Machine learning methods for rockburst prediction-state-of-the-art review

One of the most serious mining disasters in underground mines is rockburst phenomena. They can lead to injuries and even fatalities as well as damage to underground openings and mining equipment. This has forced many researchers to investigate alternative methods to predict the potential for rockbur...

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Main Authors: Yuanyuan Pu, Derek B. Apel, Victor Liu, Hani Mitri
Format: Article
Language:English
Published: Elsevier 2019-07-01
Series:International Journal of Mining Science and Technology
Online Access:http://www.sciencedirect.com/science/article/pii/S2095268619302812
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spelling doaj-c966d09fe6944a80aeea589ab306919c2020-11-24T21:55:22ZengElsevierInternational Journal of Mining Science and Technology2095-26862019-07-01294565570Machine learning methods for rockburst prediction-state-of-the-art reviewYuanyuan Pu0Derek B. Apel1Victor Liu2Hani Mitri3School of Mining and Petroleum Engineering, University of Alberta, Edmonton T6G 2R3, CanadaSchool of Mining and Petroleum Engineering, University of Alberta, Edmonton T6G 2R3, Canada; Corresponding author.School of Mining and Petroleum Engineering, University of Alberta, Edmonton T6G 2R3, CanadaDepartment of Mining and Materials Engineering, McGill University, Montreal H3A 2T6, CanadaOne of the most serious mining disasters in underground mines is rockburst phenomena. They can lead to injuries and even fatalities as well as damage to underground openings and mining equipment. This has forced many researchers to investigate alternative methods to predict the potential for rockburst occurrence. However, due to the highly complex relation between geological, mechanical and geometric parameters of the mining environment, the traditional mechanics-based prediction methods do not always yield precise results. With the emergence of machine learning methods, a breakthrough in the prediction of rockburst occurrence has become possible in recent years. This paper presents a state-of-the-art review of various applications of machine learning methods for the prediction of rockburst potential. First, existing rockburst prediction methods are introduced, and the limitations of such methods are highlighted. A brief overview of typical machine learning methods and their main features as predictive tools is then presented. The current applications of machine learning models in rockburst prediction are surveyed, with related mechanisms, technical details and performance analysis. Keywords: Rockburst prediction, Burst liability, Artificial neural network, Support vector machine, Deep learninghttp://www.sciencedirect.com/science/article/pii/S2095268619302812
collection DOAJ
language English
format Article
sources DOAJ
author Yuanyuan Pu
Derek B. Apel
Victor Liu
Hani Mitri
spellingShingle Yuanyuan Pu
Derek B. Apel
Victor Liu
Hani Mitri
Machine learning methods for rockburst prediction-state-of-the-art review
International Journal of Mining Science and Technology
author_facet Yuanyuan Pu
Derek B. Apel
Victor Liu
Hani Mitri
author_sort Yuanyuan Pu
title Machine learning methods for rockburst prediction-state-of-the-art review
title_short Machine learning methods for rockburst prediction-state-of-the-art review
title_full Machine learning methods for rockburst prediction-state-of-the-art review
title_fullStr Machine learning methods for rockburst prediction-state-of-the-art review
title_full_unstemmed Machine learning methods for rockburst prediction-state-of-the-art review
title_sort machine learning methods for rockburst prediction-state-of-the-art review
publisher Elsevier
series International Journal of Mining Science and Technology
issn 2095-2686
publishDate 2019-07-01
description One of the most serious mining disasters in underground mines is rockburst phenomena. They can lead to injuries and even fatalities as well as damage to underground openings and mining equipment. This has forced many researchers to investigate alternative methods to predict the potential for rockburst occurrence. However, due to the highly complex relation between geological, mechanical and geometric parameters of the mining environment, the traditional mechanics-based prediction methods do not always yield precise results. With the emergence of machine learning methods, a breakthrough in the prediction of rockburst occurrence has become possible in recent years. This paper presents a state-of-the-art review of various applications of machine learning methods for the prediction of rockburst potential. First, existing rockburst prediction methods are introduced, and the limitations of such methods are highlighted. A brief overview of typical machine learning methods and their main features as predictive tools is then presented. The current applications of machine learning models in rockburst prediction are surveyed, with related mechanisms, technical details and performance analysis. Keywords: Rockburst prediction, Burst liability, Artificial neural network, Support vector machine, Deep learning
url http://www.sciencedirect.com/science/article/pii/S2095268619302812
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AT derekbapel machinelearningmethodsforrockburstpredictionstateoftheartreview
AT victorliu machinelearningmethodsforrockburstpredictionstateoftheartreview
AT hanimitri machinelearningmethodsforrockburstpredictionstateoftheartreview
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