Abstract
Based on optimized forecast method of unascertained classifying, a unascertained measurement classifying model (UMC) to predict mining induced goaf collapse was established. The discriminated factors of the model are influential factors including overburden layer type, overburden layer thickness, the complex degree of geologic structure, the inclination angle of coal bed, volume rate of the cavity region, the vertical goaf depth from the surface and space superposition layer of the goaf region. Unascertained measurement (UM) function of each factor was calculated. The unascertained measurement to indicate the classification center and the grade of waiting forecast sample was determined by the UM distance between the synthesis index of waiting forecast samples and index of every classification. The training samples were tested by the established model, and the correct rate is 100%. Furthermore, the seven waiting forecast samples were predicted by the UMC model. The results show that the forecast results are fully consistent with the actual situation.
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Supported by the National Natural Science Foundation of China(50490274); Mittal Innovative and Enterprising Project at Center South University(07MX14)
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Dong, Lj., Peng, Gj., Fu, Yh. et al. Unascertained measurement classifying model of goaf collapse prediction. J Coal Sci Eng China 14, 221–224 (2008). https://doi.org/10.1007/s12404-008-0046-9
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DOI: https://doi.org/10.1007/s12404-008-0046-9