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Span-to-depth ratio effect on shear strength of steel fiber-reinforced high-strength concrete deep beams using ANN model

机译:基于ANN模型的跨高比对钢纤维增强高强混凝土深梁抗剪强度的影响

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The paper predicts the shear strength of high-strength steel fiber-reinforced concrete deep beams. It studies the effect of clear span-to-overall depth ratio on shear capacity of steel fiber high-strength deep beams using artificial neural network (ANN8). The three-layered model has eight input nodes which represent width, effective depth, volume fraction, fiber aspect ratio and shear span-to-depth ratio, longitudinal steel, compressive strength of concrete, and clear span-to-overall depth ratio. The model predicts the shear strength of high-strength steel fiber deep beams to be reasonably good when compared with the results of proposed equations by researchers as well as the results obtained by neural network (ANN7) which is developed for seven inputs excluding span-to-depth ratio. The developed neural network ANN8 proves the versatility of artificial neural networks to establish the relations between various parameters affecting complex behavior of steel fiber-reinforced concrete deep beams and costly experimental processes.
机译:本文预测了高强度钢纤维增强混凝土深梁的抗剪强度。使用人工神经网络(ANN8)研究了清晰的跨跨总深度比对钢纤维高强度深梁抗剪承载力的影响。这个三层模型有八个输入节点,分别代表宽度,有效深度,体积分数,纤维长宽比和剪切跨度比,纵向钢筋,混凝土的抗压强度以及清晰的跨度比。该模型预测,与研究人员提出的方程式结果以及通过神经网络(ANN7)获得的结果相比,高强度钢纤维深梁的抗剪强度相当好,该神经网络是针对除跨度之外的七个输入而开发的深度比。先进的神经网络ANN8证明了人工神经网络的多功能性,可以建立影响钢纤维混凝土深梁复杂性能的各种参数与昂贵的实验过程之间的关系。

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