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基于机器学习的钢筋混凝土梁抗剪强度预测模型的开发:一项对比研究。

Machine learning models development for shear strength prediction of reinforced concrete beam: a comparative study.

机构信息

Civil and Environmental Engineering Department, King Fahd University of Petroleum and Minerals, Dhahran, 31261, Saudi Arabia.

出版信息

Sci Rep. 2023 Jan 31;13(1):1723. doi: 10.1038/s41598-023-27613-4.

Abstract

Fiber reinforced polymer (FPR) bars have been widely used as a substitutional material of steel reinforcement in reinforced concrete elements in corrosion areas. Shear resistance of FRP reinforced concrete element can be affected by concrete properties and transverse FRP stirrups. Hence, studying the shear strength (V) mechanism is one of the highly essential for pre-design procedure for reinforced concrete elements. This research examines the ability of three machine learning (ML) models called M5-Tree (M5), extreme learning machine (ELM), and random forest (RF) in predicting V of 112 shear tests of FRP reinforced concrete beam with transverse reinforcement. For generating the prediction matrix of the developed ML models, statistical correlation analysis was conducted to generate the suitable inputs models for V prediction. Statistical evaluation and graphical approaches were used to evaluate the efficiency of the proposed models. The results revealed that all the proposed models performed in general well for all the input combinations. However, ELM-M1 and M5-Tree-M5 models exhibited less accuracy performance in comparison with the other developed models. The study showed that the best prediction performance was revealed by M5 tree model using nine input parameters, with coefficient of determination (R) and root mean square error (RMSE) equal to 0.9313 and 35.5083 KN, respectively. The comparison results also indicated that ELM and RF were performed significant results with a less slight performance than M5 model. The study outcome contributes to basic knowledge of investigating the impact of stirrups on V of FRP reinforced concrete beam with the potential of applying different computer aid models.

摘要

纤维增强聚合物(FPR)筋已广泛应用于腐蚀区域钢筋混凝土构件中替代钢筋。FRP 增强混凝土构件的抗剪能力受混凝土性能和横向 FRP 箍筋的影响。因此,研究抗剪强度(V)机制是钢筋混凝土构件预设计程序的重要内容之一。本研究考察了三种机器学习(ML)模型,即 M5 树(M5)、极限学习机(ELM)和随机森林(RF),在预测 112 个 FRP 增强混凝土梁横向配筋抗剪试验中的 V 的能力。为了生成所开发的 ML 模型的预测矩阵,进行了统计相关分析,以生成适合 V 预测的输入模型。采用统计评估和图形方法来评估所提出模型的效率。结果表明,所有提出的模型在所有输入组合下总体表现良好。然而,与其他开发的模型相比,ELM-M1 和 M5-Tree-M5 模型的准确性表现较差。研究表明,使用九个输入参数的 M5 树模型具有最佳的预测性能,决定系数(R)和均方根误差(RMSE)分别为 0.9313 和 35.5083 KN。比较结果还表明,ELM 和 RF 模型的性能与 M5 模型相当,只是略微差一些。该研究结果有助于了解箍筋对 FRP 增强混凝土梁 V 的影响的基础知识,并具有应用不同计算机辅助模型的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/df27/9889786/3145a4aa0f30/41598_2023_27613_Fig1_HTML.jpg

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