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Data-driven shear strength prediction of steel fiber reinforced concrete beams using machine learning approach

机译:使用机器学习方法的钢纤维钢筋混凝土梁的数据驱动剪切强度预测

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摘要

The incorporation of steel fibers in a concrete mix enhances the shear capacity of reinforced concrete beams and a comprehensive understanding of this phenomenon is imperative to have an accurate estimation in engineering designs. Although significant studies have been carried out on shear capacity estimation, mechanics-based models are not yet available due to the complex underlying phenomenon. This paper presents a data-driven approach to the shear strength of SFRC beams and incorporates the largest database compilation of 507 experimental data. Input features considered in this study are the ratio of shear span to effective depth, concrete compressive strength, longitudinal reinforcement ratio, volume fraction, aspect ratio, and type of fiber. Eleven machine learning (ML) models, namely linear regression, ridge regression, lasso regression, decision tree, random forest, support vector machine, k-nearest neighbors, artificial neural network, XGBoost, AdaBoost, and CatBoost, are evaluated to examine their shear strength estimation of SFRC beams. The XGBoost is resulting in the most accurate predictions (85%) with the lowest root mean squared error and low mean absolute error. A study on the importance of the input parameters reveals that shear span to effective depth ratio, longitudinal reinforcement ratio, concrete strength, and volume fraction of fiber are the most influential parameters of shear strength of SFRC.
机译:在混凝土混合中加入钢纤维增强了钢筋混凝土梁的剪切能力,对这种现象的全面了解是在工程设计中具有准确的估计。尽管在剪切容量估计上进行了显着的研究,但由于复杂的潜在现象,基于机械的模型尚未使用。本文提出了一种数据驱动的SFRC光束剪切强度的方法,并包含507个实验数据的最大数据库编译。本研究中考虑的输入特征是剪切跨度与有效深度,混凝土抗压强度,纵向增强率,体积分数,纵横比和纤维类型的比率。十一机器学习(ML)模型,即线性回归,岭回归,套索回归,决策树,随机森林,支持向量机,k最近邻居,人工神经网络,XGBoost,Adaboost和Catboost进行评估,以检查他们的剪切SFRC梁的强度估计。 XGBoost导致最精确的预测(85%)具有最低的根均方误差和低平均绝对误差。对输入参数的重要性的研究表明,剪切跨度为有效深度比,纵向增强比,混凝土强度和纤维的体积分数是SFRC剪切强度最有影响力的参数。

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