Effective thermal conductivity of granular soils: a review of influencing factors and prediction models towards an investigation framework through multiscale characters

Tairu Chen, Wenbin Fei, Guillermo Narsilio
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Abstract

The effective thermal conductivity of soil is important to geo-engineering applications, and it is controlled by factors across different length scales. Through a comprehensive review of these factors, we found that while other more traditional factors have been well studied, there is still a lack of characterisation of soil microscale and mesoscale structures and their influence on effective thermal conductivity. In addition, after reviewing the models available in the literature for soil effective thermal conductivity prediction, it was found that compared with empirical and theoretical models, machine learning models can account for the influence of multi-scale factors, however, research into them is scarce. To overcome the limitations of previous research, we proposed a framework that can investigate the factors influencing soil effective thermal conductivity at multiple scale. It includes the impact of soil structural factors at micro to mesoscale, and this impact is integrated with the influence from other factors for accurate thermal conductivity prediction.
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粒状土的有效导热性:通过多尺度特征建立调查框架的影响因素和预测模型综述
土壤的有效导热率对地质工程应用非常重要,它受不同长度尺度的因素控制。通过对这些因素的全面审查,我们发现虽然对其他更传统的因素进行了深入研究,但仍然缺乏对土壤微尺度和中尺度结构及其对有效导热率影响的描述。此外,在查阅了文献中有关土壤有效导热率预测的模型后,我们发现与经验模型和理论模型相比,机器学习模型可以考虑多尺度因素的影响,但对其的研究还很少。为了克服以往研究的局限性,我们提出了一个可以研究多尺度土壤有效导热系数影响因素的框架。它包括从微观到中观尺度的土壤结构因素的影响,并将这种影响与其他因素的影响相结合,从而准确预测导热系数。
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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