Comparative Evaluation of Empirical Approaches and Artificial Intelligence Techniques for Predicting Uniaxial Compressive Strength of Rock

IF 2.4 Q2 GEOSCIENCES, MULTIDISCIPLINARY
Chuanqi Li, Jian Zhou, Daniel Dias, Kun Du, Manoj Khandelwal
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引用次数: 0

Abstract

The uniaxial compressive strength (UCS) of rocks is one of the key parameters for evaluating the safety and stability of civil and mining structures. In this study, 386 rock samples containing four properties named the load strength (PLS), the porosity (Pn), the P-wave velocity (Vp), and the Schmidt hardness rebound number (SHR) are utilized to predict the UCS using several typical empirical equations (EA) and artificial intelligence (AI) methods, i.e., 16 single regression (SR) equations, 2 multiple regression (MR) equations, and the random forest (RF) models optimized by grey wolf optimization (GWO), moth flame optimization (MFO), lion swarm optimization (LSO), and sparrow search algorithm (SSA). The root mean square error (RMSE), determination coefficient (R2), Willmott’s index (WI), and variance accounted for (VAF) are used to evaluate the predictive performance of all developed models. The evaluation results show that the overall performance of AI models is superior to empirical approaches, especially the LSO-RF model. In addition, the most important input variable is the Pn for predicting the UCS. Therefore, AI techniques are considered as more efficient and accurate approaches to replace the empirical equations for predicting the UCS of these collected rock samples, which provides a reliable and effective idea to predict the rock UCS in the filed site.
岩石单轴抗压强度预测的经验方法与人工智能技术对比评价
岩石单轴抗压强度(UCS)是评价土矿结构安全稳定的关键参数之一。本文以386个岩石样品为研究对象,利用荷载强度(PLS)、孔隙度(Pn)、纵波速度(Vp)和Schmidt硬度回弹数(SHR) 4种特性,采用典型的经验方程(EA)和人工智能(AI)方法,即16个单回归(SR)方程、2个多元回归(MR)方程,以及由灰狼优化(GWO)、蛾火焰优化(MFO)、狮子群优化算法(LSO)和麻雀搜索算法(SSA)。使用均方根误差(RMSE)、决定系数(R2)、Willmott指数(WI)和方差占比(VAF)来评估所有模型的预测性能。评价结果表明,人工智能模型的整体性能优于经验方法,尤其是LSO-RF模型。此外,最重要的输入变量是用于预测UCS的Pn。因此,人工智能技术被认为是一种更有效、更准确的方法,可以代替经验方程来预测这些采集的岩石样品的单抗强度,为现场岩石单抗强度的预测提供了一种可靠、有效的思路。
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
Geosciences (Switzerland)
Geosciences (Switzerland) Earth and Planetary Sciences-Earth and Planetary Sciences (all)
CiteScore
5.30
自引率
7.40%
发文量
395
审稿时长
11 weeks
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