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Modeling the confined compressive strength of hybrid circular concrete columns using neural networks

机译:使用神经网络对混合圆形混凝土柱的承压强度进行建模

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With respect to rehabilitation, strengthening and retrofitting of existing and deteriorated columns in buildings and bridges, CFRP sheets have been found effective in enhancing the performance of existing RC columns by wrapping and bonding CFRP sheets externally around the concrete. Concrete columns and piers that are confined by both lateral steel reinforcement and CFRP are sometimes referred to as "hybrid" concrete columns. With the availability of experimental data on concrete columns confined by steel reinforcement and/or CFRP, the study presents modeling using artificial neural networks (ANNs) to predict the compressive strength of hybrid circular RC columns. The prediction of the ultimate confined compressive strength of RC columns is very important especially when this value is used in estimating the capacity of structures. The present ANN model used as parameters for the confining materials the lateral steel ratio (ps) and the FRP volumetric ratio (pFRP). The model gave good predictions for three types of confined columns: (a) columns confined with steel reinforcement only, (b) CFRP confined columns, and (c) hybrid columns confined by both steel and CFRP. The model may be used for predicting the compressive strength of existing circular RC columns confined with steel only that will be strengthened or retrofitted using CFRP.
机译:关于建筑物和桥梁中现存的和老化的立柱的修复,加固和翻新,发现CFRP薄板可以通过将CFRP薄板外部包裹和粘结在混凝土周围来有效地提高现有RC立柱的性能。受侧向钢筋和CFRP约束的混凝土柱和墩有时称为“混合”混凝土柱。利用受钢筋和/或CFRP约束的混凝土柱上的实验数据的可用性,该研究提出了使用人工神经网络(ANN)进行建模以预测混合圆形RC柱的抗压强度的模型。 RC柱极限极限抗压强度的预测非常重要,尤其是在使用该值估算结构的承载力时。当前的ANN模型将侧向钢比(ps)和FRP体积比(pFRP)用作约束材料的参数。该模型对三种类型的承压柱给出了良好的预测:(a)仅用钢筋加固的承压柱,(b)CFRP承压柱,以及(c)由钢和CFRP承压的混合柱。该模型可用于预测仅由钢限制的现有圆形RC柱的抗压强度,而这些柱将使用CFRP进行加固或翻新。

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