INTEGRATING NEURAL NETWORKS INTO SHEET METAL FORMING: A REVIEW OF RECENT ADVANCES AND APPLICATIONS

Authors

  • COSMIN - CONSTANTIN GRIGORAȘ
  • ȘTEFAN COȘA
  • VALENTIN ZICHIL

DOI:

https://doi.org/10.29081/jesr.v30i1.005

Keywords:

neural network, sheet metal forming, springback compensation

Abstract

In order to predict defects, improve performance, and streamline operations, machine learning techniques are becoming ever more indispensable in manufacturing processes, mainly in sheet metal forming. Incorporating neural networks into the process of sheet metal forming is the subject of this article's exhaustive examination of recent developments and applications. Exploring datasets from a variety of sheet metal forming processes, numerous machine learning models, including ensemble and single learning techniques are investigated. The functionality of this method extends to various tasks, including the prediction of springback in cold-rolled anisotropic steel sheets. The review provides a conclusion section that presents the main implementation methodologies and how they address to some manufacturing issues.

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Author Biographies

  • COSMIN - CONSTANTIN GRIGORAȘ

    “Vasile Alecsandri” University of Bacău, Calea Mărășești 157, Bacău, 600115, Romania

  • ȘTEFAN COȘA

    “Vasile Alecsandri” University of Bacău, Calea Mărășești 157, Bacău, 600115, Romania

  • VALENTIN ZICHIL

    “Vasile Alecsandri” University of Bacău, Calea Mărășești 157, Bacău, 600115, Romania

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Published

2024-07-30

How to Cite

INTEGRATING NEURAL NETWORKS INTO SHEET METAL FORMING: A REVIEW OF RECENT ADVANCES AND APPLICATIONS. (2024). Journal of Engineering Studies and Research, 30(1), 51-57. https://doi.org/10.29081/jesr.v30i1.005

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