Suppr超能文献

用于评估再生骨料混凝土强度的机器学习预测模型

Machine Learning Prediction Models to Evaluate the Strength of Recycled Aggregate Concrete.

作者信息

Yuan Xiongzhou, Tian Yuze, Ahmad Waqas, Ahmad Ayaz, Usanova Kseniia Iurevna, Mohamed Abdeliazim Mustafa, Khallaf Rana

机构信息

School of Traffic and Environment, Shenzhen Institute of Information Technology, Shenzhen 518172, China.

School of Civil Engineering, University of Science and Technology Liaoning, Anshan 114051, China.

出版信息

Materials (Basel). 2022 Apr 12;15(8):2823. doi: 10.3390/ma15082823.

Abstract

Compressive and flexural strength are the crucial properties of a material. The strength of recycled aggregate concrete (RAC) is comparatively lower than that of natural aggregate concrete. Several factors, including the recycled aggregate replacement ratio, parent concrete strength, water-cement ratio, water absorption, density of the recycled aggregate, etc., affect the RAC's strength. Several studies have been performed to study the impact of these factors individually. However, it is challenging to examine their combined impact on the strength of RAC through experimental investigations. Experimental studies involve casting, curing, and testing samples, for which substantial effort, price, and time are needed. For rapid and cost-effective research, it is critical to apply new methods to the stated purpose. In this research, the compressive and flexural strengths of RAC were predicted using ensemble machine learning methods, including gradient boosting and random forest. Twelve input factors were used in the dataset, and their influence on the strength of RAC was analyzed. The models were validated and compared using correlation coefficients (R), variance between predicted and experimental results, statistical tests, and k-fold analysis. The random forest approach outperformed gradient boosting in anticipating the strength of RAC, with an R of 0.91 and 0.86 for compressive and flexural strength, respectively. The models' decreased error values, such as mean absolute error (MAE) and root-mean-square error (RMSE), confirmed the higher precision of the random forest models. The MAE values for the random forest models were 4.19 MPa and 0.56 MPa, whereas the MAE values for the gradient boosting models were 4.78 MPa and 0.64 MPa, for compressive and flexural strengths, respectively. Machine learning technologies will benefit the construction sector by facilitating the evaluation of material properties in a quick and cost-effective manner.

摘要

抗压强度和抗弯强度是材料的关键性能。再生骨料混凝土(RAC)的强度相对低于天然骨料混凝土。包括再生骨料取代率、母混凝土强度、水灰比、吸水率、再生骨料密度等在内的几个因素会影响RAC的强度。已经进行了多项研究来分别研究这些因素的影响。然而,通过实验研究来考察它们对RAC强度的综合影响具有挑战性。实验研究涉及浇筑、养护和测试样品,这需要大量的精力、成本和时间。为了进行快速且经济高效的研究,应用新方法来实现所述目的至关重要。在本研究中,使用包括梯度提升和随机森林在内的集成机器学习方法预测了RAC的抗压强度和抗弯强度。数据集中使用了12个输入因素,并分析了它们对RAC强度的影响。使用相关系数(R)、预测结果与实验结果之间的方差、统计检验和k折分析对模型进行了验证和比较。在预测RAC强度方面,随机森林方法优于梯度提升,抗压强度和抗弯强度的R值分别为0.91和0.86。模型降低的误差值,如平均绝对误差(MAE)和均方根误差(RMSE),证实了随机森林模型具有更高的精度。随机森林模型的抗压强度和抗弯强度的MAE值分别为4.19MPa和0.56MPa,而梯度提升模型的MAE值分别为4.78MPa和0.64MPa。机器学习技术将通过以快速且经济高效的方式促进材料性能评估而使建筑行业受益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7bd4/9025364/defebfcff5a4/materials-15-02823-g001a.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验