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Quality control of microseismic P-phase arrival picks in coal mine based on machine learning

机译:基于机器学习的煤矿微震P阶段到达镐的质量控制

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Microseismic events generally contain strong noise-polluting and unobvious P-phase oscillating channel waveforms. The automatic P-phase arrival picking accuracy of these channel waveforms tends to be low, or even are false. Currently, unusable P-picks are not screened out automatically before geophysics inversions in most microseismic data processing software. Therefore, manual interventions are needed to remove or correct the unusable P-picks. However, rapidly increasing monitoring data causes manual handling to be time-consuming and lagging. Supervised machine learning (ML) is applied to distinguish useable and unusable P-picks automatically. Big data analysis revealed that the waveform features, including signal-to-noise ratio, signal-to-noise variance ratio, P-wave starting-up slope, and peak amplitude have impact on P-pick accuracy. In contrast, the effect of the short-time zero-crossing rate on the P-pick accuracy is not as obvious. Five P-pick quality control models were trained based on traditional machine learning approaches, including discriminant analysis, logistic regression, k-nearest neighbor, support vector machine, and Naive Bayes classifier. For these five models, the input data are P-pick labels and waveform features. In addition, another P-pick quality control model was trained based on convolutional neural network. While, the input data are P-pick images and labels. The training sets used in all six machine learning models are uniform. The testing experiments with uniform testing set show that the support vector machine generated best the performance among traditional machine learning approaches, with 82.81% accuracy. However, the convolutional neural network model generated outstanding performance in recognizing P-pick, with 91.71% accuracy. The automatic P-pick quality control method proposed in this study can facilitate the precision and efficiency of the automatic processing of microseismic signals.
机译:微震事件通常包含强烈的噪声污染和不可吸收的P阶段振荡通道波形。这些通道波形的自动P相到达拾取精度趋于低,甚至是假的。目前,在大多数微震数据处理软件中的地球物理逆之前,不会自动筛选不可用的P型。因此,需要手动干预措施来删除或纠正无法使用的P-Picks。但是,快速增加的监测数据导致手动处理耗时和滞后。监督机器学习(ML)应用于自动区分可用和不可用的P-PIPP。大数据分析显示,波形特征,包括信噪比,信号 - 噪声方差比,P波起动斜率和峰值幅度对P型精度影响。相比之下,短时零交叉率对P型精度的影响并不明显。根据传统的机器学习方法,包括判别分析,逻辑回归,k最近邻居,支持向量机和天真贝叶斯分类器,包括判断5个P挑选质量控制模型。对于这五个型号,输入数据是P拾取标签和波形功能。此外,基于卷积神经网络培训另一个P挑选质量控制模型。虽然,输入数据是P-Pick Images和标签。所有六种机器学习模型中使用的培训集是均匀的。具有均匀检测组的测试实验表明,支持向量机产生了传统机器学习方法中的最佳性能,精度为82.81%。然而,卷积神经网络模型在识别P拾取时产生出色的性能,精度为91.71%。本研究提出的自动P拾取质量控制方法可以促进微震信号自动处理的精度和效率。

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