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Developing intelligent classification models for rock burst prediction after recognizing significant predictor variables, Section 1: Literature review and data preprocessing procedure

机译:在识别出重要的预测变量后,为岩爆预测开发智能分类模型,第1节:文献综述和数据预处理程序

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摘要

Rock bursts constitute serious hazards in underground mining and excavating. Up to now, numerous researches in the form of empirical, experimental, analytical, intelligent and numerical methods with their own specific scope, characteristics, strengths and weaknesses, have been conducted for rock burst prediction. The weaknesses and limitations of the mentioned prediction methods, especially the intelligent studies, indicate the need for continuing the researches in this field. In this research, a rock burst database, consisting of 188 datasets, was considered. Each dataset corresponds to a series of predictor variables and one of defined classes for the dependent variable “rock burst intensity”. To design classification models, describing important characteristics of datasets and predicting future trends, a data preprocessing procedure was conducted. The procedure consisted of a statistical analysis strategy, a metaheuristic technique for feature (variable) subset selection and some feature extraction techniques. The statistical analysis led to conclude that by considering the available datasets, some predictor variables have statistically insignificant contributions for rock burst prediction. By contrast, the other predictor variables have considerable ordinal contributions. These statistical inferences were completely in accordance with the results of the feature subset selection technique. Besides, the application of this technique revealed specific combinations of significant predictor variables having the highest priorities for modelling the dependent variable. The application of feature extraction techniques to construct derived components from initial datasets did not lead to representative results. Therefore, a high rank combination of significant predictor variables can be adopted to design and develop new classification models based on the considered datasets.
机译:岩爆在地下采矿和挖掘中构成严重危害。迄今为止,已经进行了许多以经验,实验,分析,智能和数值方法形式的研究,这些方法具有各自的特定范围,特征,优点和缺点,用于岩爆预测。所提到的预测方法,特别是智能研究的弱点和局限性表明有必要继续该领域的研究。在这项研究中,考虑了由188个数据集组成的岩爆数据库。每个数据集对应于一系列预测变量和因变量“岩爆强度”的定义类别之一。为了设计分类模型,描述数据集的重要特征并预测未来趋势,进行了数据预处理程序。该过程包括统计分析策略,用于特征(变量)子集选择的元启发式技术和一些特征提取技术。统计分析得出的结论是,通过考虑可用的数据集,一些预测变量对岩爆预测的统计贡献很小。相反,其他预测变量具有可观的序数贡献。这些统计推断完全符合特征子集选择技术的结果。此外,该技术的应用揭示了重要的预测变量的特定组合,这些变量具有对因变量进行建模的最高优先级。应用特征提取技术从初始数据集中构造派生组件并没有产生代表性的结果。因此,可以采用重要预测变量的高级组合来设计和开发基于所考虑的数据集的新分类模型。

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