Explainable machine learning models for predicting the ultimate bending capacity of slotted perforated cold-formed steel beams under distortional buckling
This study develops explainable machine learning (ML) models to predict the ultimate bending capacity of cold-formed steel (CFS) beams with staggered slotted perforations, focusing on distortional buckling behavior. Utilizing a dataset from 432 non-linear finite element analysis simulations of CFS Lipped channels, ten ML algorithms, including four basic and six ensemble models, were evaluated. Ensemble models, specifically CatBoost and XGBoost, demonstrated superior accuracy, with test-set performances reaching a coefficient of determination (R2) of 99.9%, outperforming traditional analytical methods such as the Direct Strength Method (DSM). SHapley Additive Explanations (SHAP) were applied to highlight how features like plate thickness and root radius critically influence predictions. The findings underscore the enhanced predictive capabilities of ML models for structural performance, suggesting a significant potential to refine traditional design methodologies and optimize CFS beam designs.
History
School
- Architecture, Building and Civil Engineering
Published in
Thin-Walled StructuresVolume
205, Part C.Publisher
Elsevier LtdVersion
- VoR (Version of Record)
Rights holder
© The Author(s)Publisher statement
This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by?nc-nd/4.0/).Acceptance date
2024-10-12Publication date
2024-10-18Copyright date
2024ISSN
0263-8231Publisher version
Language
- en