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Evaluating the Suitability of Existing Rock Mass Classification Systems for TBM Performance Prediction by Using a Regression Tree

机译:使用回归树评估现有岩体分类系统的适用性TBM性能预测

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Existing rock mass classification systems, such as rock mass rating (RMR) are often used in many empirical design practices in rock engineering contrasting with their original application, i.e. estimation of TBM performance in various ground conditions. However, the use of RMR or similar classification systems in providing an accurate estimation of TBM penetration rate has had limited success due to the nature of the weights assigned to the input parameters. The results of many investigations on this topic have shown a weak correlation between TBM penetration rate and RMR. This limitation can be addressed by performing regression tree analysis which revises the weights assigned to input parameters to better represent influence of rock mass properties on TBM performance. This paper offers an overview of the impact of rock mass classification on TBM performance and introduces a new model based on regression tree using the input parameters of RMR system to predict the performance of hard rock TBMs. The results of the preliminary analysis show that the use of the proposed model can improve the accuracy of TBM performance estimates in various rock masses. This is based on the comparison between the estimated and actual rate of penetration of TBMs in two tunneling projects in igneous and sedimentary rocks. This study shows the potential of regression tree approach to offer more suitable rating of input parameters for this application, if sufficiently diverse database of machine performance is used in the analysis.
机译:现有的岩体分类系统,如岩体等级(RMR)通常用于在许多实证设计实践中岩工程与原来的应用对比,即在不同地质条件TBM性能的估计。然而,在提供TBM普及率的准确估计使用RMR或类似的分类系统的已经取得有限的成功,由于分配给输入参数的权重的性质。关于这一主题的许多研究结果表明,TBM普及率和RMR之间的相关性较弱。这种限制可以通过进行回归树分析,其修改分配给输入参数,以更好地表示在TBM性能岩体性质的影响的权重来解决。本文提供的岩体分类对TBM性能的影响的概述,并介绍了利用RMR系统的输入参数,来预测硬岩隧道掘进机的性能,基于回归树的新模式。初步分析结果表明,使用该模型可以提高TBM性能的估计各种岩体的准确性。这是基于两个隧道项目在火成岩和沉积岩隧道掘进机的渗透率的估计与实际利率之间的比较。这项研究表明回归树方法的潜力,以提供更适合等级的输入参数,对于这种应用,如果机器性能足够的多样性数据库的分析使用。

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