基于贝叶斯优化算法与机器学习相融合的冲击地压多元指标预警研究

Research on multi-index early warning of rock burst based on bayesian optimization algorithm and machine learning

  • 摘要: 开展多类型冲击地压前兆特征机器学习与预警对于保障冲击地压矿井安全具有重要意义。以宽沟煤矿多种冲击类型的I010203综放工作面为背景,通过现场调研、理论分析、机器学习等方法,分析了该工作面发生冲击地压的主要类型,研究了在实体煤下、实体煤与采空区的过渡区域下开采时的微震能级与频次分布特征,优选了冲击地压时序上的监测预警指标,分析了大能量事件发生的前兆特征,构建了贝叶斯优化算法(Bayes)与长短期记忆网络(LSTM)结合的时间危险等级预警模型(Bayes-LSTM),并进行了模型工程实践检验。研究结果表明:该工作面大能量诱冲事件主要发生在实体煤下的区域,尤其区段煤柱邻近区域为显著,且震源能量较其他区域更大,诱冲事件多集中在超前工作面50~150 m范围内。微震事件在实体煤下工作面中间位置表现为高能高频趋势,煤柱区域以高能为主,实体煤与采空区的过渡区域为高频区域,相比之下,采空区下的能量与频次明显较低。确定了b值、a值、A(b)值、缺震、ΔFSH(t)为该工作面时序上的冲击地压多元监测预警指标,预警指标曲线演化至极值处、接近极值的下降或突增至较高值的阶段表征着大能量事件发生的前兆。构建的模型实现了每日的冲击危险程度进行分级预警。运用混淆矩阵对贝叶斯优化算法与长短期记忆网络结合的测试结果进行分析,测试集准确率达84.8%,能够准确预警大多数“强”等级事件。该模型在冲击地压的时间预警中具有良好的适用性与实用性,研究成果为冲击地压矿井监测和灾害防控提供了技术支撑。

     

    Abstract: It is of great significance to carry out machine learning and early warning of precursor characteristics of various types of rock burst for ensuring the safety of rock burst mines. Based on I010203 fully mechanized caving face with various types of impact in Kuangou Coal Mine, the main types of rock burst occurred in this face were analyzed by means of field investigation, theoretical analysis and machine learning, and the distribution characteristics of microseismic energy level and frequency during mining under solid coal and in the transition area between solid coal and goaf were studied, and the monitoring and early warning indicators of rock burst time series were optimized, and the precursor characteristics of large energy events were analyzed. A time risk level early warning model (Bayes-LSTM) combining Bayesian optimization algorithm (Bayes) with long-term and short-term memory network (LSTM) is constructed, and the model is tested in engineering practice. The research results show that the large-energy induced impact events in this working face mainly occur in the area under the solid coal, especially in the area near the coal pillar, and the focal energy is greater than other areas, and the induced impact events are mostly concentrated in the range of 50–150 meters ahead of the working face. Microseismic events show a trend of high energy and high frequency in the middle position of working face under solid coal, and the coal pillar area is dominated by high energy, and the transition area between solid coal and goaf is a high frequency area. In contrast, the energy and frequency under goaf are obviously low. B value, A value, A(b) value, lack of earthquake, δ F, S and H(t) are determined as the multivariate monitoring and early warning indicators of rock burst in the time series of the working face, and the stage when the early warning indicator curve evolves to the extreme value, drops near the extreme value or suddenly increases to a higher value indicates the precursor of large energy events. The established model realizes the graded early warning of daily impact risk. The confusion matrix is used to analyze the test results of Bayesian optimization algorithm combined with long-term and short-term memory networks. The accuracy of the test set is 84.8%, which can accurately warn most “strong” level events. The model has good applicability and practicability in the time early warning of rock burst, and the research results provide technical support for rock burst mine monitoring and disaster prevention and control.

     

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