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Published in: International Journal of Material Forming 1/2024

01-01-2024 | Manufacturing empowered by digital technologies and twins

Polymer extrusion die design using a data-driven autoencoders technique

Authors: Chady Ghnatios, Eloi Gravot, Victor Champaney, Nicolas Verdon, Nicolas Hascoët, Francisco Chinesta

Published in: International Journal of Material Forming | Issue 1/2024

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Abstract

Designing extrusion dies remains a tricky issue when considering polymers. In fact, polymers exhibit strong non-Newtonian rheology that manifest in noticeable viscoelastic behaviors as well as significant normal stress differences. As a consequence, when they are pushed through a die, an important die-swelling is observed, and consequently the final geometry of the extruded profile differs significantly from the one of the die. This behavior turns the die’s design into a difficult task, and its geometry must be defined in such a way that the extruded profile results in the targeted one. Numerical simulation was identified as a natural way for building and solving the inverse problem of defining the die, leading to the targeted extruded geometry. However, state-of-the-art rheological models reveal inaccuracies for the desired level of precision. In this paper, we propose a data-driven approach that, based on the accumulated experience on the extruded profiles for different dies, learns the relation enabling efficient die design.

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Metadata
Title
Polymer extrusion die design using a data-driven autoencoders technique
Authors
Chady Ghnatios
Eloi Gravot
Victor Champaney
Nicolas Verdon
Nicolas Hascoët
Francisco Chinesta
Publication date
01-01-2024
Publisher
Springer Paris
Published in
International Journal of Material Forming / Issue 1/2024
Print ISSN: 1960-6206
Electronic ISSN: 1960-6214
DOI
https://doi.org/10.1007/s12289-023-01796-7

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