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Erschienen in: Sustainable Water Resources Management 2/2016

01.06.2016 | Original Article

Application of artificial neural network technology to predicting small faults and folds in coal seams, China

verfasst von: Yifan Zeng, Shouqiang Liu, Wei Zhang, Yanliang Zhai

Erschienen in: Sustainable Water Resources Management | Ausgabe 2/2016

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Abstract

Small geologic structures pose a great threat to production safety of the coal mines in China. Many water hazards and rock collapses are related to these small geologic structures. Accurate prediction of these structures relies on multiple lines of evidence including coal seam dip, thickness change, amount of gas accumulated, water flow changes, temperature, fracture type and degree of fragmentation of coal seams. Through the use of artificial neural network technology, this article presents a working method for forecasting small geologic structures in coal mines. The methods are applied to Zhangcun Coal Mine, China. A nonlinear model consisting of coal seam dip and thickness is constructed to predict the small structures in the front of working faces. The predictions are verified by field data. The distribution characteristics of the small structures can be accurately predicted in the coal seam extraction process as long as data of the controlling factors are accurately collected.

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Literatur
Zurück zum Zitat Cai Y, Yang B, Sun H (1994) The application of artificial neural network to the prognosis of polymetallic deposits. Miner Depos 13(2):181–185 (in Chinese) Cai Y, Yang B, Sun H (1994) The application of artificial neural network to the prognosis of polymetallic deposits. Miner Depos 13(2):181–185 (in Chinese)
Zurück zum Zitat Cao L, Jiang Z (2002) Research on application of artificial neural network in predicting mining subsidence. J China Univ Min Technol 31(1):36–38 (in Chinese) Cao L, Jiang Z (2002) Research on application of artificial neural network in predicting mining subsidence. J China Univ Min Technol 31(1):36–38 (in Chinese)
Zurück zum Zitat Chen P, Wu Q (2001) Fatalness assessment system of earth fissure based on artificial neural network. Coal Geol Explor 29(3):44–47 (in Chinese) Chen P, Wu Q (2001) Fatalness assessment system of earth fissure based on artificial neural network. Coal Geol Explor 29(3):44–47 (in Chinese)
Zurück zum Zitat Li Z, Ma X (1993) Practical geological research in mine—method and progress. Geological Publishing House, Beijing (in Chinese) Li Z, Ma X (1993) Practical geological research in mine—method and progress. Geological Publishing House, Beijing (in Chinese)
Zurück zum Zitat Lv X, Zhao P (1998) Model of artificial neural networks for quantitative prediction of minerals. Earth Sci J China Univ Geosci 23(6):620–623 (in Chinese) Lv X, Zhao P (1998) Model of artificial neural networks for quantitative prediction of minerals. Earth Sci J China Univ Geosci 23(6):620–623 (in Chinese)
Zurück zum Zitat McCorak MD (1991) Neural computing in geophysics. Lead Edge 10(1):11–15CrossRef McCorak MD (1991) Neural computing in geophysics. Lead Edge 10(1):11–15CrossRef
Zurück zum Zitat Wang W (1995) Introduction and application of artificial neural network. Beihang University Press, Beijing (in Chinese) Wang W (1995) Introduction and application of artificial neural network. Beihang University Press, Beijing (in Chinese)
Zurück zum Zitat Wang G, Long R, Xu F (1993) Prediction of geological structure in coal mines. China Coal Industry Publishing House, Beijing (in Chinese) Wang G, Long R, Xu F (1993) Prediction of geological structure in coal mines. China Coal Industry Publishing House, Beijing (in Chinese)
Zurück zum Zitat Wu Q, Ye S (2008) The prediction of size-limited structures in a coalmine using artificial neural networks. Int J Rock Mech Min Sci 45(6):999–1006 Wu Q, Ye S (2008) The prediction of size-limited structures in a coalmine using artificial neural networks. Int J Rock Mech Min Sci 45(6):999–1006
Zurück zum Zitat Wu Q, Huang X, Dong D (1999) Application analysis of geographic information system on prediction of size-limited structures in the front of coal. J China Coal Soc 24(2):113–117 (in Chinese) Wu Q, Huang X, Dong D (1999) Application analysis of geographic information system on prediction of size-limited structures in the front of coal. J China Coal Soc 24(2):113–117 (in Chinese)
Zurück zum Zitat Wu Q, Yu J, Pang W (2007) Prediction of size-limited structures in the front of coal tunneling based on ANN. J China Univ Min Technol 36(4):446–452 (in Chinese) Wu Q, Yu J, Pang W (2007) Prediction of size-limited structures in the front of coal tunneling based on ANN. J China Univ Min Technol 36(4):446–452 (in Chinese)
Zurück zum Zitat Wu Q, Xu H, Pang W (2008) GIS and ANN coupling model: an innovative approach to evaluate vulnerability of karst water inrush in coalmines of north China. Environ Geol 54(5):937–943CrossRef Wu Q, Xu H, Pang W (2008) GIS and ANN coupling model: an innovative approach to evaluate vulnerability of karst water inrush in coalmines of north China. Environ Geol 54(5):937–943CrossRef
Zurück zum Zitat Wu Q, Liu Y, Yang L (2011) Using the vulnerable index method to assess the likelihood of a water inrush through the floor of a multi-seam coal mine in China. Mine Water Environ 30(1):54–61CrossRef Wu Q, Liu Y, Yang L (2011) Using the vulnerable index method to assess the likelihood of a water inrush through the floor of a multi-seam coal mine in China. Mine Water Environ 30(1):54–61CrossRef
Zurück zum Zitat Wu Q, Liu Y, Luo L (2015) Quantitative evaluation and prediction of water inrush vulnerability from aquifers overlying coal seams in Donghuantuo Coal Mine, China. Environ Earth Sci 74:1429–1437CrossRef Wu Q, Liu Y, Luo L (2015) Quantitative evaluation and prediction of water inrush vulnerability from aquifers overlying coal seams in Donghuantuo Coal Mine, China. Environ Earth Sci 74:1429–1437CrossRef
Zurück zum Zitat Yang Z (1997) The problem of using fault strike to predict the small and medium structure in coal seam. J Hebei Coal 3:54–55 (in Chinese) Yang Z (1997) The problem of using fault strike to predict the small and medium structure in coal seam. J Hebei Coal 3:54–55 (in Chinese)
Zurück zum Zitat Zeng Y, Wu Q (2014) Minor structure prediction ahead of coal roadway advance based on ANN technology in Jining No. 2 Coalmine. Coal Geol China 26(9):13–16 (in Chinese) Zeng Y, Wu Q (2014) Minor structure prediction ahead of coal roadway advance based on ANN technology in Jining No. 2 Coalmine. Coal Geol China 26(9):13–16 (in Chinese)
Metadaten
Titel
Application of artificial neural network technology to predicting small faults and folds in coal seams, China
verfasst von
Yifan Zeng
Shouqiang Liu
Wei Zhang
Yanliang Zhai
Publikationsdatum
01.06.2016
Verlag
Springer International Publishing
Erschienen in
Sustainable Water Resources Management / Ausgabe 2/2016
Print ISSN: 2363-5037
Elektronische ISSN: 2363-5045
DOI
https://doi.org/10.1007/s40899-016-0054-7

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