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Prediction of Ultimate Axial Capacity of Square Concrete-Filled Steel Tubular Short Columns Using a Hybrid Intelligent Algorithm

机译:采用混合智能算法预测方形混凝土钢管短柱的极限轴向容量

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摘要

It is crucial to study the axial compression behavior of concrete-filled steel tubular (CFST) columns to ensure the safe operation of engineering structures. The restriction between steel tubular and core concrete in CFSTs is complex and the relationship between geometric and material properties and axial compression behavior is highly nonlinear. These challenges have prompted the use of soft computing methods to predict the ultimate bearing capacity (abbreviated as Nu) under axial compression. Taking the square CFST short column as an example, a mass of experimental data is obtained through axial compression tests. Combined with support vector machine (SVM) and particle swarm optimization (PSO), this paper presents a new method termed PSVM (SVM optimized by PSO) for Nu value prediction. The nonlinear relationship in Nu value prediction is efficiently represented by SVM, and PSO is used to select the model parameters of SVM. The experimental dataset is utilized to verify the reliability of the PSVM model, and the prediction performance of PSVM is compared with that of traditional design methods and other benchmark models. The proposed PSVM model provides a better prediction of the ultimate axial capacity of square CFST short columns. As such, PSVM is an efficient alternative method other than empirical and theoretical formulas.
机译:研究混凝土钢管(CFST)柱的轴向压缩行为至关重要,以确保工程结构的安全运行。 CFST中钢管和芯混凝土之间的限制复杂,几何和材料特性与轴向压缩行为之间的关系是高度非线性的。这些挑战促使使用软计算方法来预测轴向压缩下的最终承载力(缩写为Nu)。以方形CFST短柱为例,通过轴向压缩测试获得大量的实验数据。结合支持向量机(SVM)和粒子群优化(PSO),本文提出了一种用于NU值预测的PSVM(PSO优化的SVM)的新方法。 Nu值预测中的非线性关系通过SVM有效地表示,PSO用于选择SVM的模型参数。实验数据集用于验证PSVM模型的可靠性,并将PSVM的预测性能与传统设计方法和其他基准模型进行比较。所提出的PSVM模型提供了更好地预测方形CFST短柱的最终轴向容量。因此,PSVM是除经验和理论公式之外的有效的替代方法。

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