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Predicting restraining effects in CFS channels: A machine learning approach

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posted on 2024-08-22, 15:45 authored by Mohammad MojtabaeiMohammad Mojtabaei, Rasoul Khandan, Iman HajirasoulihaIman Hajirasouliha
This paper aims to develop Machine Learning (ML) algorithms to predict the buckling resistance of cold-formed steel (CFS) channels with restrained flanges, widely used in typical CFS sheathed wall panels, and provide practical design tools for engineers. The effects of cross-sectional restraints were first evaluated on the elastic buckling behaviour of CFS channels subjected to pure axial compressive load or bending moment. Feedforward multi-layer Artificial Neural Networks (ANNs) were then trained on different datasets comprising CFS channels with various dimensions and properties, plate thicknesses, and restraining conditions on one or two flanges, while the elastic distortional buckling resistance of the elements were determined according to the Finite Strip Method (FSM). To develop less biased networks and ensure that every observation from the original dataset has the chance of appearing in the training and test set, a K-fold cross-validation technique was implemented. In addition, the hyperparameters of the ANNs were tuned using a grid search technique to provide ANNs with optimum performances. The results demonstrated that the trained ANNs were able to predict the elastic distortional buckling resistance of CFS flange-restrained elements with an average accuracy of 99% in terms of coefficient of determination. The developed models were then used to propose a simple ANN-based design formula for the prediction of the elastic distortional buckling stress of CFS flange-restrained elements. Finally, the proposed formula was further evaluated on a separate set of unseen data to ensure its accuracy for practical applications.

History

School

  • Architecture, Building and Civil Engineering

Published in

Steel and Composite Structures

Volume

51

Issue

4

Pages

441 - 456

Publisher

Techno Press

Version

  • AM (Accepted Manuscript)

Rights holder

© Techno Press

Publication date

2024-05-25

Copyright date

2024

ISSN

1229-9367

eISSN

1598-6233

Language

  • en

Depositor

Dr Mohammad Mojtabaei. Deposit date: 7 August 2024