预测含碳纳米管水泥基材料力学性能的机器学习方法

IF 6.2 2区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Developments in the Built Environment Pub Date : 2024-07-01 DOI:10.1016/j.dibe.2024.100494
Nader M. Okasha , Masoomeh Mirrashid , Hosein Naderpour , Aybike Ozyuksel Ciftcioglu , D.P.P. Meddage , Nima Ezami
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引用次数: 0

摘要

本研究探讨了如何利用机器学习来预测使用碳纳米管 (CNT) 增强的水泥基材料的机械性能。具体来说,研究重点是估算这些新型复合材料的弹性模量和抗弯强度,它们有可能对建筑行业产生重大影响。研究分析了七个关键变量,包括水灰比、砂灰比、固化龄期、CNT 长径比、CNT 含量、表面活性剂与 CNT 的比率以及超声时间。人工神经网络、支持向量回归和直方图梯度提升被用来预测这些机械性能。此外,还从神经网络模型中提取了一个用户友好型公式。对每个模型的性能进行了评估,结果显示神经网络对预测弹性模量最有效。然而,直方图梯度提升模型在预测弯曲强度方面的表现优于其他所有模型。这些发现凸显了所采用的技术在准确预测 CNT 增强水泥基材料性能方面的有效性。此外,从神经网络中提取公式为了解输入参数与机械性能之间的相互作用提供了宝贵的见解。
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Machine learning approach to predict the mechanical properties of cementitious materials containing carbon nanotubes

This research explores the use of machine learning to predict the mechanical properties of cementitious materials enhanced with carbon nanotubes (CNTs). Specifically, the study focuses on estimating the elastic modulus and flexural strength of these novel composite materials, with the potential to significantly impact the construction industry. Seven key variables were analyzed including water-to-cement ratio, sand-to-cement ratio, curing age, CNT aspect ratio, CNT content, surfactant-to-CNT ratio, and sonication time. Artificial neural network, support vector regression, and histogram gradient boosting, were used to predict these mechanical properties. Furthermore, a user-friendly formula was extracted from the neural network model. Each model performance was evaluated, revealing the neural network to be the most effective for predicting the elastic modulus. However, the histogram gradient boosting model outperformed all others in predicting flexural strength. These findings highlight the effectiveness of the employed techniques, in accurately predicting the properties of CNT-enhanced cementitious materials. Additionally, extracting formulas from the neural network provides valuable insights into the interplay between input parameters and mechanical properties.

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来源期刊
CiteScore
7.40
自引率
1.20%
发文量
31
审稿时长
22 days
期刊介绍: Developments in the Built Environment (DIBE) is a recently established peer-reviewed gold open access journal, ensuring that all accepted articles are permanently and freely accessible. Focused on civil engineering and the built environment, DIBE publishes original papers and short communications. Encompassing topics such as construction materials and building sustainability, the journal adopts a holistic approach with the aim of benefiting the community.
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