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Empirical Approach for Determining Axial Strength of Circular Concrete Filled Steel Tubular Columns

机译:确定圆形钢管混凝土柱轴向强度的经验方法

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摘要

The concrete filled steel tubular (CFST) columns are highly regarded in recent years as an interesting option in the construction field by designers and structural engineers, due to their exquisite structural performance, with enhanced load bearing capacity and energy absorption capacity. This study presents a new approach to simulate the capacity of circular CFST columns under axial loading condition, using a large database of experimental results by applying artificial neural network (ANN). A well trained network is established and is used to simulate the axial capacity of CFST columns. The validation and testing of the ANN is carried out. The current study is focused on proposing a simplified equation that can predict the ultimate strength of the axially loaded columns with high level of accuracy. The predicted results are compared with five existing analytical models which estimate the strength of the CFST column. The ANN-based equation has good prediction with experimental data, when compared with the analytical models.
机译:钢管混凝土(CFST)柱由于其精湛的结构性能,增强的承载能力和能量吸收能力,近年来被设计人员和结构工程师视为建筑领域的一个有趣选择。这项研究提出了一种新方法,可通过使用大型人工神经网络(ANN)来利用实验结果的大型数据库来模拟圆形CFST圆柱在轴向载荷条件下的承载能力。建立了训练有素的网络,该网络用于模拟CFST柱的轴向承载力。进行了ANN的验证和测试。当前的研究集中在提出一个简化的方程,该方程可以高度准确地预测轴向加载柱的极限强度。将预测结果与五个现有的分析模型(估算CFST柱的强度)进行比较。与分析模型相比,基于ANN的方程式对实验数据具有良好的预测。

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