Integrated behavioural analysis of FRP-confined circular columns using FEM and machine learning

IF 5.3 Q2 MATERIALS SCIENCE, COMPOSITES
Liaqat Ali , Haytham F. Isleem , Alireza Bahrami , Ishan Jha , Guang Zou , Rakesh Kumar , Abdellatif M. Sadeq , Ali Jahami
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引用次数: 0

Abstract

This study investigates the structural behaviour of double-skin columns, introducing novel double-skin double filled tubular (DSDFT) columns, which utilise double steel tubes and concrete to enhance the load-carrying capacity and ductility beyond conventional double-skin hollow tubular (DSHT) columns, employing a combination of finite element model (FEM) and machine learning (ML) techniques. A total of 48 columns (DSHT+DSDFT) were created to examine the impact of various parameters, such as double steel tube configurations, thickness of fibre-reinforced polymer (FRP) layer, type of FRP material, and steel tube diameter, on the load-carrying capacity and ductility of the columns. The results were validated against the experimental findings to ensure their accuracy. Key findings highlight the advantages of the DSDFT configuration. Compared to the DSHT columns, the DSDFT columns exhibited remarkable 19.54 % to 101.21 % increases in the load-carrying capacity, demonstrating improved ductility and load-bearing capabilities. Thicker FRP layers enhanced the load-carrying capacity up to 15 %, however at the expense of the reduced axial strain. It was also observed that glass FRP wrapping displayed 25 % superior ultimate axial strain than aramid FRP wrapping. Four different ML models were assessed to predict the axial load-carrying capacity of the columns, with long short-term memory (LSTM) and bidirectional LSTM models emerging as superior choices indicating exceptional predictive capabilities. This interdisciplinary approach offers valuable insights into designing and optimising confined column systems. It sheds light on both double-tube and single-tube configurations, propelling advancements in structural engineering practices for new constructions and retrofitting. Further, it lays out a blueprint for maximising the performance of the confined columns under the axial compression.

利用有限元和机器学习对 FRP 承压圆柱进行综合行为分析
本研究采用有限元模型 (FEM) 和机器学习 (ML) 技术相结合的方法,对双层柱的结构行为进行了研究,并引入了新型双层双填充管柱 (DSDFT),该柱利用双层钢管和混凝土提高了承载能力和延性,超过了传统的双层空心管柱 (DSHT)。共创建了 48 根支柱(DSHT+DSDFT),以研究各种参数(如双钢管配置、纤维增强聚合物(FRP)层厚度、FRP 材料类型和钢管直径)对支柱承载能力和延性的影响。研究结果与实验结果进行了验证,以确保其准确性。主要研究结果凸显了 DSDFT 结构的优势。与 DSHT 柱相比,DSDFT 柱的承载能力显著提高了 19.54 % 到 101.21 %,这表明延展性和承载能力得到了改善。较厚的玻璃钢层可将承载能力提高 15%,但这是以降低轴向应变为代价的。此外,还观察到玻璃玻璃钢包覆层的极限轴向应变比芳纶玻璃钢包覆层高 25%。对四种不同的 ML 模型进行了评估,以预测柱子的轴向承载能力,其中长短期记忆 (LSTM) 和双向 LSTM 模型成为最佳选择,显示出卓越的预测能力。这种跨学科方法为设计和优化密闭支柱系统提供了宝贵的见解。它揭示了双管和单管配置,推动了新建筑和改造的结构工程实践的进步。此外,它还为最大限度地提高受限柱在轴向压缩下的性能绘制了蓝图。
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
Composites Part C Open Access
Composites Part C Open Access Engineering-Mechanical Engineering
CiteScore
8.60
自引率
2.40%
发文量
96
审稿时长
55 days
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