Use of an artificial neural network model for estimation of unfrozen water content in frozen soils

IF 3 3区 工程技术 Q2 ENGINEERING, GEOLOGICAL Canadian Geotechnical Journal Pub Date : 2023-08-01 DOI:10.1139/cgj-2022-0035
Jun-ping Ren, Xudong Fan, Xiong Yu, Sai Vanapalli, Shoulong Zhang
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Abstract

The variation of unfrozen water content (UWC) has a significant influence on the physical and mechanical behaviors of frozen soils. Several empirical, semi-empirical, physical, and theoretical models are available in the literature to estimate the UWC in frozen soils. However, these models have limitations due to the complex interactions of various influencing factors that are not well understood or fully established. For this reason, in the present study, an artificial neural network (ANN) modeling framework is proposed and the PyTorch package is used for predicting UWC. Extensive UWC data of various types of soils tested under various conditions were collected through an extensive search of the literature. The developed ANN model showed good performance for the testing dataset. Its performance was further compared with two traditional statistical models on four soils and found to outperform these traditional models. Detailed discussions on the developed ANN model, and its strengths and limitations in comparison to different other models are provided. The study demonstrates that the proposed ANN model is simple yet reliable for estimating the UWC of various soils. In addition, the summarized UWC data and the proposed machine learning modeling framework are valuable for future studies related to frozen soils.
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利用人工神经网络模型估算冻土中未冻水的含量
未冻水含量的变化对冻土的物理力学行为有重要影响。文献中有几种经验的、半经验的、物理的和理论的模型来估计冻土的UWC。然而,由于各种影响因素的复杂相互作用,这些模型具有局限性,这些影响因素尚未得到很好的理解或完全建立。为此,本研究提出了一种人工神经网络(ANN)建模框架,并使用PyTorch包进行UWC预测。通过广泛的文献检索,收集了在各种条件下测试的各种类型土壤的广泛UWC数据。所建立的人工神经网络模型对测试数据集表现出良好的性能。在四种土壤条件下,将其与两种传统统计模型进行了比较,发现其性能优于传统模型。对所建立的人工神经网络模型进行了详细的讨论,并与其他模型进行了比较。研究表明,所提出的人工神经网络模型简单可靠,可用于估算各种土壤的UWC。此外,总结的UWC数据和提出的机器学习建模框架对未来冻土相关研究具有重要价值。
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来源期刊
Canadian Geotechnical Journal
Canadian Geotechnical Journal 地学-地球科学综合
CiteScore
7.20
自引率
5.60%
发文量
163
审稿时长
7.5 months
期刊介绍: The Canadian Geotechnical Journal features articles, notes, reviews, and discussions related to new developments in geotechnical and geoenvironmental engineering, and applied sciences. The topics of papers written by researchers and engineers/scientists active in industry include soil and rock mechanics, material properties and fundamental behaviour, site characterization, foundations, excavations, tunnels, dams and embankments, slopes, landslides, geological and rock engineering, ground improvement, hydrogeology and contaminant hydrogeology, geochemistry, waste management, geosynthetics, offshore engineering, ice, frozen ground and northern engineering, risk and reliability applications, and physical and numerical modelling. Contributions that have practical relevance are preferred, including case records. Purely theoretical contributions are not generally published unless they are on a topic of special interest (like unsaturated soil mechanics or cold regions geotechnics) or they have direct practical value.
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