预测基于氧化石墨烯的混凝土抗压强度的可解释机器学习方法

IF 7.4 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Construction and Building Materials Pub Date : 2024-09-17 DOI:10.1016/j.conbuildmat.2024.138346
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引用次数: 0

摘要

氧化石墨烯(GO)有望提高混凝土强度。尽管氧化石墨烯经常被用于水泥复合材料中,但其对混凝土性能的影响却鲜有研究。由于各成分之间存在各种相互作用,如氧化石墨烯的类型和百分比、超塑化剂(SP)的类型和百分比、分散技术和养护龄期,因此氧化石墨烯对混凝土的影响仍不明确。因此,使用简单的数学方法预测抗压强度具有挑战性。本研究首次尝试开发一种经过全面验证的机器学习模型,通过考虑所有关键变量参数来预测 GO 混凝土的抗压强度特性。为了收集训练机器学习(ML)模型所需的数据,我们开展了一项全面的实验室实验计划。ML 模型训练完成后,就可以用来预测每个输入变量与抗压强度特性之间的关系。四种机器学习模型--(a) 多元线性回归 (MLR)、(b) K 近邻 (KNN)、(c) 随机森林 (RF) 和 (d) 极端梯度提升 (XGB) --被用来模拟输入参数与抗压强度之间的关系。此外,还采用了可解释机器学习(XML)方法来阐明混合成分对 GO 混凝土抗压强度的影响。测试预测结果表明,XGB 预测的确定系数 (R2) 为 0.981,相关系数 (R) 为 0.99,均方误差 (MSE) 为 0.9,平均归一化偏差 (MNB) 为 0.004,分散指数 (SI) 为 0.2,平均绝对误差 (MAE) 为 0.8 兆帕,优于其他模型。XML 突出了 GO 和其他变量的真正影响,强调了 GO 的存在可显著提高抗压强度。从实验工作中观察到的最佳 GO 含量和最佳超塑化剂含量与 XML 分析得出的结果一致,表明了解释与实验结果的一致性。这意味着在工业领域的混凝土拌合物设计应用中使用 XML 方法具有优越性。
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An explainable machine learning approach to predict the compressive strength of graphene oxide-based concrete

Graphene oxide (GO) has shown promise in improving concrete strength. Despite its frequent use in cement composites, its effect on concrete properties is less explored. The influence of GO on concrete remains unclear due to various interactions among constituents such as GO type and percentage, Superplasticiser (SP) type and percentage, dispersion technique, and curing age. Therefore, making prediction of compressive strength using simple mathematical formation is challenging. This study represents the first-ever attempt at developing a comprehensively validated machine learning model to predict GO-concrete's compressive strength characteristics by considering all key variable parameters. A comprehensive laboratory experiment program was conducted to collect the data required for training the machine learning (ML) models. Once the ML models were trained, they were used to predict the relationship of each of those input variables towards the compressive strength properties. Four machine learning models—(a) multiple linear regression (MLR), (b) k-nearest neighbour (KNN), (c) random forest (RF) and (d) extreme gradient boost (XGB)—were utilised to model the relationship between input parameters and compressive strength. Also, explainable machine learning (XML) methods were employed to elucidate the impact of mixed constituents on the compressive strength of GO concrete. The results from test predictions showcase that the XGB has attained a coefficient of determination (R2) of 0.981, coefficient of correlation (R) of 0.99, mean square error (MSE) of 0.9, mean normalised bias (MNB) of 0.004, scatter index (SI) of 0.2 with mean absolute error (MAE) of 0.8 MPa for the predictions, outperforming the remaining models. XML highlighted the true impact of GO and the remaining variables, emphasising that the presence of GO significantly improves compressive strength. The optimum GO content and optimum superplasticiser content observed from the experimental work agreed with results obtained from the XML analysis, showing the consistency of the explanation with the experimental results. This implies the superiority of using XML methods in concrete mix design applications in industry.

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来源期刊
Construction and Building Materials
Construction and Building Materials 工程技术-材料科学:综合
CiteScore
13.80
自引率
21.60%
发文量
3632
审稿时长
82 days
期刊介绍: Construction and Building Materials offers an international platform for sharing innovative and original research and development in the realm of construction and building materials, along with their practical applications in new projects and repair practices. The journal publishes a diverse array of pioneering research and application papers, detailing laboratory investigations and, to a limited extent, numerical analyses or reports on full-scale projects. Multi-part papers are discouraged. Additionally, Construction and Building Materials features comprehensive case studies and insightful review articles that contribute to new insights in the field. Our focus is on papers related to construction materials, excluding those on structural engineering, geotechnics, and unbound highway layers. Covered materials and technologies encompass cement, concrete reinforcement, bricks and mortars, additives, corrosion technology, ceramics, timber, steel, polymers, glass fibers, recycled materials, bamboo, rammed earth, non-conventional building materials, bituminous materials, and applications in railway materials.
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