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A Proposed Model for Axial Strength Estimation of Non-compact and Slender Square CFT Columns

机译:一种用于非紧凑型和细长方形CFT柱的轴向强度估计模型

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摘要

The current international codes divide composite columns into three classes based on the width-to-thickness ratio of the steel tube: compact, non-compact, and slender. The present paper studies the specification of AISC 360-10 to determine the axial strength of concrete-filled steel tube (CFT) members. Three efficient approaches have been developed based on the computational intelligence technique, using a comprehensive database (experimental and numerical) of non-compact and slender square CFT columns. To achieve a wide variety in geometric and material properties of composite columns, the numerical models are simulated using OpenSEES finite element analysis package. The proposed models were created using the Levenberg-Marquardt artificial neural network, group method of data-handling approach, and gene expression programming, based on the mechanical (yield stress of tube and compressive strength of concrete) and geometrical (column length and dimensions of tube) properties of the CFT members. Comparison of the results of developed models and experimental specimens indicates superior performance and their acceptable accuracy in the determination of the axial strength of non-compact and slender CFT columns.
机译:目前国际代码基于钢管的宽度与厚度比将复合柱分为三类:紧凑,非紧凑,细长。本文研究了AISC 360-10的规范,以确定混凝土填充钢管(CFT)构件的轴向强度。基于计算智能技术,使用综合数据库(实验和数值)的非紧凑型和细长的方形CFT柱进行三种有效的方法。为了在复合柱的几何和材料特性方面实现各种各样的氛围,使用OpenSees有限元分析包模拟数值模型。基于机械(屈服应力和混凝土的抗压强度)和几何(柱长和尺寸),采用Levenberg-Marquardt人工神经网络,群体处理方法的组方法和基因表达编程创建的模型。管材)CFT构件的特性。开发模型和实验标本结果的比较表明了卓越的性能及其可接受的准确性在确定非紧凑型和细长的CFT柱的轴向强度。

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