存在第四系含水层地下水通过导水裂隙带涌入工作面的情况。 该技术判识出 122108 工作面 涌水来源于直罗组和延安组含水层地下水,122109 工作面涌水来源于第四系含水层地下水,判识 结果与工程实际情况相吻合。

     

    Abstract: Accurate source discrimination of mine water inflow or inrush is of great significance to ensure the sustain⁃ able and safe production of coal mines. A comprehensive source identification technique of mine water inflow or inrush based on the hydrochemical field machine learning analysis and hydrodynamic field reverse tracer simulation is proposed,in order to make up for the lack of support and verification of the actual water cycle in the identification results of the present methods, as well as the insufficient combination of mine water inflow or inrush phenomenon and mine three⁃dimensional hydrogeological model in the actual mining process. Firstly,the principle of hydrogeochemistry is used to reveal the hydrochemical characteristics of mine water inflow or inrush and its possible source aquifer(water body),and the similarity of characteristics is used to qualitatively analyze the source of water inrush.Then,the machine learning algorithm is used to quantitatively identify the source of water inflow or inrush. Finally,the numerical model of the seepage field is established to realize the re⁃verification of water source and the visual output of water path. Tak⁃ ing the Caojiatan Coal Mine as an engineering example,this method is used to identify the water inflow sources of No.122108 and No.122109 working faces. Research results show that the anions in groundwater in the study area are always dominated by HCO-3 ,while the cations show a trend of transitioning from the dominance of Ca2+ to the domi⁃ nance of Na+ + K+ with the increase of depth. Support Vector Machine ( SVM ) requires an extra Genetic Algorithm(GA)to optimize penalty coefficient c and kernel function parameter g. Random Forest(RF)can obtain satis⁃ factory performance without complicated parameter setting and optimization, and has higher accuracy. Visualiza⁃ tion model of mine water inflow or inrush seepage field reverse tracing shows that the NO.122109 working face is loca⁃ ted nearby in the skylight of laterite aquifuge,and there is a situation that groundwater in the Quaternary aquifer flows into working face through water⁃conducting fractured zone. The result of the NO.122108 working face water inflow i⁃ dentified by the method is the groundwater of the Zhiluo Formation and the Yan’an Formation aquifers,and the NO. 122109 working face is the groundwater of the Quaternary aquifer. The identification results are consistent with the ac⁃ tual situation of the coal mine.

     

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