Frontiers in Applied Mathematics and Statistics (Mar 2023)

Statistical and clustering analysis of microseismicity from a Saskatchewan potash mine

  • Mohammadamin Sedghizadeh,
  • Matthew van den Berghe,
  • Robert Shcherbakov,
  • Robert Shcherbakov

DOI
https://doi.org/10.3389/fams.2023.1126952
Journal volume & issue
Vol. 9

Abstract

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Microseismicity is expected in potash mining due to the associated rock-mass response. This phenomenon is known, but not fully understood. To assess the safety and efficiency of mining operations, producers must quantitatively discern between normal and abnormal seismic activity. In this work, statistical aspects and clustering of microseismicity from a Saskatchewan, Canada, potash mine are analyzed and quantified. Specifically, the frequency-magnitude statistics display a rich behavior that deviates from the standard Gutenberg-Richter scaling for small magnitudes. To model the magnitude distribution, we consider two additional models, i.e., the tapered Pareto distribution and a mixture of the tapered Pareto and Pareto distributions to fit the bi-modal catalog data. To study the clustering aspects of the observed microseismicity, the nearest-neighbor distance (NND) method is applied. This allowed the identification of potential cluster characteristics in time, space, and magnitude domains. The implemented modeling approaches and obtained results will be used to further advance strategies and protocols for the safe and efficient operation of potash mines.

Keywords