基于岩性叠加模型的岩石单轴抗压强度预测

Zida Liu , Diyuan Li , Yongping Liu , Bo Yang , Zong-Xian Zhang
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引用次数: 2

摘要

岩石的单轴抗压强度是岩土工程中的一个重要参数。点荷载强度(PLS)、P波速度和Schmidt-hammer回弹数(SH)比UCS更容易获得,并被广泛应用于UCS的间接估计。本研究收集了1080个数据集,包括SH、P波速度、PLS和UCS。根据岩性,所有数据集被整合为三类(沉积岩、火成岩和变质岩)。基于三种岩石类型的数据集,开发了叠加模型、基于树的模型和线性回归相结合的模型。模型评价表明,叠加模型与随机森林和线性回归相结合是三种岩石类型的最优模型。变质岩的UCS不如沉积岩和火成岩的UCS可预测。尽管如此,所提出的叠加模型可以提高变质岩UCS的预测性能。所开发的预测模型可用于工程现场的UCS快速预测,有利于岩体的快速智能分类。此外,还分析了SH、P波速度和PLS对UCS估计的重要性。SH是各种岩石类型UCS评估的可靠指标。P波速度是评价火成岩无侧限抗压强度的有效参数,但对评价变质岩无侧限抗拉强度不可靠。
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Prediction of uniaxial compressive strength of rock based on lithology using stacking models

Uniaxial compressive strength (UCS) of rock is an essential parameter in geotechnical engineering. Point load strength (PLS), P-wave velocity, and Schmidt hammer rebound number (SH) are more easily obtained than UCS and are extensively applied for the indirect estimation of UCS. This study collected 1080 datasets consisting of SH, P-wave velocity, PLS, and UCS. All datasets were integrated into three categories (sedimentary, igneous, and metamorphic rocks) according to lithology. Stacking models combined with tree-based models and linear regression were developed based on the datasets of three rock types. Model evaluation showed that the stacking model combined with random forest and linear regression was the optimal model for three rock types. UCS of metamorphic rocks was less predictable than that of sedimentary and igneous rocks. Nonetheless, the proposed stacking models can improve the predictive performance for UCS of metamorphic rocks. The developed predictive models can be applied to quickly predict UCS at engineering sites, which benefits the rapid and intelligent classification of rock masses. Moreover, the importance of SH, P-wave velocity, and PLS were analyzed for the estimation of UCS. SH was a reliable indicator for UCS evaluation across various rock types. P-wave velocity was a valid parameter for evaluating the UCS of igneous rocks, but it was not reliable for assessing the UCS of metamorphic rocks.

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