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Main Authors: Polychronopoulos, Nickolas, MOUSTRIS, KONSTANTINOS, Karakasidis, Theodoros, Karvelas, Evangelos, LIOSIS, CHRISTOS, Sofiadis, George, Pimenidou, Panagiota, Peppa, Sofia, Sarris, Ioannis
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Published: Zenodo 2024
Online Access:https://doi.org/10.5281/zenodo.14679217
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author Polychronopoulos, Nickolas
MOUSTRIS, KONSTANTINOS
Karakasidis, Theodoros
Karvelas, Evangelos
LIOSIS, CHRISTOS
Sofiadis, George
Pimenidou, Panagiota
Peppa, Sofia
Sarris, Ioannis
author_facet Polychronopoulos, Nickolas
MOUSTRIS, KONSTANTINOS
Karakasidis, Theodoros
Karvelas, Evangelos
LIOSIS, CHRISTOS
Sofiadis, George
Pimenidou, Panagiota
Peppa, Sofia
Sarris, Ioannis
contents <p>Artificial intelligence (AI) techniques have profoundly influenced diverse technological domains, particularly excelling in areas characterized by the availability of extensive datasets. However, screw designs in polymer extrusion are typically proprietary, and limited information is accessible in the open literature. This study addresses this by generating a dataset through computational simulations. These simulations encompass screw extrusion processes such as solids transport, melting, and pumping of the melt.</p>
format Recurso digital
id zenodo_https___doi_org_10_5281_zenodo_14679217
institution Zenodo
language
publishDate 2024
publisher Zenodo
record_format zenodo
spellingShingle Random forest machine learning algorithm for screw design in polymer extrusion
Polychronopoulos, Nickolas
MOUSTRIS, KONSTANTINOS
Karakasidis, Theodoros
Karvelas, Evangelos
LIOSIS, CHRISTOS
Sofiadis, George
Pimenidou, Panagiota
Peppa, Sofia
Sarris, Ioannis
<p>Artificial intelligence (AI) techniques have profoundly influenced diverse technological domains, particularly excelling in areas characterized by the availability of extensive datasets. However, screw designs in polymer extrusion are typically proprietary, and limited information is accessible in the open literature. This study addresses this by generating a dataset through computational simulations. These simulations encompass screw extrusion processes such as solids transport, melting, and pumping of the melt.</p>
title Random forest machine learning algorithm for screw design in polymer extrusion
url https://doi.org/10.5281/zenodo.14679217