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Autores principales: Victor, Viny Saajan, Schmeißer, Andre, Leitte, Heike, Gramsch, Simone
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2404.09604
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author Victor, Viny Saajan
Schmeißer, Andre
Leitte, Heike
Gramsch, Simone
author_facet Victor, Viny Saajan
Schmeißer, Andre
Leitte, Heike
Gramsch, Simone
contents In the last ten years, the average annual growth rate of nonwoven production was 4%. In 2020 and 2021, nonwoven production has increased even further due to the huge demand for nonwoven products needed for protective clothing such as FFP2 masks to combat the COVID19 pandemic. Optimizing the production process is still a challenge due to its high nonlinearity. In this paper, we present a machine learning-based optimization workflow aimed at improving the homogeneity of spunbond nonwovens. The optimization workflow is based on a mathematical model that simulates the microstructures of nonwovens. Based on trainingy data coming from this simulator, different machine learning algorithms are trained in order to find a surrogate model for the time-consuming simulator. Human validation is employed to verify the outputs of machine learning algorithms by assessing the aesthetics of the nonwovens. We include scientific and expert knowledge into the training data to reduce the computational costs involved in the optimization process. We demonstrate the necessity and effectiveness of our workflow in optimizing the homogeneity of nonwovens.
format Preprint
id arxiv_https___arxiv_org_abs_2404_09604
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Machine learning-based optimization workflow of the homogeneity of spunbond nonwovens with human validation
Victor, Viny Saajan
Schmeißer, Andre
Leitte, Heike
Gramsch, Simone
Machine Learning
In the last ten years, the average annual growth rate of nonwoven production was 4%. In 2020 and 2021, nonwoven production has increased even further due to the huge demand for nonwoven products needed for protective clothing such as FFP2 masks to combat the COVID19 pandemic. Optimizing the production process is still a challenge due to its high nonlinearity. In this paper, we present a machine learning-based optimization workflow aimed at improving the homogeneity of spunbond nonwovens. The optimization workflow is based on a mathematical model that simulates the microstructures of nonwovens. Based on trainingy data coming from this simulator, different machine learning algorithms are trained in order to find a surrogate model for the time-consuming simulator. Human validation is employed to verify the outputs of machine learning algorithms by assessing the aesthetics of the nonwovens. We include scientific and expert knowledge into the training data to reduce the computational costs involved in the optimization process. We demonstrate the necessity and effectiveness of our workflow in optimizing the homogeneity of nonwovens.
title Machine learning-based optimization workflow of the homogeneity of spunbond nonwovens with human validation
topic Machine Learning
url https://arxiv.org/abs/2404.09604