使用可解释的人工智能预测石灰华样品的单轴抗压强度和弹性模量

H. Nasiri , A. Homafar , S. Chehreh Chelgani
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引用次数: 25

摘要

岩石的耐久性是设计岩土工程结构时必须考虑的重要岩石特性。单轴抗压强度(UCS)和杨氏模量(E)是衡量岩石耐久性的关键指标。几种类型的人工智能(AI)方法已被用于对这些关键指标进行建模;然而,令人惊讶的是,他们的模型开发中没有考虑到可解释的AI (XAI)。XAI是一个模型,它的评估不是一个黑盒子,人类可以理解它的问题解决方法。该研究填补了这一空白,提出了Shapley加性解释(Shapley Additive Explanations)作为模拟UCS和E的最新XAI方法之一。SHAP值可以成功地说明岩石性质(孔隙度、点荷载指数、纵波速度和施密特锤反弹数)及其代表的UCS和E之间的相互关系,对于每个单独的记录,也可以作为变量一起使用。结果表明,纵波速度对地震带和地震带的预测最为重要。极端梯度增强(XGBoost)被用作UCS和E估计的可靠预测AI系统。结果(R2>0.99)证实了SHAP-XGBoost模型与其他典型AI模型(随机森林和支持向量回归)相比具有较高的精度。这些结果表明,XAI可以用来说明岩石力学与能源开发之间的复杂关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of uniaxial compressive strength and modulus of elasticity for Travertine samples using an explainable artificial intelligence

The durability of rocks is a substantial rock property that has to be considered for designing geotechnical structures. Uniaxial compressive strength (UCS) and Young's modulus (E) are key indexes for measuring rocks’ durability. Several types of artificial intelligence (AI) methods have been used for modeling these key indexes; however, surprisingly, no explainable AI (XAI) has been considered for their model developments. An XAI is a model whose assessment is not a black box, and humans could understand its problem solution approach. This study has filled this gap and presented SHAP (Shapley Additive Explanations) as one of the most recent XAI methods for modeling UCS, and E. SHAP value could successfully illustrate intercorrelations between rock properties (porosity, point load index, P-wave velocity, and Schmidt hammer rebound number) and their representative UCS and E for each individual record and also together as variables. Results indicated that P-wave velocity has the highest importance for UCS and E prediction. eXtreme gradient boosting (XGBoost) was used as a solid predictive AI system for UCS and E estimation. Outcomes (R2> 0.99) confirmed the high accuracy of the SHAP-XGBoost model comparing with other typical AI models (Random Forest and Support Vector Regression). These results indicated XAI could be considered for illustrating complicated relationships within rock mechanics and energy-resource developments.

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