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Predicting fiber-reinforced polymer-concrete bond strength using artificial neural networks: A comparative analysis study

机译:使用人工神经网络预测纤维增强聚合物 - 混凝土粘合强度:比较分析研究

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摘要

The repair efficiency of fiber-reinforced polymer (FRP) is crucially linked to bond strength between FRP and concrete. Artificial neural networks (ANNs) technique is employed for the prediction of FRP-concrete bond strength based on more than 440 data points collected from literature work for training and testing of the proposed ANNs model. Such a model facilitates investigating the effect of various key parameters in controlling the bond. These are concrete compressive strength, maximum aggregate size, FRP thickness and modulus of elasticity, FRP-to-concrete length and width ratios, and adhesive tensile strength. The proposed ANNs model shows high fitting and prediction capability of training and testing data, respectively, with low mean square errors. Its accuracy of prediction far exceeds that of literature empirical models. Furthermore, the present comparative and sensitivity study of the predicted bond strength promotes the understanding of the impact of the above key parameters.
机译:纤维增强聚合物(FRP)的修复效率是至关重要的FRP和混凝土之间的粘合强度。 人工神经网络(ANNS)技术用于基于从文献工作中收集的超过440个数据点来预测FRP - 混凝土粘合强度,用于训练和测试所提出的ANNS模型。 这种模型有助于研究各种关键参数在控制键的效果。 这些是混凝土抗压强度,最大骨料尺寸,FRP厚度和弹性模量,FRP - 混凝土长度和宽度比,以及粘合的拉伸强度。 所提出的ANNS模型分别显示出培训和测试数据的高拟合和预测能力,具有低均方误差。 其预测的准确性远远超过文学实证模型。 此外,预测债券强度的本比较和敏感性研究促进了对上述关键参数影响的理解。

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