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Shear capacity prediction of slender reinforced concrete structures with steel fibers using machine learning

机译:用机器学习用钢纤维进行细长钢筋混凝土结构的剪切容量预测

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摘要

Shear failure in reinforced concrete beams poses a critical safety issue since it may occur without any prior signs of damage in some cases. Many of the existing shear design equations for steel fiber reinforced concrete (SFRC) beams include significant uncertainty due to failure in reflecting the phenomenology of shear resistance accurately. Given these, adequate reliability evaluation of shear design provisions for SFRC beam is of high significance, and increased accuracy and minimisation of variability in the predictive model is essential. This contribution proposes machine learning (ML) based methods Gaussian Process regression (GPR) and the Random Forest (RF) techniques to predict the ultimate shear resistance of SFRC slender beams without stirrups. The models were developed using a database of 326 experimental SFRC slender beams obtained from previous studies, utilising 75% for model training and the remainder for testing. The performance of the proposed models was assessed by statistical comparison to experimental results and to that of the state-of-practice existing shear design models (fib Model Code 2010, German guideline, Bernat et al. model). The proposed ML-based models are in close alignment with the experimentally observed shear strength and the existing predictive models, but provide more accurate and unbiased predictions. Furthermore, the model uncertainty of the various resistance models was characterised and investigated. The ML-based models displayed the lowest bias and variability, with no significant trend with input parameters. The inconsistencies observed in the predictions by the existing shear design formulations at the variation of shear span to effective depth ratio is a major cause for concern; reliability analysis is required. Finally, partial resistance safety factors were proposed for the model uncertainty associated with the existing shear design equations.
机译:钢筋混凝土梁的剪切失效构成了关键的安全问题,因为在某些情况下没有任何现有损坏迹象。钢纤维钢筋混凝土(SFRC)梁的许多现有剪切设计方程包括由于在精确地反映剪切阻力的失败而具有显着的不确定性。鉴于这些,SFRC光束的剪切设计规定的足够可靠性评估具有很高的意义,并且预测模型中的可变异性提高和最小化是必不可少的。该贡献提出了基于机器学习(ML)的方法高斯过程回归(GPR)和随机森林(RF)技术,以预测不含镫形状的SFRC细长梁的极限剪切电阻。使用从先前研究中获得的326个实验SFRC细长梁的数据库开发了模型,利用75%进行模型训练和剩余的测试。通过与实验结果的统计比较评估所提出的模型的性能,以及实践状态现有剪切设计模型(FIB模型代码2010,德国指南,Bernat等)。所提出的ML基模型与实验观察的剪切强度和现有的预测模型紧密对齐,但提供更准确和无偏的预测。此外,特征和研究了各种电阻模型的模型不确定性。基于ML的模型显示出最低的偏置和变异性,没有显着趋势与输入参数。现有剪切设计配方在剪切跨度变化以有效深度比的预测中观察到的不一致是关注的主要原因;需要可靠性分析。最后,提出了与现有剪切设计方程相关的模型不确定性的偏电阻安全因子。

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