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Tytuł artykułu

Recognition of mine water-inrush sources using artificial neural network

Treść / Zawartość
Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
In the process of excavating and mining, water-inrush episodes induced by a number of geological or human factors is a complex geological hazard and often lead to disastrous consequences, making an accurate prediction before an inrush accident is difficult because there are so many factors and interactions between factors are related in such hazard, No matter how accurate a risk assessment approach is, it can not 100% guarantee that every water inrush accident can be accurately predicted. Until so far, inrush accidents are still occurring every year all over the world, especially in developing countries. For inrush accidents in underground mining, the first and also the critical step of controlling the accident is to find out the related inrush sources, accurately identifying which aquifer or which water body is directly related to the inrush accident is the critical step of controlling water volume and reducing casualties and economic losses. In this study, method of using artificial neural network (ANN) to identify the water-inrush sources is proposed, by establishing a back propagation neural network (BPNN) to train, test and predict the sample data selected from Jiaozuo mine area, results show that ANN is an effective approach to identify water sources.
Czasopismo
Rocznik
Tom
Strony
147--156
Opis fizyczny
Bibliogr. 13 poz., rys., tab.
Twórcy
  • Departamento de Ingeniería Geológica y Minera.ETS de Ingenieros de Minas y Energía, Universidad Politéncia de Madrid, C/Alenza 4, 28003 Madrid, Spain
autor
  • Departamento de Ingeniería Geológica y Minera.ETS de Ingenieros de Minas y Energía, Universidad Politéncia de Madrid, C/Alenza 4, 28003 Madrid, Spain
  • Departamento de Ingeniería Geológica y Minera.ETS de Ingenieros de Minas y Energía, Universidad Politéncia de Madrid, C/Alenza 4, 28003 Madrid, Spain
  • Center for Computational Simulation, Universidad Politécnica de Madrid, Spain
Bibliografia
  • DUMPLETON S., ROBINS S., WALKER J., MERRIN P., 2001, Mine water rebound in South Nottinghamshire: risk evaluation using 3-D visualization and predictive modelling, Q. J. Eng. Geol. Hydrogeol., 34, 307–319.
  • DONG D., SUN W., XI S., 2012, Water-inrush assessment using a GIS-based bayesian network for the 12-2 coal seam of the Kailuan Donghuantuo coal mine in China, Mine Water Environ., 31, 138–146.
  • GUO M., 2011, National mine water disaster analysis report during the Eleventh Five-Year, Safety Newsletter (in Chinese).
  • LU Y., WANG L., 2015, Numerical simulation of mining-induced fracture evolution and water flow in coal seam floor above a confined aquifer, Computers and Geotechnics, 67, 157–171.
  • MOKHOV A., 2007, Fissuring due to inundation of coal mines and its hydrodynamic implications, Doklady Earth Sciences, 414, 519–521.
  • MOTYKA J., BOSCH A., 1985, Karstic phenomena in calcareous–dolomitic rocks and their influence over the inrushes of water in lead-zinc mines in Olkusz region (South of Poland), International Journal of Mine Water, 4, 1–12.
  • PARKER D., 1985, Learning-logic: Casting the cortex of the human brain in silicon, Center for Computational Research in Economics and Management Science, MIT Press, Cambridge.
  • RUMELHART D., HINTON G., WILLIAMS R., 1986, Learning representation by back-propagating errors, Nature, 323, 533–536.
  • RUMELHART D., MCCLELLAND J., 1998, Parallel distributed processing, IEEE.
  • SHI L., SINGH R., 2001, Study of mine water inrush from floor strata through faults, Mine Water and the Environment, 20, 140–147.
  • WU Q., LIU Y., YANG L., 2011a, 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, 54–60.
  • WU Q., LIU Y., LIU D., ZHOU W., 2011b, Prediction of floor water inrush: the application of GIS-based AHP Vulnerable Index Method to Donghuantuo coal mine, China, Rock Mech. Rock Eng., 44, 591–600.
  • ZHANG X., ZHANG Z., PENG S., 2003, Application of the second theory of quantification in identifying gushingwater sources of coal mines, Journal of China University of Mining and Technology, 3, 251–254.
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-28c1d322-d9ed-4bdc-83c4-5176428112fc
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