Numerical and machine learning models for concentrically and eccentrically loaded CFST columns confined with FRP wraps
Chi Xu,
Ying Zhang,
Haytham F. Isleem
et al.
Abstract:Previous research largely concentrated on predicting load‐carrying capacities of concrete‐filled steel tubes (CFST) confined with fiber‐reinforced polymer (FRP) wraps under pure concentric loads, neglecting the more complex failure mechanisms that occur under real‐life eccentric loading conditions. This study, therefore, employs both finite element modeling (FEM) and machine learning methods to accurately predict the load‐bearing capacities under both concentric and eccentric loading conditions. This research … Show more
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