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New grey prediction model and its application in forecasting land subsidence in coal mine

机译:灰色预测新模型及其在煤矿地面沉降预测中的应用

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Mining subsidence destroys environment seriously and is difficult to forecast because the parameters in prediction model are difficult to obtain. As there are many uncertainties in mining subsidence, we forecast it by grey prediction model. Traditional GM (1,1) model predict for a time series. In this paper, the panel data are studied and are viewed as a sequence in which elements are matrix based on cross-sectional data, and the mean sequence of row vector GM (1,1) model, mean sequence of column vector GM (1,1) model and the cell volume sequence GM (1,1) model are established, respectively. Combining these grey models, we build prediction model of cross-sectional data matrix sequence. Thus, the scope of grey prediction has been expanded, and grey forecasting theory has been enriched. Using the newly built predictive models, we study the land deformation due to mining of Pingdingshan coal mine in Henan Province. Practical verification and model accuracy test show that the grey model can make accurate predictions, with a good agreement between the predictive value and actual value. It can provide effective and accurate information and also can provide an important reference for the reclamation planning of surface environment.
机译:开采沉陷严重破坏了环境,难以预测,因为预测模型中的参数难以获得。由于开采沉陷存在许多不确定性,我们通过灰色预测模型对其进行预测。传统的GM(1,1)模型可预测时间序列。本文研究面板数据,并将其视为基于横截面数据的元素为矩阵的序列,行向量GM(1,1)模型的平均序列,列向量GM(1 ,1)模型和细胞体积序列GM(1,1)模型分别建立。结合这些灰色模型,我们建立了横截面数据矩阵序列的预测模型。因此,扩展了灰色预测的范围,并丰富了灰色预测理论。利用新建的预测模型,我们研究了河南平顶山煤矿开采引起的土地变形。实际验证和模型精度测试表明,该灰色模型可以进行准确的预测,预测值与实际值吻合良好。它可以提供有效,准确的信息,也可以为地表环境的围垦规划提供重要参考。

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