Machine-learning-based predictive models for concrete-filled double skin tubular columns

Python(编程语言) MATLAB语言 人工神经网络 参数统计 计算机科学 试验数据 均方误差 有限元法 Boosting(机器学习) 实验数据 结构工程 人工智能 算法 数学 工程类 统计 操作系统 程序设计语言
作者
Mohammadreza Zarringol,Vipulkumar Ishvarbhai Patel,Qing Quan Liang,M.F. Hassanein,Mizan Ahmed
出处
期刊:Engineering Structures [Elsevier BV]
卷期号:304: 117593-117593 被引量:23
标识
DOI:10.1016/j.engstruct.2024.117593
摘要

This paper aims to develop a unique artificial neural network (ANN)-based equation as well as MATLAB- and Python-based graphical user interfaces (GUIs) using the most comprehensive and up-to-date database for predicting the behaviour of axially loaded concrete-filled double skin tubular (CFDST) short and slender columns with normal- and high-strength materials. Two machine learning (ML) methods, which are ANN and extreme gradient boosting (XGBoost), are trained and tested using 1721 sets of data, with 129 of them collected from experimental studies and 1592 generated by finite element (FE) simulations. The accuracy of the developed ML models is assessed through comparing their predictions with the experimental and FE results. To demonstrate the effect of each parameter on the predicted results, the SHapley Additive exPlanations (SHAP) method is used. The developed ML models are also used to conduct parametric studies to examine the effect of geometric and material parameters on the predicted results. The accuracy of the ML models and the proposed ANN-based equation in predicting the ultimate axial capacity of CFDST columns is compared with that of six design methods including two design code provisions and four design equations proposed by researchers. A numerical example is presented to illustrate the design procedure of the CFDST column using the proposed ANN-based equation. The results indicate that the ANN model performs better on unseen data than the XGBoost model with lower root mean square error for the test set. The results also show that the ML models and the proposed ANN-based equation are superior to the other design models in prediction accuracy.
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