A Laboratory Study on Stress Dependency of Joint Transmissivity and its Modeling with Neural Networks, Fuzzy Method and Regression Analysis

Correct estimation of water inflow into underground excavations can decrease safety risks and associated costs. Researchers have proposed different methods to asses this value. It has been proved that water transmissivity of a rock joint is a function of factors, such as normal stress, joint roughne...

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Main Authors: Amin Moori Roozali, Mohammad Farouq Hossaini, Mahdi Moosavi, Morteza Beiki
Format: Article
Language:English
Published: University of Tehran 2014-08-01
Series:International Journal of Mining and Geo-Engineering
Subjects:
Online Access:http://ijmge.ut.ac.ir/article_30516_6f6c1eb497d3ba60b786d99751c77777.pdf
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spelling doaj-4526461673f243b59c29f388edb69f912020-11-24T22:36:10ZengUniversity of TehranInternational Journal of Mining and Geo-Engineering2345-69302345-69492014-08-01461576630516A Laboratory Study on Stress Dependency of Joint Transmissivity and its Modeling with Neural Networks, Fuzzy Method and Regression AnalysisAmin Moori Roozali0Mohammad Farouq Hossaini1Mahdi Moosavi2Morteza Beiki3School of Mining, College of Engineering, University of TehranSchool of Mining, College of Engineering, University of TehranSchool of Mining, College of Engineering, University of TehranSchool of Mining, College of Engineering, University of TehranCorrect estimation of water inflow into underground excavations can decrease safety risks and associated costs. Researchers have proposed different methods to asses this value. It has been proved that water transmissivity of a rock joint is a function of factors, such as normal stress, joint roughness and its size and water pressure therefore, a laboratory setup was proposed to quantitatively measure the flow as a function of mentioned parameters. Among these, normal stress has proved to be the most influential parameter. With increasing joint roughness and rock sample size, water flow has decreased while increasing water pressure has a direct increasing effect on the flow. To simulate the complex interaction of these parameters, neural networks and Fuzzy method together with regression analysis have been utilized. Correlation factors between laboratory results and obtained numerical ones show good agreement which proves usefulness of these methods for assessment of water inflow.http://ijmge.ut.ac.ir/article_30516_6f6c1eb497d3ba60b786d99751c77777.pdfFractured Rock MassStress Dependent Transmissivityneural networkfuzzy method
collection DOAJ
language English
format Article
sources DOAJ
author Amin Moori Roozali
Mohammad Farouq Hossaini
Mahdi Moosavi
Morteza Beiki
spellingShingle Amin Moori Roozali
Mohammad Farouq Hossaini
Mahdi Moosavi
Morteza Beiki
A Laboratory Study on Stress Dependency of Joint Transmissivity and its Modeling with Neural Networks, Fuzzy Method and Regression Analysis
International Journal of Mining and Geo-Engineering
Fractured Rock Mass
Stress Dependent Transmissivity
neural network
fuzzy method
author_facet Amin Moori Roozali
Mohammad Farouq Hossaini
Mahdi Moosavi
Morteza Beiki
author_sort Amin Moori Roozali
title A Laboratory Study on Stress Dependency of Joint Transmissivity and its Modeling with Neural Networks, Fuzzy Method and Regression Analysis
title_short A Laboratory Study on Stress Dependency of Joint Transmissivity and its Modeling with Neural Networks, Fuzzy Method and Regression Analysis
title_full A Laboratory Study on Stress Dependency of Joint Transmissivity and its Modeling with Neural Networks, Fuzzy Method and Regression Analysis
title_fullStr A Laboratory Study on Stress Dependency of Joint Transmissivity and its Modeling with Neural Networks, Fuzzy Method and Regression Analysis
title_full_unstemmed A Laboratory Study on Stress Dependency of Joint Transmissivity and its Modeling with Neural Networks, Fuzzy Method and Regression Analysis
title_sort laboratory study on stress dependency of joint transmissivity and its modeling with neural networks, fuzzy method and regression analysis
publisher University of Tehran
series International Journal of Mining and Geo-Engineering
issn 2345-6930
2345-6949
publishDate 2014-08-01
description Correct estimation of water inflow into underground excavations can decrease safety risks and associated costs. Researchers have proposed different methods to asses this value. It has been proved that water transmissivity of a rock joint is a function of factors, such as normal stress, joint roughness and its size and water pressure therefore, a laboratory setup was proposed to quantitatively measure the flow as a function of mentioned parameters. Among these, normal stress has proved to be the most influential parameter. With increasing joint roughness and rock sample size, water flow has decreased while increasing water pressure has a direct increasing effect on the flow. To simulate the complex interaction of these parameters, neural networks and Fuzzy method together with regression analysis have been utilized. Correlation factors between laboratory results and obtained numerical ones show good agreement which proves usefulness of these methods for assessment of water inflow.
topic Fractured Rock Mass
Stress Dependent Transmissivity
neural network
fuzzy method
url http://ijmge.ut.ac.ir/article_30516_6f6c1eb497d3ba60b786d99751c77777.pdf
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