Steel and Composite Structures
Volume 56, Number 5, 2025, pages 419-438
DOI: 10.12989/scs.2025.56.5.419
Machine learning techniques to trace the fire response of concrete filled steel tubes
V.K. Kodur, M.Z. Naser and Hee Sun Kim
Abstract
This paper presents a new approach for predicting and understanding the fire response of concrete filled steel tubes
(CFSTs) using explainable and symbolic machine learning. By leveraging unsupervised and supervised learning techniques, we
develop a number of ML models to understand the fire response of CFSTs, predict their failure modes, mechanical and thermal
responses, derive new design equations for CFST behavior under fire, and optimize the design of such columns for improved
fire resistance. Our methodology includes clustering for identifying structural performance patterns, regression and classification
models for failure prediction, and symbolic regression for generating interpretable models that offer insights into the underlying
mechanics. More specifically, the clustering analysis revealed three distinct structural performance patterns among the CFST
columns (namely, those governed by the material strength, the geometric properties of the tube, as well as a combination of the
magnitude of the loading conditions and boundary conditions). Further, regression and classification models were developed for
failure prediction, achieving an accuracy of 88% in predicting buckling and crushing failure modes. Extensive evaluation against
existing standards reveals our approach's advantages in accuracy and predictability, with the CatBoost model predicting rebar
and core temperature with an accuracy of 95%. This work presents a significant step toward enhancing fire-resistant design
through ML-driven discovery, thereby improving fire safety and performance.
Key Words
composite columns; concrete filled steel tubes; fire resistance; machine learning
Address
V.K. Kodur: 1) Department of Civil and Environmental Engineering, Michigan State University, USA
2) Architectural and Urban Systems Engineering, Ewha Womans University, Seoul, South Korea
M.Z. Naser: 1) School of Civil & Environmental Engineering and Earth Sciences (SCEEES), Clemson University, USA
2) Artificial Intelligence Research Institute for Science and Engineering (AIRISE), Clemson University, USA
Hee Sun Kim: Architectural and Urban Systems Engineering, Ewha Womans University, Seoul, South Korea