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Neural network modeling of strength enhancement for CFRP confined concrete cylinders

机译:CFRP约束混凝土圆筒强度增强的神经网络建模。

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This study presents the application of neural networks (NN) for the modeling of strength enhancement of CFRP (carbon fiber-reinforced plastic) confined concrete cylinders. The proposed NN model is based on experimental results collected from literature. It represents the ultimate strength of concrete cylinders after CFRP confinement which is also given in explicit form in terms of diameter, unconfined concrete strength, tensile strength CFRP laminate and total thickness of CFRP layer used. The accuracy of the proposed NN model is quite satisfactory as compared to experimental results. Moreover the results of proposed NN model are compared with 10 different theoretical models proposed by researchers so far and are found to be by far more accurate.
机译:这项研究提出了神经网络(NN)在CFRP(碳纤维增强塑料)承压混凝土圆柱体强度增强建模中的应用。所提出的NN模型基于从文献中收集的实验结果。它代表了CFRP约束后混凝土圆柱的极限强度,也以直径,无约束混凝土强度,CFRP层压板的抗拉强度和所用CFRP层的总厚度明确表示。与实验结果相比,所提出的神经网络模型的准确性非常令人满意。此外,将提出的NN模型的结果与迄今为止研究人员提出的10种不同的理论模型进行了比较,发现它们更加准确。

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