A Data-Driven Machine Learning Approach for Predicting Axial Load Capacity in Steel Storage Rack Columns
Bakhtiyar Mammadli, Casim Yazici, Muhammed G\"urb\"uz, \.Irfan Kocaman, F. Javier Dominguez-Gutierrez, Fatih Mehmet \"Ozkal

TL;DR
This paper develops a machine learning framework to accurately predict the axial load capacity of steel storage rack columns, combining model interpretability and a user-friendly interface for practical engineering use.
Contribution
It introduces a comprehensive ML approach with model interpretability and deployment tools for predicting steel column capacity, improving upon traditional analytical methods.
Findings
Gradient Boosting Regression achieved the best predictive performance.
SHAP analysis provided insights into feature importance and interactions.
The web tool enables real-time capacity predictions for engineers.
Abstract
In this study, we present a machine learning (ML) framework to predict the axial load-bearing capacity, (kN), of cold-formed steel structural members. The methodology emphasizes robust model selection and interpretability, addressing the limitations of traditional analytical approaches in capturing the nonlinearities and geometrical complexities inherent to buckling behavior. The dataset, comprising key geometric and mechanical parameters of steel columns, was curated with appropriate pre-processing steps including removal of non-informative identifiers and imputation of missing values. A comprehensive suite of regression algorithms, ranging from linear models to kernel-based regressors and ensemble tree methods was evaluated. Among these, Gradient Boosting Regression exhibited superior predictive performance across multiple metrics, including the coefficient of determination (R2), root…
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Taxonomy
TopicsStructural Load-Bearing Analysis · Structural Health Monitoring Techniques · Composite Structure Analysis and Optimization
