Automatic P-wave Picking of Microseismic Events in Underground Mines

Thesis (Master, Mining Engineering) -- Queen's University, 2014-04-30 21:45:13.741 This thesis investigates microseismic P-wave arrival time detection performance of automatic picking algorithms, as well as the handpicking performance of human experts. The data set used in this project was coll...

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Main Author: Johnson, Stephanie
Other Authors: Mining Engineering, Daneshmend, Laeeque K., Dineva, Savka
Format: Thesis
Language:English
Published: 2014
Subjects:
Online Access:http://hdl.handle.net/1974/12165
id ftqueensuniv:oai:https://qspace.library.queensu.ca:1974/12165
record_format openpolar
spelling ftqueensuniv:oai:https://qspace.library.queensu.ca:1974/12165 2024-06-02T08:10:16+00:00 Automatic P-wave Picking of Microseismic Events in Underground Mines Johnson, Stephanie Mining Engineering Daneshmend, Laeeque K. Dineva, Savka 2014-04-30 21:45:13.741 application/pdf http://hdl.handle.net/1974/12165 eng eng Canadian theses http://hdl.handle.net/1974/12165 This publication is made available by the authority of the copyright owner solely for the purpose of private study and research and may not be copied or reproduced except as permitted by the copyright laws without written authority from the copyright owner. Mining Seismology thesis 2014 ftqueensuniv 2024-05-06T10:47:32Z Thesis (Master, Mining Engineering) -- Queen's University, 2014-04-30 21:45:13.741 This thesis investigates microseismic P-wave arrival time detection performance of automatic picking algorithms, as well as the handpicking performance of human experts. The data set used in this project was collected from Malmberget mine (LKAB, Sweden) and the handpicked P-wave arrivals were prepared by multiple expert analysts from the Institute of Mine Seismology (IMS). Characterization of the event records in the data set was completed including the magnitude distribution of the events, noise content of the traces, and frequency spectrum of the traces. Three promising automatic P-wave picking algorithms from previous seismological research were investigated: the short-term average to long-term average ratio detector (STA/LTA), the characteristic function detector (CF), and the autoregressive modelling detector (ARfpe). Several versions of each algorithm were implemented, and the most promising versions were tested on the full dataset of microseismic events. The STA/LTA algorithm and CF algorithm were superior to the ARfpe algorithm in terms of accuracy and percentage of false negatives (missed P-wave arrival time picks). The analyst P-wave arrival times were compared and statistical distributions of the analyst P-wave arrival time differences were studied. The analyst P-wave arrival time difference and algorithm P-wave arrival time difference were defined as the mean analyst P-wave arrival time minus the specific analyst P-wave arrival time pick or the specific algorithm P-wave arrival time pick. The analyst and algorithm P-wave arrival time differences were combined into separate statistical distributions and compared. The analyst P-wave arrival time distribution lengths varied by a factor of 5, and the percentage of outliers in the distribution varied between 12% and 32%. The STA/LTA algorithm had comparable distribution statistics to the worst analyst P-wave arrival in terms of median value, distribution length, and ... Thesis Malmberget Queen's University, Ontario: QSpace
institution Open Polar
collection Queen's University, Ontario: QSpace
op_collection_id ftqueensuniv
language English
topic Mining
Seismology
spellingShingle Mining
Seismology
Johnson, Stephanie
Automatic P-wave Picking of Microseismic Events in Underground Mines
topic_facet Mining
Seismology
description Thesis (Master, Mining Engineering) -- Queen's University, 2014-04-30 21:45:13.741 This thesis investigates microseismic P-wave arrival time detection performance of automatic picking algorithms, as well as the handpicking performance of human experts. The data set used in this project was collected from Malmberget mine (LKAB, Sweden) and the handpicked P-wave arrivals were prepared by multiple expert analysts from the Institute of Mine Seismology (IMS). Characterization of the event records in the data set was completed including the magnitude distribution of the events, noise content of the traces, and frequency spectrum of the traces. Three promising automatic P-wave picking algorithms from previous seismological research were investigated: the short-term average to long-term average ratio detector (STA/LTA), the characteristic function detector (CF), and the autoregressive modelling detector (ARfpe). Several versions of each algorithm were implemented, and the most promising versions were tested on the full dataset of microseismic events. The STA/LTA algorithm and CF algorithm were superior to the ARfpe algorithm in terms of accuracy and percentage of false negatives (missed P-wave arrival time picks). The analyst P-wave arrival times were compared and statistical distributions of the analyst P-wave arrival time differences were studied. The analyst P-wave arrival time difference and algorithm P-wave arrival time difference were defined as the mean analyst P-wave arrival time minus the specific analyst P-wave arrival time pick or the specific algorithm P-wave arrival time pick. The analyst and algorithm P-wave arrival time differences were combined into separate statistical distributions and compared. The analyst P-wave arrival time distribution lengths varied by a factor of 5, and the percentage of outliers in the distribution varied between 12% and 32%. The STA/LTA algorithm had comparable distribution statistics to the worst analyst P-wave arrival in terms of median value, distribution length, and ...
author2 Mining Engineering
Daneshmend, Laeeque K.
Dineva, Savka
format Thesis
author Johnson, Stephanie
author_facet Johnson, Stephanie
author_sort Johnson, Stephanie
title Automatic P-wave Picking of Microseismic Events in Underground Mines
title_short Automatic P-wave Picking of Microseismic Events in Underground Mines
title_full Automatic P-wave Picking of Microseismic Events in Underground Mines
title_fullStr Automatic P-wave Picking of Microseismic Events in Underground Mines
title_full_unstemmed Automatic P-wave Picking of Microseismic Events in Underground Mines
title_sort automatic p-wave picking of microseismic events in underground mines
publishDate 2014
url http://hdl.handle.net/1974/12165
genre Malmberget
genre_facet Malmberget
op_relation Canadian theses
http://hdl.handle.net/1974/12165
op_rights This publication is made available by the authority of the copyright owner solely for the purpose of private study and research and may not be copied or reproduced except as permitted by the copyright laws without written authority from the copyright owner.
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