矿山爆破伴随地震事件的分类

IF 0.3 Q4 GEOCHEMISTRY & GEOPHYSICS
K. G. Morozova, A. A. Ostapchuk, A. N. Besedina, D. V. Pavlov
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引用次数: 0

摘要

本文提出了一种新的声波和微震发射分类方法(KLASI-k),该方法分析了波形参数(上升时间幅值RA、平均频率AF和波形指数WI)。该方法基于k-means聚类,这使得分离地震能量(发射地震能量与释放地震矩的比率)和震源持续时间不同的事件子集成为可能。在对地震事件进行分类时,基本上有可能将震源参数(地震能量Es、地震矩M0和角频率f0)作为KLASI-k算法的特征。从波形参数{RA, AF, WI}到源参数{Es, M0, f0}的转换过程中,事件分类子集之间具有良好的对应关系。将KLASI-k方法应用于KMAruda矿业公司位于Korobkovskoe铁矿的Gubkin矿山的两次波纹爆炸诱发的矿山地震活动性数据。分析的目录包括2019年7月6日爆炸后记录的77个微事件和2020年10月24日爆炸后记录的259个微事件。应用KLASI-k方法可以在地震表中分离出两个子集。第一类事件的标度地震能量(Es/M0)高于10-7 J/(N m),而第二类事件的标度地震能量(Es/M0)低于10-7 J/(N m),第一类事件的震源持续时间小于第二类事件;释放的地震力矩是相同的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Classification of Seismic Events Accompanying Mine Blasting

Classification of Seismic Events Accompanying Mine Blasting

The article presents a new method of classifying acoustic and microseismic emission (KLASI-k), which analyzes waveform parameters (the rise time amplitude RA, average frequency AF, and the waveform index WI). The method is based on k-means clustering, which makes it possible to separate subsets of events differing in scaled seismic energy (the ratio of emitted seismic energy to released seismic moment) and source duration. In classifying seismic events, there is the fundamental possibility of using the source parameters (seismic energy Es, seismic moment M0, and corner frequency f0) as the features of the KLASI-k algorithm. Good correspondence is observed between the classified subsets of events in the transition from waveform parameters {RAAFWI} to source parameters {EsM0f0}. The KLASI-k method was applied to the data on mining seismicity induced by two ripple-fired blasts in the Gubkin Mine of the KMAruda Mining Enterprise at the Korobkovskoe iron ore deposit. The analyzed catalogs include 77 microevents recorded after the blast on July 6, 2019 and 259 microevents after the blast on October 24, 2020. Applying the KLASI-k method has made it possible to separate two subsets in the seismic catalogs. The events in the first subset show a scaled seismic energy (Es/M0) higher than 10–7 J/(N m), while those in the second subset, lower than 10–7 J/(N m). The first type of events have a smaller source duration than those of the second type; the released seismic moment is the same.

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来源期刊
Seismic Instruments
Seismic Instruments GEOCHEMISTRY & GEOPHYSICS-
自引率
44.40%
发文量
45
期刊介绍: Seismic Instruments is a journal devoted to the description of geophysical instruments used in seismic research. In addition to covering the actual instruments for registering seismic waves, substantial room is devoted to solving instrumental-methodological problems of geophysical monitoring, applying various methods that are used to search for earthquake precursors, to studying earthquake nucleation processes and to monitoring natural and technogenous processes. The description of the construction, working elements, and technical characteristics of the instruments, as well as some results of implementation of the instruments and interpretation of the results are given. Attention is paid to seismic monitoring data and earthquake catalog quality Analysis.
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