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Applying soft computing methods to predict the uniaxial compressive strength of rocks from schmidt hammer rebound values

机译:应用软计算方法从施密特锤回弹值预测岩石的单轴抗压强度

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摘要

The uniaxial compressive strength (UCS) of rock is widely used in designing underground and surface rock structures. The testing procedure of this rock strength is expensive and time consuming. In addition, it requires well-prepared rock cores. Therefore, indirect tests are often used to estimate the UCS, such as the Schmidt hammer test. This test is very easy to carry out because it necessitates less or no sample preparation and the testing equipment is less sophisticated. In addition, it can be used easily in the field. As a result, comparing with uniaxial compression test, indirect test is simpler, faster, and more economical. In this paper, the application of soft computing methods for data analysis named support vector regression (SVR) optimized by artificial bee colony algorithm (ABC) and adaptive neuro-fuzzy inference system-subtractive clustering method (ANFIS-SCM) to estimate the UCS of rocks from Schmidt hammer rebound values is demonstrated. The estimation abilities offered using SVR-ABC and ANFIS-SCM were presented by using experimental data given in open-source literatures. In these models, the Schmidt hammer rebound values (T1-T3, R1-R4) were utilized as the input parameters, while the UCS was the output parameter. Various statistical performance indexes were utilized to compare the performance of those estimation models. The results achieved indicate that the ANFIS-SCM model has strong potential to indirect estimation of the UCS of rocks from the Schmidt hammer rebound values with high degree of accuracy and robustness.
机译:岩石的单轴抗压强度(UCS)被广泛用于设计地下和地面岩石结构。这种岩石强度的测试过程既昂贵又费时。另外,它需要准备充分的岩心。因此,通常使用间接测试来估计UCS,例如施密特锤测试。该测试非常容易进行,因为它需要较少的样品制备或不需要样品制备,并且测试设备的复杂程度较低。此外,它可以在现场轻松使用。结果,与单轴压缩试验相比,间接试验更简单,更快,更经济。在本文中,软计算方法在数据分析中的应用,即通过人工蜂群算法(ABC)和自适应神经模糊推理系统减法聚类方法(ANFIS-SCM)优化的支持向量回归(SVR)来估计数据的UCS。施密特锤击回弹值证明了岩石。通过使用开源文献中给出的实验数据,介绍了使用SVR-ABC和ANFIS-SCM提供的估计能力。在这些模型中,将施密特锤回弹值(T1-T3,R1-R4)用作输入参数,而UCS是输出参数。利用各种统计性能指标来比较那些估计模型的性能。所得结果表明,ANFIS-SCM模型具有很高的准确性和鲁棒性,可以根据施密特锤的回弹值间接估算岩石的UCS。

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