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Indirect estimation of unconfined compressive strength of carbonate rocks using extreme learning machine

机译:极限学习机间接估算碳酸盐岩无侧限抗压强度

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摘要

The unconfined compressive strength (UCS) of rocks, one fundamental parameter, is widely used in geotechnical engineering. Direct determination of the UCS involves expensive, time-consuming and destructive laboratory tests. These tests sometimes are difficult to be prepared for cracked rocks. In this way, indirect estimation of the UCS of rocks is widely discussed for simplicity and non-destructivity. Conventional methods for indirect estimation of the UCS of rocks are based on regression analysis which has poor accuracy or generalization ability. This paper presents the extreme learning machine (ELM) for indirect estimation of the UCS of rocks according to the correlated indexes including the mineral composition (calcite, clay, quartz, opaque minerals and biotile), specific density, dry unit weight, total porosity, effective porosity, slake durability index (fourth cycle), P-wave velocity in dry samples and in the solid part of the sample. The correlation between the UCS of rocks and each related index is studied by linear regression analysis. Based on this, the ELM approach is implemented for estimation of the UCS of rocks by comparison with other neural networks and the support vector machines (SVM). Also, parameter sensitivity is investigated on the predictive performance of the ELM by two target functions. The results turn out that the ELM is advantageous to the mentioned neural networks and the SVM in the estimation of the UCS of rocks. The ELM performs fast and has good generalization ability. It is a potential robust method for approaching complex, nonlinear problems in geotechnical engineering.
机译:岩石的无侧限抗压强度(UCS)是一种基本参数,在岩土工程中得到了广泛的应用。直接确定UCS涉及昂贵,费时和破坏性的实验室测试。对于破裂的岩石,有时很难准备这些测试。以这种方式,为简化和非破坏性,广泛讨论了岩石UCS的间接估计。间接估算岩石UCS的常规方法是基于回归分析,其准确性或泛化能力较差。本文根据相关指标,包括矿物成分(方解石,粘土,石英,不透明矿物和生物质),比重,干重,总孔隙率,有效孔隙率,耐久指数(第四周期),干燥样品和固体部分的P波速度。通过线性回归分析研究了岩石的UCS与各个相关指标之间的相关性。基于此,通过与其他神经网络和支持向量机(SVM)的比较,实现了ELM方法以估算岩石的UCS。此外,还通过两个目标函数研究了参数敏感性对ELM预测性能的影响。结果表明,在估计岩石的UCS方面,ELM有利于上述神经网络和SVM。 ELM执行速度快,具有良好的泛化能力。它是解决岩土工程中复杂的非线性问题的潜在健壮方法。

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