Ultimate axial capacity prediction of CCFST columns using hybrid intelligence models – a new approach

IF 4 3区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Nguyen-Vu Luat, Jiuk Shin, S. Han, Ngoc-Vinh Nguyen, Kihak Lee
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引用次数: 2

Abstract

This study aims to propose a new intelligence technique of predicting the ultimate capacity of axially loaded circular concrete-filled steel tube (CCFST) columns. A hybrid system based on one of the evolution algorithm – Genetic Algorithm (GA), fused with a well-known data-driven model of multivariate adaptive regression splines (MARS), namely G-MARS, was proposed and applied. To construct the MARS model, a database of 504 experimental cases was collected from the available literature. The GA was utilized to determine an optimal set of MARS's hyperparameters, to improve the prediction accuracy. The compiled database covered five input variables, including the diameter of the circular cross section-section (D), the wall thickness of the steel tube (t), the length of the column (L), the compressive strength of the concrete (fc), and the yield strength of the steel tube (fy). A new explicit formulation was derived from MARS in further analysis, and its estimation accuracy was validated against a benchmark model, G-ANN, an artificial neural network (ANN) optimized using the same metaheuristic algorithm. The simulation results in terms of error range and statistical indices indicated that the derived formula had a superior capability in predicting the ultimate capacity of CCFST columns, relative to the G-ANN model and the other existing empirical methods.
利用混合智能模型预测CCFST柱的极限轴向承载力——一种新方法
本研究旨在提出一种新的轴向圆形钢管混凝土柱极限承载力智能预测技术。提出了一种基于遗传算法(GA)的混合系统,并将其与著名的多元自适应回归样条(MARS)数据驱动模型G-MARS相融合。为了构建MARS模型,我们从现有文献中收集了504个实验案例的数据库。利用遗传算法确定MARS超参数的最优集合,以提高预测精度。编制的数据库包含5个输入变量,包括圆截面直径(D)、钢管壁厚(t)、柱长(L)、混凝土抗压强度(fc)和钢管屈服强度(fy)。在进一步的分析中,从MARS推导出了一个新的显式公式,并通过使用相同的元启发式算法优化的人工神经网络(ANN)基准模型G-ANN验证了其估计精度。在误差范围和统计指标方面的模拟结果表明,相对于G-ANN模型和其他现有的经验方法,推导出的公式在预测CCFST柱的极限容量方面具有优越的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Steel and Composite Structures
Steel and Composite Structures 工程技术-材料科学:复合
CiteScore
8.50
自引率
19.60%
发文量
0
审稿时长
7.5 months
期刊介绍: Steel & Composite Structures, An International Journal, provides and excellent publication channel which reports the up-to-date research developments in the steel structures and steel-concrete composite structures, and FRP plated structures from the international steel community. The research results reported in this journal address all the aspects of theoretical and experimental research, including Buckling/Stability, Fatigue/Fracture, Fire Performance, Connections, Frames/Bridges, Plates/Shells, Composite Structural Components, Hybrid Structures, Fabrication/Maintenance, Design Codes, Dynamics/Vibrations, Nonferrous Metal Structures, Non-metalic plates, Analytical Methods. The Journal specially wishes to bridge the gap between the theoretical developments and practical applications for the benefits of both academic researchers and practicing engineers. In this light, contributions from the practicing engineers are especially welcome.
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