Research on automatic picking of microseismic first arrival
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摘要: 微震初至波到时准确拾取是实现震源定位的前提,传统的人工拾取方法效率低、耗时长,而自动拾取方法中常用的长短时窗能量比值(STA/LTA)法对低信噪比信号的拾取准确率较低。针对上述问题,提出了一种基于随机森林的微震初至波到时自动拾取方法。首先,提取微震数据的振幅、能量及相邻时刻振幅比作为特征,并对每个样本进行特征类别标记;然后,构建随机森林模型以识别微震初至波;最后,采用随机森林模型计算每个测试样本属于某一类别的概率,将概率不小于0.5的第1个数据采样点判定为微震初至波到时采样点。采用煤矿井下巷道深孔中的微震监测数据进行实验,结果表明当随机森林算法中决策树的数量和最大深度分别为137,6时,该方法对微震数据样本分类的准确率达98.5%,对微震初至波到时的平均拾取误差为23.1 ms,拾取精度优于STA/LTA方法。Abstract: Accurate picking of the first arrival of microseisms is the prerequisite for the estimation of source location. The traditional manual picking method is inefficient and time-consuming. The short time average long time average (STA/LTA) method, commonly used in automatic picking, has low picking accuracy for low signal-to-noise ratio signals. To address the above problems, a random forest-based automatic picking method of microseismic first arrival is proposed. Firstly, this study extracts the amplitude, energy and amplitude ratio of adjacent moments of microseismic data as features and mark each sample with feature categories. Secondly, a random forest model is constructed to identify microseismic first arrivals. Thirdly, the random forest model is used to calculate the probability of each test sample belonging to a certain category, and the first data sampling point with a probability of no less than 0.5 is defined as the microseismic first arrivals sampling point. In this experiment, microseismic monitoring data in deep boreholes of coal mine roadways is used. The results show that as the number of decision trees reaching 137 and the maximum depth reaching 6 in the random forest algorithm, the accuracy of the method for classifying microseismic data samples could reach 98.5%, and the average picking error for first arrivals of microseismic is 23.1 ms. Therefore, this method is better than the method of STA/LTA in terms of picking accuracy.
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