Analysis of the time series of seismic and deformation monitoring, obtained from closed works at the Kirovsky mine of JSC "Apatite"

  • Authors

    • Gospodarikov Aleksandr P. St. Petersburg mining University, Saint-Petersburg, Russia
    • Morozov Konstantin V. St. Petersburg mining University, Saint-Petersburg, Russia
    • Revin Ilia E St. Petersburg mining University, Saint-Petersburg, Russia
    2020-07-01
    https://doi.org/10.14419/ijet.v9i2.29888
  • Gradient Boosting Algorithm, Time Series, Deformation Monitoring, Khibiny Apatite-Nepheline Deposits.
  • The article is devoted to the analysis of the time series, obtained from seismic and deformation monitoring from closed works of Kukisvumchorr deposit JSC "Apatite". The objective of this study is to develop a method for assessing the results of monitoring geomechanical processes in the rock mass on the example of the Kirov mine JSC "Apatit". As a result of closed works, rock masses are changing its natural state of stress. This article has consistently outlined the use of machine learning algorithms in applied problems of geomechanics and geoinformatics. By comparing the schedule of mining operations and seismic activity data with time series of deformations, it is possible to obtain a functional relationship that predicts the distribution of deformations in the rock massif. The results of a computational experiment illustrating the possibility and feasibility of using machine learning algorithms in solving geomechanics problems are presented.

     

     

  • References

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  • How to Cite

    Aleksandr P., G., Konstantin V., M., & Ilia E, R. (2020). Analysis of the time series of seismic and deformation monitoring, obtained from closed works at the Kirovsky mine of JSC "Apatite". International Journal of Engineering & Technology, 9(2), 568-571. https://doi.org/10.14419/ijet.v9i2.29888