Steel and Composite Structures
Volume 46, Number 2, 2023, pages 153-173
DOI: 10.12989/scs.2023.46.2.153
A robust approach in prediction of RCFST columns using machine learning algorithm
Van-Thanh Pham and Seung-Eock Kim
Abstract
Rectangular concrete-filled steel tubular (RCFST) column, a type of concrete-filled steel tubular (CFST), is widely
used in compression members of structures because of its advantages. This paper proposes a robust machine learning-based
framework for predicting the ultimate compressive strength of RCFST columns under both concentric and eccentric loading.
The gradient boosting neural network (GBNN), an efficient and up-to-date ML algorithm, is utilized for developing a predictive
model in the proposed framework. A total of 890 experimental data of RCFST columns, which is categorized into two datasets
of concentric and eccentric compression, is carefully collected to serve as training and testing purposes. The accuracy of the
proposed model is demonstrated by comparing its performance with seven state-of-the-art machine learning methods including
decision tree (DT), random forest (RF), support vector machines (SVM), deep learning (DL), adaptive boosting (AdaBoost),
extreme gradient boosting (XGBoost), and categorical gradient boosting (CatBoost). Four available design codes, including the
European (EC4), American concrete institute (ACI), American institute of steel construction (AISC), and Australian/New
Zealand (AS/NZS) are refereed in another comparison. The results demonstrate that the proposed GBNN method is a robust and
powerful approach to obtain the ultimate strength of RCFST columns.
Key Words
concrete-filled steel tube; composite structure; gradient boosting neural networks; machine learning; predictive model; ultimate compression strength
Address
Van-Thanh Pham and Seung-Eock Kim:Department of Civil and Environmental Engineering, Sejong University, 98 Gunja-dong, Gwangjin-gu, Seoul 05006, South Korea