On the data-driven modeling of reactive extrusion
Article dans une revue avec comité de lecture
Abstract
This paper analyzes the ability of different machine learning techniques, able to operate in the low-data limit, for constructing the model linking material and process parameters with the properties and performances of parts obtained by reactive polymer extrusion. The use of data-driven approaches is justified by the absence of reliable modeling and simulation approaches able to predict induced properties in those complex processes. The experimental part of this work is based on the in situ synthesis of a thermoset (TS) phase during the mixing step with a thermoplastic polypropylene (PP) phase in a twin-screw extruder. Three reactive epoxy/amine systems have been considered and anhydride maleic grafted polypropylene (PP-g-MA) has been used as compatibilizer. The final objective is to define the appropriate processing conditions in terms of improving the mechanical properties of these new PP materials by reactive extrusion.
Files in this item
Related items
Showing items related by title, author, creator and subject.
-
Article dans une revue avec comité de lectureCASTÉRAN, Fanny; IBANEZ, Ruben; ARGERICH, Clara; DELAGE, Karim; CASSAGNAU, Philippe; CHINESTA SORIA, Francisco (Wiley-VCH Verlag, 2020)The purpose of this paper is to combine a classical 1D twin-screw extrusion model with machine learning techniques to obtain accurate predictions of a complex system despite few data. Systems involving reactive polyethylene ...
-
Article dans une revue avec comité de lectureCASTÉRAN, Fanny; DELAGE, Karim; HASCOËT, Nicolas; CASSAGNAU, Philippe; AMMAR, Amine; CHINESTA SORIA, Francisco (MDPI AG, 2022-02-18)Two main problems are studied in this article. The first one is the use of the extrusion process for controlled thermo-mechanical degradation of polyethylene for recycling applications. The second is the data-based modelling ...
-
Article dans une revue avec comité de lectureREILLE, Agathe; HASCOET, Nicolas; CUETO, Elias; DUVAL, Jean-Louis; KEUNINGS, Roland; GHNATIOS, Chady; AMMAR, Amine; CHINESTA SORIA, Francisco (Elsevier Masson, 2019)The present work aims at proposing a new methodology for learning reduced models from a small amount of data. It is based on the fact that discrete models, or their transfer function counterparts, have a low rank and then ...
-
Article dans une revue avec comité de lectureARGERICH MARTÍN, Clara; IBÁÑEZ PINILLO, Rubén; BARASINSKI, Anaïs; CHINESTA SORIA, Francisco (Elsevier Masson, 2019)The aim of this paper is to present a new classification and regression algorithm based on Artificial Intelligence. The main feature of this algorithm, which will be called Code2Vect, is the nature of the data to treat: ...
-
Article dans une revue avec comité de lectureARGERICH, Clara; IBÁÑEZ, Rubén; LEÓN, Angel; ABISSET-CHAVANNE, Emmanuelle; CHINESTA SORIA, Francisco (AIMS Press, 2018)Abstract: Many composite forming processes are based on the consolidation of preimpregnated preforms of different types, e.g., sheets, tapes, .... Composite plies are put in contact using different technologies and ...