• Title of article

    Prediction of the main caving span in longwall mining using fuzzy MCDM technique and statistical method

  • Author/Authors

    Mohammadi ، S. - Shahrood University of Technology , Ataei ، M. - Shahrood University of Technology , Khaloo Kakaie ، R. - Shahrood University of Technology , Mirzaghorbanali ، A. - University of Southern Queensland

  • Pages
    10
  • From page
    717
  • To page
    726
  • Abstract
    Immediate roof caving in longwall mining is a complex dynamic process, and it is the core of numerous issues and challenges in this method. Hence, a reliable prediction of the strata behavior and its caving potential is imperative in the planning stage of a longwall project. The span of the main caving is the quantitative criterion that represents cavability. In this paper, two approaches are proposed in order to predict the span of the main caving in longwall projects. Cavability index (CI) is introduced based on the hybrid multicriteria decisionmaking technique, combining the fuzzy analytical network processes (ANP) and the fuzzy decisionmaking trial and evaluation laboratory (DEAMTEL). Subsequently, the relationship between the new index and the caving span is determined. In addition, statistical relationships are developed, incorporating the multivariate regression method. The real data for nine panels is used to develop the new models. Accordingly, two models based on CI including the Gaussian and cubic models as well as the linear and nonlinear regression models are proposed. The performance of the proposed models is evaluated in various actual cases. The results obtained indicate that the CIGaussian model possesses a higher performance in the prediction of the main caving span in actual cases when compared to the other models. These results confirm that it is not possible to consider all the effective parameters in an empirical relationship due to a higher error in the prediction.
  • Keywords
    Main Caving Span , Cavability Index , Longwall , MultiCriteria DecisionMaking , Regression Analysis
  • Journal title
    Journal of Mining and Environment
  • Serial Year
    2018
  • Journal title
    Journal of Mining and Environment
  • Record number

    2451303