Advancements in Understanding Interface Friction: A Combined Experimental and Machine Learning Approach Using Multiple Linear and Random Forest Regressions

Firas Daghistani, Hossam Abuel-Naga
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Abstract

The interface friction between granular materials and continuum surfaces is fundamental in civil engineering, especially in geotechnical projects where sand of varying sizes and shapes contacts surfaces with different roughness and hardness. The aim of this research is to investigate the parameters that influence the peak interface friction, taking into consideration the properties of both sand and continuum surfaces. This will be accomplished by employing a combination of experimental and machine learning techniques. In the experiment, a series of interface shear tests were conducted using a direct shear apparatus under differing levels of normal stress and density. Utilising machine learning techniques, the study considered eleven input features: mean particle size, void ratio, specific gravity, particle regularity, coefficient of uniformity, coefficient of curvature, granular rubber content, carpet fibre content, normal stress, surface roughness, and surface hardness. The output measured was the peak interface friction. The machine learning techniques enable us to explore the complex relationships between the input features and the peak interface friction, and to develop an empirical equation that can accurately predict the interface friction. The experiment findings reveal that density, inclusion of recycled material, and normalised roughness impact peak interface friction. The machine learning findings validate the efficacy of both multiple linear regression and random forest regression models in predicting the peak interface friction, with the latter outperforming the former in terms of accuracy when compared to the experiment results. Furthermore, the most important features from both models were identified.
了解界面摩擦的进展:使用多重线性回归和随机森林回归的实验与机器学习相结合的方法
粒状材料与连续表面之间的界面摩擦力是土木工程中的基本要素,尤其是在岩土工程中,不同大小和形状的沙子会接触到不同粗糙度和硬度的表面。这项研究的目的是在考虑沙子和连续表面特性的基础上,研究影响界面摩擦峰值的参数。为此,将结合使用实验和机器学习技术。在实验中,使用直接剪切仪器在不同的法向应力和密度水平下进行了一系列界面剪切试验。利用机器学习技术,研究考虑了 11 个输入特征:平均粒度、空隙率、比重、颗粒规整度、均匀系数、曲率系数、颗粒橡胶含量、地毯纤维含量、法向应力、表面粗糙度和表面硬度。测量的输出结果是界面摩擦峰值。机器学习技术使我们能够探索输入特征与界面摩擦力峰值之间的复杂关系,并开发出一个能够准确预测界面摩擦力的经验方程。实验结果表明,密度、包含的回收材料和归一化粗糙度会影响界面摩擦峰值。机器学习结果验证了多元线性回归模型和随机森林回归模型在预测界面摩擦峰值方面的有效性,与实验结果相比,后者的准确性优于前者。此外,两种模型中最重要的特征也被识别出来。
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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