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Application of rock mass classification systems for performance estimation of rock TBMs using regression tree and artificial intelligence algorithms

机译:岩体分类系统在利用回归树和人工智能算法估算岩石TBM性能中的应用

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摘要

Existing rock mass classification systems, such as Rock Quality Index "Q", Geological Strength Index (GSI), and Rock Mass Rating (RMR) are often used in many empirical design practices in rock engineering contrasting with their original application. For example, these models which were originally introduced for ground support design are being used in estimation of TBM performance in various ground conditions. Previous use of standard rock mass classification systems in TBM performance prediction has had limited success due to the nature of the weights associated with the input parameters as evidenced by low correlations between their output and Penetration Rate (PR) of TBM in various field applications. This limitation can be mitigated by revising the weights assigned to input parameters, to better represent influence of rock mass properties on TBM performance using multivariate regression analysis and artificial intelligence algorithms, including regression tree and genetic programming. This paper offers a brief review of the applications of common rock mass classification systems for performance prediction of TBMs and development of a new model which is based on the input parameters of RMR system for this purpose. The proposed model has been developed based on the analysis of a comprehensive database of TBM performance in various rock types and offers higher accuracy and sensitivity to rock mass parameters in predicting machine performance.
机译:现有的岩体分类系统,例如岩石质量指数“ Q”,地质强度指数(GSI)和岩体质量评级(RMR),与原始应用相比,经常在岩石工程的许多经验设计实践中使用。例如,最初为地面支撑设计引入的这些模型被用于估算各种地面条件下的TBM性能。由于在各种现场应用中,其输出与TBM的渗透率(PR)之间的低相关性证明,由于与输入参数相关的权重的性质,以前在标准的岩石质量分类系统中使用TBM的预测效果有限。可以通过修改分配给输入参数的权重来减轻此限制,以使用多元回归分析和人工智能算法(包括回归树和遗传规划)更好地表示岩体属性对TBM性能的影响。本文简要介绍了常用岩体分类系统在TBM的性能预测中的应用,并为此目的开发了基于RMR系统输入参数的新模型。所提出的模型是在对各种岩石类型的TBM性能综合数据库进行分析的基础上开发的,并且在预测机器性能时提供了更高的精度和对岩体参数的敏感性。

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