Forecasting ultimate bond strength between ribbed stainless steel bar and concrete using explainable machine learning algorithms

IF 1.7 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Y. Sun
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Abstract

PurposeIn recent years, there has been growing interest in the use of stainless steel (SS) in reinforced concrete (RC) structures due to its distinctive corrosion resistance and excellent mechanical properties. To ensure effective synergy between SS and concrete, it is necessary to develop a time-saving approach to accurately determine the ultimate bond strength τu between the two materials in RC structures.Design/methodology/approachThree robust machine learning (ML) models, including support vector regression (SVR), random forest (RF) and extreme gradient boosting (XGBoost), are employed to predict τu between ribbed SS and concrete. Model hyperparameters are fine-tuned using Bayesian optimization (BO) with 10-fold cross-validation. The interpretable techniques including partial dependence plots (PDPs) and Shapley additive explanation (SHAP) are also utilized to figure out the relationship between input features and output for the best model.FindingsAmong the three ML models, BO-XGBoost exhibits the strongest generalization and highest accuracy in estimating τu. According to SHAP value-based feature importance, compressive strength of concrete fc emerges as the most prominent feature, followed by concrete cover thickness c, while the embedment length to diameter ratio l/d, and the diameter d for SS are deemed less important features. Properly increasing c and fc can enhance τu between ribbed SS and concrete.Originality/valueAn online graphical user interface (GUI) has been developed based on BO-XGBoost to estimate τu. This tool can be utilized in structural design of RC structures with ribbed SS as reinforcement.
利用可解释的机器学习算法预测带肋不锈钢钢筋与混凝土之间的极限粘结强度
目的 近年来,由于不锈钢(SS)具有独特的耐腐蚀性和优异的机械性能,人们对在钢筋混凝土(RC)结构中使用不锈钢越来越感兴趣。为确保不锈钢和混凝土之间的有效协同作用,有必要开发一种省时的方法,以准确确定钢筋混凝土结构中两种材料之间的极限粘结强度τu。设计/方法/途径采用了三种稳健的机器学习(ML)模型,包括支持向量回归(SVR)、随机森林(RF)和极梯度提升(XGBoost),来预测带肋不锈钢和混凝土之间的τu。利用贝叶斯优化(BO)和 10 倍交叉验证对模型超参数进行微调。研究结果在三种 ML 模型中,BO-XGBoost 在估计 τu 方面表现出最强的泛化能力和最高的准确性。根据基于 SHAP 值的特征重要性,混凝土抗压强度 fc 是最重要的特征,其次是混凝土覆盖层厚度 c,而预埋件长径比 l/d 和 SS 的直径 d 被认为是不太重要的特征。适当增加 c 和 fc 可以提高带肋 SS 与混凝土之间的 τu 值。该工具可用于使用带肋 SS 作为配筋的 RC 结构的结构设计。
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来源期刊
CiteScore
3.70
自引率
5.00%
发文量
60
期刊介绍: Multidiscipline Modeling in Materials and Structures is published by Emerald Group Publishing Limited from 2010
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