Techno Press
Techno Press

Computers and Concrete
  Volume 37, Number 3, March 2026 , pages 507-522
DOI: https://doi.org/10.12989/cac.2026.37.3.507
 


Machine learning-based predictive models for maximum lateral strength CFST column under axial loading and lateral cyclic loading
Mai-Suong T. Nguyen, Seung-Eock Kim

 
Abstract
    In this study, a lateral strength predictive model of CFST columns under lateral cyclic loading was developed using machine learning (ML) algorithms. A total of 82 experimental datasets on the CFST columns under axial and lateral loading collected from the literature served as the training and testing data to build the predictive model. An extreme Gradient Boosted Tree (ExGBT) was utilized to interpret the trained ML models. To demonstrate the efficiency of such a model, the ExGBT performance was compared with other ML techniques, such as Multiple Linear Regression (MLR), Artificial Neural Networks (ANN), and Decision Trees (DT). The overall correlation coefficient was 0.951, 0.989, 0.994, and 0.995 for MLR, ANN, DT, and ExGBT, respectively, indicating that the lateral strength of the CFST column can be well-predicted by all considered methods. However, ExGBT was the optimum algorithm for lateral strength prediction of the CFST column with the lowest MAPE of 15.32%.
 
Key Words
    artificial neural network (ANN); concrete-filled steel tube; cyclic loading; decision tree (DT); extreme gradient boosted tree (ExGBT); maximum lateral strength; multiple linear regression (MLR)
 
Address
Mai-Suong T. Nguyen: 1) Department of Civil and Environmental Engineering, Sejong University, 98 Gunja-dong, Gwangjin-gu, Seoul, 143-747, Republic of Korea, 2) Thuyloi University, Ha Noi, Viet Nam
Seung-Eock Kim: Department of Civil and Environmental Engineering, Sejong University, 98 Gunja-dong, Gwangjin-gu, Seoul, 143-747, Republic of Korea
 

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