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Study on Risk Classification of Goaf Based on RS-SVM

机译:基于RS-SVM的采空区风险分类研究

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According to the uncertainty and concealment of the risk of goaf, a risk classification model of goaf is constructed based on rough set (RS) knowledge and support vector machine (SVM) theory. In this paper, based on statistical analysis and measured data, nine parameters including mining method, empty area excavation depth, goaf height, maximum exposed area of empty area, maximum exposure height, maximum exposure span, pillar condition, empty volume and treatment rate are selected as the main influencing factors. The RS theory is used to reduce the sample, and SVM is compiled by Matlab. The one-to-one method is used to construct the binary classifier to realize the multi-class classification algorithm of goaf. Finally, a SVM model for evaluating the risk level of the goaf is obtained. The research shows that: based on RS theory, SVM has a good effect on the hazard classification of the goaf iron ore mine, and the difference with the actual situation is 13.3%. The research results have certain theoretical significance and guiding role for the safe mining of an iron mine in Eastern China.
机译:根据采空区风险的不确定性和隐蔽性,基于粗糙集(RS)知识和支持向量机(SVM)理论构建采空区风险分类模型。本文基于统计分析和实测数据,确定了开采方法,空区开挖深度,采空区高度,空区最大裸露面积,最大裸露高度,最大裸露跨度,立柱条件,空体积和处理率等九个参数。选择为主要影响因素。 RS理论用于减少样本,SVM由Matlab编译。采用一对一的方法构造二元分类器,实现采空区的多分类算法。最后,获得了用于评估采空区风险等级的SVM模型。研究表明:基于RS理论,支持向量机对采空铁矿的危险性分类具有良好的效果,与实际情况的差异为13.3%。研究结果对我国东部某铁矿的安全开采具有一定的理论意义和指导作用。

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