Mine Water Inrush Sources Online Discrimination Model Using Fluorescence Spectrum and CNN

Mine water inrush disasters served as severe accidents in China cause severe economic losses and threaten the safety of coal mine production. The existing mine water sources discrimination methods have to let miners collect water samples of different place in situ, which make dynamic online analysis...

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Main Authors: Yong Yang, Jianhua Yue, Jing Li, Zhong Yang
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
CNN
Online Access:https://ieeexplore.ieee.org/document/8443323/
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spelling doaj-4e8da9401439460d9ac640bf461812372021-03-29T21:11:51ZengIEEEIEEE Access2169-35362018-01-016478284783510.1109/ACCESS.2018.28665068443323Mine Water Inrush Sources Online Discrimination Model Using Fluorescence Spectrum and CNNYong Yang0Jianhua Yue1Jing Li2https://orcid.org/0000-0001-7326-622XZhong Yang3School of Resources and Geosciences, China University of Mining and Technology, Xuzhou, ChinaSchool of Resources and Geosciences, China University of Mining and Technology, Xuzhou, ChinaSchool of Information Engineering, Nanjing Audit University, Nanjing, ChinaSchool of Intelligence Science and Control Engineering, Jinling Institute of Technology, Nanjing, ChinaMine water inrush disasters served as severe accidents in China cause severe economic losses and threaten the safety of coal mine production. The existing mine water sources discrimination methods have to let miners collect water samples of different place in situ, which make dynamic online analysis virtually impossible. This paper proposes a novel inrush water source discrimination model using laser-induced fluorescence (LIF) technology and convolution neural network (CNN) to achieve mines inrush water source online discrimination which can reduce humankind involvement. Experiment collected 161 items water samples of four different water sources of Xinji No. 2 coal mine. The LIF auto launched 405-nm lasers into water samples to calculate reflected fluorescence spectra. An improved smoothing method is proposed to reduce high-frequency random fluctuations of fluorescence spectra and further to compute auto-correlation fluorescence spectra features. Based on CNN frame and spectra features, mine waters source online discrimination model is constructed. Experiment randomly selected 80 percent of samples of all for training CNN model, the remaining for testing the proposed model. Theoretical analysis and experimental results demonstrate that the recognition rate of the proposed method achieves 98%.This method is an effective assessment method to discriminate inrush water source types of mines. It provides a new train of thought to solve online discriminant inrush water source types of mines.https://ieeexplore.ieee.org/document/8443323/Fluorescence spectraCNNmine inrushwater source discrimination
collection DOAJ
language English
format Article
sources DOAJ
author Yong Yang
Jianhua Yue
Jing Li
Zhong Yang
spellingShingle Yong Yang
Jianhua Yue
Jing Li
Zhong Yang
Mine Water Inrush Sources Online Discrimination Model Using Fluorescence Spectrum and CNN
IEEE Access
Fluorescence spectra
CNN
mine inrush
water source discrimination
author_facet Yong Yang
Jianhua Yue
Jing Li
Zhong Yang
author_sort Yong Yang
title Mine Water Inrush Sources Online Discrimination Model Using Fluorescence Spectrum and CNN
title_short Mine Water Inrush Sources Online Discrimination Model Using Fluorescence Spectrum and CNN
title_full Mine Water Inrush Sources Online Discrimination Model Using Fluorescence Spectrum and CNN
title_fullStr Mine Water Inrush Sources Online Discrimination Model Using Fluorescence Spectrum and CNN
title_full_unstemmed Mine Water Inrush Sources Online Discrimination Model Using Fluorescence Spectrum and CNN
title_sort mine water inrush sources online discrimination model using fluorescence spectrum and cnn
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description Mine water inrush disasters served as severe accidents in China cause severe economic losses and threaten the safety of coal mine production. The existing mine water sources discrimination methods have to let miners collect water samples of different place in situ, which make dynamic online analysis virtually impossible. This paper proposes a novel inrush water source discrimination model using laser-induced fluorescence (LIF) technology and convolution neural network (CNN) to achieve mines inrush water source online discrimination which can reduce humankind involvement. Experiment collected 161 items water samples of four different water sources of Xinji No. 2 coal mine. The LIF auto launched 405-nm lasers into water samples to calculate reflected fluorescence spectra. An improved smoothing method is proposed to reduce high-frequency random fluctuations of fluorescence spectra and further to compute auto-correlation fluorescence spectra features. Based on CNN frame and spectra features, mine waters source online discrimination model is constructed. Experiment randomly selected 80 percent of samples of all for training CNN model, the remaining for testing the proposed model. Theoretical analysis and experimental results demonstrate that the recognition rate of the proposed method achieves 98%.This method is an effective assessment method to discriminate inrush water source types of mines. It provides a new train of thought to solve online discriminant inrush water source types of mines.
topic Fluorescence spectra
CNN
mine inrush
water source discrimination
url https://ieeexplore.ieee.org/document/8443323/
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AT jianhuayue minewaterinrushsourcesonlinediscriminationmodelusingfluorescencespectrumandcnn
AT jingli minewaterinrushsourcesonlinediscriminationmodelusingfluorescencespectrumandcnn
AT zhongyang minewaterinrushsourcesonlinediscriminationmodelusingfluorescencespectrumandcnn
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