Designing thin-walled structural members is a complex process due to the possibility of multiple instabilities. This study aimed to develop machine learning algorithms to predict the buckling behavior of thin-walled channel elements under axial compression or bending. The algorithms were trained using feed-forward multi-layer Artificial Neural Networks (ANNs), with the input variables including the cross-sectional dimensions, the thickness, the presence and location of intermediate stiffeners, and the element length. The output data included the elastic critical buckling load or moment, as well as a modal decomposition of the buckled shape into the pure buckling mode categories: local, distortional and global buckling. The Finite Strip Meth...
The paper considers the use of neural networks to predict the failure load of cold-formed steel comp...
The paper considers the use of neural networks to predict the failure load of cold-formed steel comp...
The paper considers the use of neural networks to predict the failure load of cold-formed steel comp...
The design process of thin-walled structural members is highly complex due to the possible occurrenc...
The design process of thin-walled structural members is highly complex due to the possible occurrenc...
Designing thin‐walled structural members is a complex process due to the possibility of multiple ins...
Accurate measurement of the critical buckling stress is crucial in the entire field of structural en...
The ongoing demand for bigger and more efficient ships pushes their designs towards the strength lim...
The aim of this paper is to predict web-post buckling shear strength of cellular beams made from nor...
The composite hat-stiffened panel is a typical structure that embodies the concepts of high strength...
The composite hat-stiffened panel is a typical structure that embodies the concepts of high strength...
The present paper aims to develop an Artificial Neural Network (ANN) formula to predict the LTB resi...
The present paper aims to develop an Artificial Neural Network (ANN) formula to predict the LTB resi...
The present paper aims to develop an Artificial Neural Network (ANN) formula to predict the LTB resi...
This study evaluates an innovative reinforcement method for cold-formed steel (CFS) upright sections...
The paper considers the use of neural networks to predict the failure load of cold-formed steel comp...
The paper considers the use of neural networks to predict the failure load of cold-formed steel comp...
The paper considers the use of neural networks to predict the failure load of cold-formed steel comp...
The design process of thin-walled structural members is highly complex due to the possible occurrenc...
The design process of thin-walled structural members is highly complex due to the possible occurrenc...
Designing thin‐walled structural members is a complex process due to the possibility of multiple ins...
Accurate measurement of the critical buckling stress is crucial in the entire field of structural en...
The ongoing demand for bigger and more efficient ships pushes their designs towards the strength lim...
The aim of this paper is to predict web-post buckling shear strength of cellular beams made from nor...
The composite hat-stiffened panel is a typical structure that embodies the concepts of high strength...
The composite hat-stiffened panel is a typical structure that embodies the concepts of high strength...
The present paper aims to develop an Artificial Neural Network (ANN) formula to predict the LTB resi...
The present paper aims to develop an Artificial Neural Network (ANN) formula to predict the LTB resi...
The present paper aims to develop an Artificial Neural Network (ANN) formula to predict the LTB resi...
This study evaluates an innovative reinforcement method for cold-formed steel (CFS) upright sections...
The paper considers the use of neural networks to predict the failure load of cold-formed steel comp...
The paper considers the use of neural networks to predict the failure load of cold-formed steel comp...
The paper considers the use of neural networks to predict the failure load of cold-formed steel comp...