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Evaluating the Thickness of Broken Rock Zone for Deep Roadways using Nonlinear S VMs and Multiple Linear Regression Model

机译:使用非线性S VM和多元线性回归模型评估深巷道破碎岩区的厚度

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Since the traditional methods to estimation of the thickness of broken rock zone (BRZ) are usually difficult, expensive and not feasible in many cases, the development of some predictive models for the thickness of broken rock zone (BRZ) for deep roadways will be useful. To describe the complex relationship between geological factors and BRZ, a nonlinear model-based support vector machines (SVMs) analysis was applied on the data pertaining to China mine to develop some predictive models for the thickness of BRZ for deep roadways from the indirect methods in this study. The type of kernel function was Radial basis function (RBF). 132 samples were trained by proposed models; the other 10 samples that were not used for training were used to validate the trained models. For the same two similarity groups, the developed SVMs model was also compared with the multiple linear regression analysis (MLRA) models and measured data. As a result of SVMs analysis, very good model was derived for BRZ estimation. It was shown that SVMs models were more reliable and precise than the regression models. Concluding remark is that the thickness of BRZ values of deep roadways can reliably be estimated from the indirect methods using SVMs analysis.
机译:由于传统方法估计破碎的岩区(BRZ)的厚度(BRZ),在许多情况下通常难以困难,昂贵且不可行,因此对深沟岩体(BRZ)厚度的一些预测模型的开发将有用。为了描述地质因子和BRZ之间的复杂关系,应用了基于非线性模型的支持向量机(SVMS)分析,用于对中国矿井有关的数据,为来自间接方法的深度道路的BRZ厚度开发一些预测模型这项研究。内核功能的类型是径向基函数(RBF)。通过提出的模型培训132个样品;不用于培训的其他10个样本用于验证训练有素的模型。对于相同的两个相似度组,还将开发的SVMS模型与多元线性回归分析(MLRA)模型和测量数据进行了比较。由于SVMS分析,为BRZ估计导出了非常好的模型。结果表明,SVMS模型比回归模型更可靠,精确。结论备注是,使用SVMS分析,可以可靠地估计深道深道的BRZ值的厚度。

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