2024
DOI: 10.1177/03093247241263685
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Predictive modeling of spring-back in pre-punched sheet roll forming using machine learning

Ali Zeinolabedin-Beygi,
Hassan Moslemi Naeini,
Hossein Talebi-Ghadikolaee
et al.

Abstract: This study outlines an experimental and computational endeavor aimed at developing a machine learning model to estimate spring-back values utilizing the decision tree methodology. A design of experiment approach was employed to collect a dataset, and based on the experimental results, a precise model was constructed to predict spring-back values. The model considered parameters such as thickness, diameter of circle hole, distance between the center hole and flange edge, and hole spacing. Various hyper paramete… Show more

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