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Evaluating stability of underground entry-type excavations using multivariate adaptive regression splines and logistic regression

机译:使用多元自适应回归样条和逻辑回归评估地下入口型开挖的稳定性

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摘要

The mining industry relies heavily on the use of empirical methods and charts for the design and assessment of entry-type excavations. The commonly adopted empirical design method, commonly referred to as the critical span graph, which was specifically developed for the assessment of rock stability in entry-type excavations, was based on an extensive database of cut and fill mining operations and case histories in Canada. It plots the critical span versus the rock mass rating for the observed case histories and has been widely accepted for an initial span design of cut and fill stopes. Different approaches, either based on classical regression and classification statistical techniques or even the supervised machine learning methods, have been proposed to classify the observed cases into stable, potentially unstable and unstable groups. This paper presents a new assessment approach which combines the use of a multivariate adaptive regression splines (MARS) approach and the logistic regression (LR) method. The proposed MARS LR model can capture and describe the intrinsic, complex relationship between input descriptors and the dependent response without having to make any assumptions about the underlying relationship. Considering its simplicity in interpretation, predictive accuracy, its data-driven and adaptive nature plus the ability to map the interaction between variables, the use of MARS LR model in evaluating stability of underground entry-type excavations is promising.
机译:采矿业在很大程度上依赖于经验方法和图表的使用来设计和评估入门型开挖。普遍采用的经验设计方法(通常称为临界跨度图)是专门为评估入口型开挖中的岩石稳定性而开发的,该方法基于加拿大的充填式采矿作业和案例历史数据库。它根据观察到的历史记录绘制了临界跨度与岩体额定值之间的关系,并已广泛用于挖方和填方采场的初始跨度设计。已经提出了基于经典回归和分类统计技术甚至监督机器学习方法的不同方法,将观察到的病例分为稳定,潜在不稳定和不稳定组。本文提出了一种新的评估方法,该方法结合了多元自适应回归样条(MARS)方法和逻辑回归(LR)方法的使用。提出的MARS LR模型可以捕获和描述输入描述符和相关响应之间的固有复杂关系,而无需对基础关系进行任何假设。考虑到其解释的简单性,预测的准确性,其数据驱动和自适应的特性以及映射变量之间相互作用的能力,使用MARS LR模型评估地下入口型开挖的稳定性是有希望的。

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