Artificial Neural Network Models for Determining the Load-Bearing Capacity of Eccentrically Compressed Short Concrete-Filled Steel Tubular Columns

CivilEng Pub Date : 2024-02-02 DOI:10.3390/civileng5010008
A. Chepurnenko, Vasilina Turina, V. Akopyan
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Abstract

Artificial neural networks (ANN) have a great promise in predicting the load-bearing capacity of building structures. The purpose of this work was to develop ANN models to determine the ultimate load of eccentrically compressed concrete-filled steel tubular (CFST) columns of circular cross-sections, which operated on the widest possible range of input parameters. Short columns were considered for which the amount of deflection does not affect the bending moment. A feedforward network was selected as the neural network type. The input parameters of the neural networks were the outer diameter of the columns, the thickness of the pipe wall, the yield strength of steel, the compressive strength of concrete and the relative eccentricity. Artificial neural networks were trained on synthetic data generated based on a theoretical model of the limit equilibrium of CFST columns. Two ANN models were created. When training the first model, the ultimate loads were determined at a given eccentricity of the axial force without taking into account additional random eccentricity. When training the second model, additional random eccentricity was taken into account. The total volume of the training dataset was 179,025 samples. Such a large training dataset size has never been used before. The training dataset covers a wide range of changes in the characteristics of the pipe metal and concrete of the core, pipe diameters and wall thicknesses, as well as eccentricities of the axial force. The trained models are characterized by high mean square error (MSE) scores. The correlation coefficients between the predicted and target values are very close to 1. The ANN models were tested on experimental data for 81 eccentrically compressed samples presented in five different works and 265 centrally compressed samples presented in twenty-six papers.
确定偏心压缩短混凝土填充钢管柱承载能力的人工神经网络模型
人工神经网络(ANN)在预测建筑结构的承载能力方面大有可为。这项工作的目的是开发 ANN 模型,以确定圆形截面偏心压缩混凝土填充钢管 (CFST) 柱的极限荷载,该模型可在尽可能宽的输入参数范围内运行。考虑了挠曲量不影响弯矩的短柱。选择前馈网络作为神经网络类型。神经网络的输入参数为支柱外径、管壁厚度、钢材屈服强度、混凝土抗压强度和相对偏心率。人工神经网络根据 CFST 柱极限平衡理论模型生成的合成数据进行训练。创建了两个人工神经网络模型。训练第一个模型时,在不考虑额外随机偏心的情况下,确定了给定轴力偏心时的极限荷载。在训练第二个模型时,考虑了额外的随机偏心率。训练数据集的总量为 179 025 个样本。如此大规模的训练数据集以前从未使用过。训练数据集涵盖了管芯金属和混凝土特性、管道直径和壁厚以及轴向力偏心率的各种变化。训练模型的特点是均方误差 (MSE) 分数较高。预测值和目标值之间的相关系数非常接近 1。ANN 模型在五篇不同论文中介绍的 81 个偏心受压样本和 265 篇论文中介绍的 265 个中心受压样本的实验数据上进行了测试。
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