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Proposing a new model to approximate the elasticity modulus of granite rock samples based on laboratory tests results

机译:根据实验室测试结果,提出了一种新的近似花岗岩岩石样品弹性模量的模型

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An accurate examination of deformability of rock samples in response to any change in stresses is deeply dependent on the reliable determination of properties of the rock as analysis inputs. Although Young's modulus (E) can provide valuable characteristics of the rock material deformation, the direct determination of E is considered a time-consuming and complicated analysis. The present study is aimed to introduce a new hybrid intelligent model to predict the E of granitic rock samples. Hence, a series of granitic block samples were collected from the face of a water transfer tunnel excavated in Malaysia and transferred to laboratory to conduct rock index tests for E prediction. Rock index tests including point load, p-wave velocity and Schmidt hammer together with uniaxial compressive strength (UCS) tests were carried out to prepare a database comprised of 62 datasets for the analysis. Results of simple regression analysis showed that there is a need to develop models with multiple inputs. Then, a hybrid genetic algorithm (GA)-artificial neural network (ANN) model was developed considering parameters with the most impact on the GA. In order to have a fair evaluation, a predeveloped ANN model was also performed to predict E of the rock. As a result, a GA-ANN model with a coefficient of determination (R-2) of 0.959 and root mean square error (RMSE) of 0.078 for testing datasets was selected and introduced as a new model for engineering practice; the results obtained were 0.766 and 0.098, respectively, for the developed ANN model. Furthermore, based on sensitivity analysis results, p-wave velocity has the most effect on E of the rock samples.
机译:对岩石样品响应应力变化的可变形性的准确检查在很大程度上取决于对作为分析输入的岩石特性的可靠确定。尽管杨氏模量(E)可以提供岩石材料变形的有价值的特征,但是直接确定E被认为是耗时且复杂的分析。本研究旨在介绍一种新的混合智能模型来预测花岗石样品的E。因此,从马来西亚开挖的输水隧道的工作面收集了一系列花岗岩块体样品,并转移到实验室进行岩石指数测试,以进行E预测。进行了包括点载荷,p波速度和施密特锤的岩石指数测试以及单轴抗压强度(UCS)测试,以准备一个由62个数据集组成的数据库进行分析。简单回归分析的结果表明,需要开发具有多个输入的模型。然后,考虑对遗传算法影响最大的参数,开发了一种混合遗传算法-人工神经网络(ANN)模型。为了进行公正的评估,还使用了预先开发的ANN模型来预测岩石的E。结果,选择了测试数据集的GA-ANN模型(确定系数(R-2)为0.959和均方根误差(RMSE)为0.078)作为工程实践的新模型;对于已开发的ANN模型,获得的结果分别为0.766和0.098。此外,根据灵敏度分析结果,p波速度对岩石样品中的E影响最大。

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