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Prediction of rock burst classification using the technique of cloud models with attribution weight

机译:运用归因权重云模型技术预测岩爆分类

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摘要

Rock burst is one of the common failures in hard rock mining and civil construction. This study focuses on the prediction of rock burst classification with case instances using cloud models and attribution weight. First, cloud models are introduced briefly related to the rock burst classification problem. Then, the attribution weight method is presented to quantify the contribution of each rock burst indicator for classification. The approach is implemented to predict the classes of rock burst intensity for the 164 rock burst instances collected. The clustering figures are generated by cloud models for each rock burst class. The computed weight values of the indicators show that the stress ratio is the most vulnerable parameter and the elastic strain energy storage index W (et) and the brittleness factor take the second and third place, respectively, contributing to the rock burst classification. Besides, the predictive performance of the strategy introduced in this study is compared with that of some empirical methods, the regression analysis, the neural networks and support vector machines. The results turn out that cloud models perform better than the empirical methods and regression analysis and have superior generalization ability than the neural networks in modelling the rock burst cases. Hence, cloud models are feasible and applicable for prediction of rock burst classification. Finally, different models with varying indicators are investigated to validate the parameter sensitivity results obtained by cloud clustering analysis and regression analysis in context to rock burst classification.
机译:岩石破裂是硬岩开采和民用建筑中的常见故障之一。这项研究的重点是使用云模型和归因权重对具有实例的岩爆分类进行预测。首先,简要介绍与岩爆分类问题有关的云模型。然后,提出了归因权重方法来量化每个岩爆指标的贡献以进行分类。实施该方法以预测所收集的164个岩爆实例的岩爆强度等级。聚类图是由云模型为每个岩爆类别生成的。计算得出的指标权重值表明,应力比是最脆弱的参数,弹性应变储能指数W(et)和脆性因子分别排在第二和第三位,有助于岩爆分类。此外,将本研究中引入的策略的预测性能与一些经验方法,回归分析,神经网络和支持向量机的性能进行了比较。结果表明,在对岩爆案例进行建模时,云模型的性能优于经验方法和回归分析,并且具有比神经网络更好的泛化能力。因此,云模型是可行的,并适用于岩爆分类的预测。最后,研究了具有变化指标的不同模型,以验证通过云聚类分析和岩爆分类背景下的回归分析获得的参数敏感性结果。

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