Investigate Contribution of Multi-Microseismic Data to Rockburst Risk Prediction Using Support Vector Machine With Genetic Algorithm

As a severe hazard in coal mining and rock excavation, the rockburst is usually induced by the high energy tremor. Microseismic (MS) monitoring is suggested to forecast the rockburst risk to reduce its damage. The paper aims to investigate contribution of multi-MS data, including MS raw wave data an...

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Main Authors: Bing Ji, Fa Xie, Xinpei Wang, Shengquan He, Dazhao Song
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9043533/
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spelling doaj-c9513c4dc21e4e638ff11020fd96bbb22021-03-30T02:56:04ZengIEEEIEEE Access2169-35362020-01-018588175882810.1109/ACCESS.2020.29823669043533Investigate Contribution of Multi-Microseismic Data to Rockburst Risk Prediction Using Support Vector Machine With Genetic AlgorithmBing Ji0Fa Xie1Xinpei Wang2https://orcid.org/0000-0003-2981-7957Shengquan He3Dazhao Song4School of Control Science and Engineering, Shandong University, Jinan, ChinaSchool of Control Science and Engineering, Shandong University, Jinan, ChinaSchool of Control Science and Engineering, Shandong University, Jinan, ChinaSchool of Civil and Resources Engineering, University of Science and Technology Beijing, Beijing, ChinaSchool of Civil and Resources Engineering, University of Science and Technology Beijing, Beijing, ChinaAs a severe hazard in coal mining and rock excavation, the rockburst is usually induced by the high energy tremor. Microseismic (MS) monitoring is suggested to forecast the rockburst risk to reduce its damage. The paper aims to investigate contribution of multi-MS data, including MS raw wave data and MS energy data, to prediction of the high energy tremor, using support vector machine (SVM) together with genetic algorithm (GA). MS monitoring data recorded for more than 400 days at Wudong coal mine of Xinjiang, China, were used in the paper. 132 and 24 features are initially extracted from MS raw wave and energy data in the frequency domain, entropy and time-frequency domain, respectively. GA is not only used to select effective ones among initially extracted features, but also optimize hyperparameters for SVM to classify high energy tremors from general MS events. The performances of the proposed approach based on multi-MS data are evaluated by cross-validation. The results show that the classifier achieves 98% sensitivity, 88% accuracy and 87% specificity using both MS raw wave and energy data, which is better than solely utilizing MS raw wave (98% sensitivity, 84% accuracy and 83% specificity) or energy data (98% sensitivity, 86% accuracy and 85% specificity). These findings suggest that MS raw wave data makes important contribution to rockburst risk prediction as well as MS energy data, and the better performance can be achieved when utilizing two kinds of data simultaneously.https://ieeexplore.ieee.org/document/9043533/Rockburst risk predictionmicroseismic monitoringmicroseismic raw wave datasupport vector machinegenetic algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Bing Ji
Fa Xie
Xinpei Wang
Shengquan He
Dazhao Song
spellingShingle Bing Ji
Fa Xie
Xinpei Wang
Shengquan He
Dazhao Song
Investigate Contribution of Multi-Microseismic Data to Rockburst Risk Prediction Using Support Vector Machine With Genetic Algorithm
IEEE Access
Rockburst risk prediction
microseismic monitoring
microseismic raw wave data
support vector machine
genetic algorithm
author_facet Bing Ji
Fa Xie
Xinpei Wang
Shengquan He
Dazhao Song
author_sort Bing Ji
title Investigate Contribution of Multi-Microseismic Data to Rockburst Risk Prediction Using Support Vector Machine With Genetic Algorithm
title_short Investigate Contribution of Multi-Microseismic Data to Rockburst Risk Prediction Using Support Vector Machine With Genetic Algorithm
title_full Investigate Contribution of Multi-Microseismic Data to Rockburst Risk Prediction Using Support Vector Machine With Genetic Algorithm
title_fullStr Investigate Contribution of Multi-Microseismic Data to Rockburst Risk Prediction Using Support Vector Machine With Genetic Algorithm
title_full_unstemmed Investigate Contribution of Multi-Microseismic Data to Rockburst Risk Prediction Using Support Vector Machine With Genetic Algorithm
title_sort investigate contribution of multi-microseismic data to rockburst risk prediction using support vector machine with genetic algorithm
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description As a severe hazard in coal mining and rock excavation, the rockburst is usually induced by the high energy tremor. Microseismic (MS) monitoring is suggested to forecast the rockburst risk to reduce its damage. The paper aims to investigate contribution of multi-MS data, including MS raw wave data and MS energy data, to prediction of the high energy tremor, using support vector machine (SVM) together with genetic algorithm (GA). MS monitoring data recorded for more than 400 days at Wudong coal mine of Xinjiang, China, were used in the paper. 132 and 24 features are initially extracted from MS raw wave and energy data in the frequency domain, entropy and time-frequency domain, respectively. GA is not only used to select effective ones among initially extracted features, but also optimize hyperparameters for SVM to classify high energy tremors from general MS events. The performances of the proposed approach based on multi-MS data are evaluated by cross-validation. The results show that the classifier achieves 98% sensitivity, 88% accuracy and 87% specificity using both MS raw wave and energy data, which is better than solely utilizing MS raw wave (98% sensitivity, 84% accuracy and 83% specificity) or energy data (98% sensitivity, 86% accuracy and 85% specificity). These findings suggest that MS raw wave data makes important contribution to rockburst risk prediction as well as MS energy data, and the better performance can be achieved when utilizing two kinds of data simultaneously.
topic Rockburst risk prediction
microseismic monitoring
microseismic raw wave data
support vector machine
genetic algorithm
url https://ieeexplore.ieee.org/document/9043533/
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