Predicting the Water-Conducting Fracture Zone (WCFZ) Height Using an MPGA-SVR Approach

Mine water that inrushes from coal-roof strata has always posed a substantial threat to mining activities every year. Therefore, an accurate prediction of the water-conducting fracture zone (WCFZ) height in the mining overburden strata is of great significance for the prevention and control of mine...

Full description

Bibliographic Details
Main Authors: Changfang Guo, Zhen Yang, Shen Li, Jinfu Lou
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/5/1809
id doaj-6868eeaaae404ab6b8678af5a3dbdae3
record_format Article
spelling doaj-6868eeaaae404ab6b8678af5a3dbdae32020-11-25T00:31:47ZengMDPI AGSustainability2071-10502020-02-01125180910.3390/su12051809su12051809Predicting the Water-Conducting Fracture Zone (WCFZ) Height Using an MPGA-SVR ApproachChangfang Guo0Zhen Yang1Shen Li2Jinfu Lou3School of Mines, China University of Mining & Technology, Xuzhou 221116, ChinaSchool of Mines, China University of Mining & Technology, Xuzhou 221116, ChinaYongcheng Coal and Electricity Holding Group Co. Ltd, Henan Energy and Chemical Industry Group, Yongcheng 476600, Henan, ChinaDepartment of Mining and Metallurgical Engineering, Western Australian School Mines, Curtin University, Kalgoorlie 6430, AustraliaMine water that inrushes from coal-roof strata has always posed a substantial threat to mining activities every year. Therefore, an accurate prediction of the water-conducting fracture zone (WCFZ) height in the mining overburden strata is of great significance for the prevention and control of mine water accidents. The support vector regression (SVR) is proposed to predict the height of the WCFZ based on the mining depth, hard rock proportional coefficient, mining thickness and length of the working face. Simultaneously, the multi-population genetic algorithm (MPGA) is employed to search for the optimal SVR parameters. The MPGA-SVR model is trained and tested with a total of 69 collected data samples, and it is also applied to a field test. The accuracy and stability of the model were measured by the mean squared error and correlation coefficients. The obtained results show that the MPGA-SVR model achieves a higher accuracy and stability than the traditional empirical formula and genetic algorithm (GA)-SVR model. In terms of the process for optimizing the SVR parameters, the MPGA can find the optimal parameters more quickly and accurately, and it can effectively overcome the problem of premature and slow convergence of the genetic algorithm (GA). The proposed model improves the prediction accuracy and stability, which will help to avoid accidents caused by the inrush of water inrush in mining overburden strata and protect the ecological environment of the mining area.https://www.mdpi.com/2071-1050/12/5/1809ecological environmentmine water inrushwater-conducting fracture zonesupport vector regressionmulti-population genetic algorithmfractured rocks
collection DOAJ
language English
format Article
sources DOAJ
author Changfang Guo
Zhen Yang
Shen Li
Jinfu Lou
spellingShingle Changfang Guo
Zhen Yang
Shen Li
Jinfu Lou
Predicting the Water-Conducting Fracture Zone (WCFZ) Height Using an MPGA-SVR Approach
Sustainability
ecological environment
mine water inrush
water-conducting fracture zone
support vector regression
multi-population genetic algorithm
fractured rocks
author_facet Changfang Guo
Zhen Yang
Shen Li
Jinfu Lou
author_sort Changfang Guo
title Predicting the Water-Conducting Fracture Zone (WCFZ) Height Using an MPGA-SVR Approach
title_short Predicting the Water-Conducting Fracture Zone (WCFZ) Height Using an MPGA-SVR Approach
title_full Predicting the Water-Conducting Fracture Zone (WCFZ) Height Using an MPGA-SVR Approach
title_fullStr Predicting the Water-Conducting Fracture Zone (WCFZ) Height Using an MPGA-SVR Approach
title_full_unstemmed Predicting the Water-Conducting Fracture Zone (WCFZ) Height Using an MPGA-SVR Approach
title_sort predicting the water-conducting fracture zone (wcfz) height using an mpga-svr approach
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-02-01
description Mine water that inrushes from coal-roof strata has always posed a substantial threat to mining activities every year. Therefore, an accurate prediction of the water-conducting fracture zone (WCFZ) height in the mining overburden strata is of great significance for the prevention and control of mine water accidents. The support vector regression (SVR) is proposed to predict the height of the WCFZ based on the mining depth, hard rock proportional coefficient, mining thickness and length of the working face. Simultaneously, the multi-population genetic algorithm (MPGA) is employed to search for the optimal SVR parameters. The MPGA-SVR model is trained and tested with a total of 69 collected data samples, and it is also applied to a field test. The accuracy and stability of the model were measured by the mean squared error and correlation coefficients. The obtained results show that the MPGA-SVR model achieves a higher accuracy and stability than the traditional empirical formula and genetic algorithm (GA)-SVR model. In terms of the process for optimizing the SVR parameters, the MPGA can find the optimal parameters more quickly and accurately, and it can effectively overcome the problem of premature and slow convergence of the genetic algorithm (GA). The proposed model improves the prediction accuracy and stability, which will help to avoid accidents caused by the inrush of water inrush in mining overburden strata and protect the ecological environment of the mining area.
topic ecological environment
mine water inrush
water-conducting fracture zone
support vector regression
multi-population genetic algorithm
fractured rocks
url https://www.mdpi.com/2071-1050/12/5/1809
work_keys_str_mv AT changfangguo predictingthewaterconductingfracturezonewcfzheightusinganmpgasvrapproach
AT zhenyang predictingthewaterconductingfracturezonewcfzheightusinganmpgasvrapproach
AT shenli predictingthewaterconductingfracturezonewcfzheightusinganmpgasvrapproach
AT jinfulou predictingthewaterconductingfracturezonewcfzheightusinganmpgasvrapproach
_version_ 1725322427586576384