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Rapid Estimation of Rock Cuttability using Fracture Toughness and Rock Strength

机译:使用断裂韧性和岩石强度的岩石切割性快速估计

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Rock cuttability is expressed by specific energy (SE) that is defined as the energy required for cutting unit volume of rock. Direct determination of SE requires a rock cutting rig and is expensive and time-consuming. Therefore, empirical models have been alternative methods for predicting SE from rock properties. Two different predictive models of SE have been developed in this study using regression tree and artificial neural network (ANN) methods. Both empirical models employed the uniaxial compressive strength (UCS) and Mode I fracture toughness (K_(IC)), being derived from tensile strength (σ_t), as predictors. Data from four different studies have been used to develop the models. Statistical analyses on the data set have shown that both UCS and K_(IC) are closely related to SE in a nonlinear form. Numerical and graphical measures of the goodness of the fit and ANOVA test have shown that regression tree and ANN models have performed similarly.
机译:岩石可切割性由特定能量表示,该能量被定义为切割单位体积的岩石所需的能量。 SE的直接确定需要岩石切割钻机,并且昂贵且耗时。因此,经验模型是从岩石性质预测SE的替代方法。本研究使用回归树和人工神经网络(ANN)方法在本研究中开发了两种不同的预测模型。两种经验模型采用单轴抗压强度(UCS)和模式I断裂韧性(K_(IC)),从拉伸强度(σ_t),作为预测器。来自四种不同研究的数据已被用于开发模型。数据集上的统计分析表明,UCS和K_(IC)与非线性形式密切相关。适合和ANOVA测试的良善度的数值和图形测量表明,回归树和ANN模型类似地进行了类似的。

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