A New Method for Forecasting Uniaxial Compressive Strength of Weak Rocks

IF 1.1 Q3 MINING & MINERAL PROCESSING
H. Fattahi
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引用次数: 8

Abstract

The uniaxial compressive strength of weak rocks (UCSWR) is among the essential parameters involved for the design of underground excavations, surface and underground mines, foundations in/on rock masses, and oil wells as an input factor of some analytical and empirical methods such as RMR and RMI. The direct standard approaches are difficult, expensive, and time-consuming, especially with highly fractured, highly porous, weak, and homogeneous rocks. Numerous endeavors have been made to develop indirect approaches of predicting UCSWR. In this research work, a new intelligence method, namely relevance vector regression (RVR), improved by the cuckoo search (CS) and harmony search (HS) algorithms is introduced to forecast UCSWR. The HS and CS algorithms are combined with RVR to determine the optimal values for the RVR controlling factors. The optimized models (RVR-HS and RVR-CS) are employed to the available data given in the open-source literature. In these models, the bulk density, Brazilian tensile strength test, point load index test, and ultrasonic test are used as the inputs, while UCSWR is the output parameter. The performances of the suggested predictive models are tested according to two performance indices, i.e. mean square error and determination coefficient. The results obtained show that RVR optimized by the HS model can be successfully utilized for estimation of UCSWR with R2 = 0.9903 and MSE = 0.0031203.
一种预测软弱岩石单轴抗压强度的新方法
软弱岩石的单轴抗压强度(UCSWR)是地下挖掘、地表和地下矿山、岩体中/之上的基础和油井设计所涉及的基本参数之一,也是一些分析和经验方法(如RMR和RMI)的输入因素。直接标准方法困难、昂贵且耗时,尤其是对于高度破碎、高度多孔、软弱和均质的岩石。已经做出了许多努力来开发预测UCSWR的间接方法。在本研究工作中,引入了一种新的智能方法,即关联向量回归(RVR),该方法是在杜鹃搜索(CS)和和谐搜索(HS)算法的基础上改进的,用于预测UCSWR。HS和CS算法与RVR相结合,以确定RVR控制因子的最优值。优化模型(RVR-HS和RVR-CS)用于开源文献中给出的可用数据。在这些模型中,体积密度、巴西抗拉强度测试、点载荷指数测试和超声波测试被用作输入,而UCSWR是输出参数。根据均方误差和判定系数两个性能指标对所提出的预测模型的性能进行了测试。结果表明,通过HS模型优化的RVR可以成功地用于UCSWR的估计,R2=0.9903,MSE=0.0031203。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Mining and Environment
Journal of Mining and Environment MINING & MINERAL PROCESSING-
CiteScore
1.90
自引率
25.00%
发文量
0
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