Regression prediction model for shear strength of cold joint in concrete

IF 3.9 2区 工程技术 Q1 ENGINEERING, CIVIL
Ziqin Zhong, Shixing Zhao, Jing Xia, Qirui Luo, Qiaoling Zhou, Shuheng Yang, Fei He, Yu Yao
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Abstract

The shear resistance of cold joint in concrete is influenced by various design parameters. Traditional mechanical models typically consider only a limited number of parameters to predict the shear strength of cold joints. This research aims to explore the complex nonlinear relationship between design parameters and cold joint shear strength using statistical method and machine learning technology. The goal is to develop a more accurate, reliable, and engineering applicable regression model for predicting shear strength. A dataset of 546 Z-shaped shear specimens characterizing cold joint in concrete was constructed, involving a total of 16 variables that may affect shear performance. Correlation analysis and recursive elimination were adopted to eliminate correlated and insignificant variables based on their importance. Multiple linear regression (MLR), random forest regression (RFR), and support vector machine regression (SVR) prediction models for cold joint shear strength were established based on rigorously screened variables and comprehensively evaluated using multiple methods. It was found that the most significant factors influencing the shear strength of cold joints are concrete strength, interface shear key, product of interface reinforcement strength and its reinforcement ratio, normal stress, fiber length of new concrete, casting method of the new concrete, and product of the fiber length and its tensile strength of old concrete. The MLR, SVR, and RFR models all exhibited superior performance relative to traditional mechanics-based models with regard to shear strength prediction of cold joints. The RFR model is recommended for predicting the shear strength of cold joints due to its superior evaluation indexes in comparison to the MLR and SVR models, and variable sensitivity analysis shows that it does not yield common-sense errors.
混凝土冷缝抗剪强度回归预测模型
混凝土冷接缝的抗剪性能受各种设计参数的影响。传统的力学模型通常只考虑有限的参数来预测冷接缝的抗剪强度。本研究旨在利用统计方法和机器学习技术探索设计参数与冷接缝抗剪强度之间复杂的非线性关系。目标是开发出一种更准确、更可靠、更适用于工程的回归模型,用于预测剪切强度。我们构建了一个包含 546 个 Z 型剪切试件的数据集,这些试件表征了混凝土冷接缝的特性,共涉及 16 个可能影响剪切性能的变量。根据变量的重要性,采用相关分析和递归剔除法剔除相关和不重要的变量。在严格筛选变量的基础上,建立了冷接缝抗剪强度的多元线性回归(MLR)、随机森林回归(RFR)和支持向量机回归(SVR)预测模型,并采用多种方法进行了综合评估。结果发现,影响冷缝抗剪强度的最主要因素是混凝土强度、界面剪力键、界面钢筋强度与其配筋率的乘积、法向应力、新混凝土的纤维长度、新混凝土的浇筑方法以及旧混凝土的纤维长度与其抗拉强度的乘积。与传统的力学模型相比,MLR、SVR 和 RFR 模型在冷接缝剪切强度预测方面都表现出更优越的性能。由于 RFR 模型的评价指标优于 MLR 和 SVR 模型,且变量敏感性分析表明 RFR 模型不会产生常识性误差,因此推荐使用 RFR 模型预测冷接缝的抗剪强度。
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来源期刊
Structures
Structures Engineering-Architecture
CiteScore
5.70
自引率
17.10%
发文量
1187
期刊介绍: Structures aims to publish internationally-leading research across the full breadth of structural engineering. Papers for Structures are particularly welcome in which high-quality research will benefit from wide readership of academics and practitioners such that not only high citation rates but also tangible industrial-related pathways to impact are achieved.
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