锈蚀钢筋混凝土梁恶化响应的数据库和优化机器学习预测

IF 6.2 2区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Developments in the Built Environment Pub Date : 2024-08-23 DOI:10.1016/j.dibe.2024.100527
Benjamin Matthews , Alessandro Palermo , Tom Logan , Allan Scott
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引用次数: 0

摘要

这项研究引入了一个庞大的数据库,该数据库汇集了 54 个实验项目、804 个测试样本和 45 个输入参数,研究了氯离子诱导的腐蚀对腐蚀钢筋混凝土梁恶化的力学响应的影响。研究探索了多个机器学习模型,以确定五个关键响应变量(残余极限弯矩承载力、残余承载力系数、屈服荷载、屈服位移和极限位移)的最高性能预测因子。为了验证经过训练的统计模型的有效性,还对三种现有的分析方法进行了比较。优化后的机器学习模型明显优于传统的分析方法,并达到了很高的预测精度。基于树的集合学习算法,即梯度提升回归树和随机森林,始终能产生最佳预测结果。最后,性能最佳的模型被汇总到一个基于 Python 的应用程序中,用户可以输入新数据,预测在弯曲过程中出现故障的腐蚀梁的机械响应。
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Database and optimized machine learning prediction of the deteriorated response of corroded reinforced concrete beams

This research introduces an extensive database aggregating 54 experimental programs with 804 test specimens and 45 input parameters, investigating the implications of chloride-induced corrosion on the deteriorated mechanical response of corroded reinforced concrete beams. Several machine learning models are explored to determine the highest performing predictor for five key response variables – the residual ultimate moment capacity, residual capacity factor, yield load, yield displacement, and the ultimate displacement. Three existing analytical approaches are included for comparison to verify the efficacy of the trained statistical models. The optimized machine learning models significantly outperformed conventional analytical methods and achieved high levels of predictive accuracy. Ensemble tree-based learning algorithms, namely gradient-boosting regression trees and random forests, consistently produced the best predictions. Finally, the top-performing models are aggregated into a Python-based application that allows users to input new data and predict the mechanical response of a corroded beam failing in bending.

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来源期刊
CiteScore
7.40
自引率
1.20%
发文量
31
审稿时长
22 days
期刊介绍: Developments in the Built Environment (DIBE) is a recently established peer-reviewed gold open access journal, ensuring that all accepted articles are permanently and freely accessible. Focused on civil engineering and the built environment, DIBE publishes original papers and short communications. Encompassing topics such as construction materials and building sustainability, the journal adopts a holistic approach with the aim of benefiting the community.
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