Deep Learning for Exploring the Relationship Between Geotechnical Properties and Electrical Resistivities

Mina Zamanian, Natnael Asfaw, Prakash Chavda, Mohsen Shahandashti
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Abstract

Electrical resistivity imaging is gaining popularity in aiding the characterization of subsurface conditions and assessment of the stability of earth materials. Nevertheless, it remains challenging to identify the relationship between geotechnical properties and electrical resistivities because of their nonlinear and complex relationship. This study intends to assess the application of the deep learning model to explore the relationship between electrical resistivities and geotechnical properties of natural clayey soils. A full factorial design was used to study the effects of water content and dry unit weight on the electrical resistivities of soils composed of different fractions of fine and clay particles. A deep learning model with three hidden layers was trained using a dataset comprising 842 observations to investigate the association between electrical resistivities and geotechnical properties. Influencing geotechnical properties were identified by Spearman’s correlation and feature importance. The results show that most variabilities in the electrical resistivity can be explained by the water content and dry unit weight. The results also show that the plasticity index and fine fraction play a more substantial role in predicting the electrical resistivities of clayey soils than the liquid limit and clay fraction. A comparison between the accuracy metrics of the deep learning model with existing models in the literature shows that deep learning outperforms other models in discovering nonlinear and complex relationships between electrical resistivities and geotechnical properties. Enhanced knowledge of the relationship between geotechnical properties and electrical resistivities allows for better characterizing the subsurface conditions to improve reliability and reduce uncertainties caused by inadequate subsurface information.
利用深度学习探索岩土特性与电阻率之间的关系
电阻率成像技术在帮助鉴定地下条件和评估土层材料稳定性方面越来越受欢迎。然而,由于岩土特性与电阻率之间存在非线性和复杂的关系,因此确定二者之间的关系仍然具有挑战性。本研究旨在评估深度学习模型在探索天然粘性土电阻率与岩土特性之间关系中的应用。研究采用了全因子设计,以研究含水量和干单位重量对由不同比例的细颗粒和粘粒组成的土壤电阻率的影响。使用包含 842 个观测值的数据集训练了一个具有三个隐藏层的深度学习模型,以研究电阻率与岩土特性之间的关联。通过斯皮尔曼相关性和特征重要性确定了影响岩土特性的因素。结果表明,电阻率的大部分变化都可以用含水量和干单位重量来解释。结果还显示,在预测粘性土电阻率时,塑性指数和细粒度比液限和粘粒度的作用更大。将深度学习模型的准确度指标与文献中的现有模型进行比较后发现,深度学习在发现电阻率与岩土特性之间的非线性复杂关系方面优于其他模型。加强对岩土特性与电阻率之间关系的了解,可以更好地描述地下条件,从而提高可靠性,减少因地下信息不足而造成的不确定性。
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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