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Toward accurate machine learning-driven prediction of polymeric composites properties based on experimental dataopen access

Authors
Han, JosephKim, InCho, NamjungYang, Kwan SooMyung, Jin SukPark, JaeseongKim, Seong HunChoi, Woo Jin
Issue Date
Sep-2025
Publisher
Wiley-VCH
Keywords
machine learning; polymer data representation; polymer property prediction; thermal conductive polymer composites
Citation
Materials Genome Engineering Advances, v.3, no.3, pp 1 - 12
Pages
12
Indexed
ESCI
Journal Title
Materials Genome Engineering Advances
Volume
3
Number
3
Start Page
1
End Page
12
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/209126
DOI
10.1002/mgea.70027
ISSN
2940-9497
2940-9497
Abstract
In response to climate change, there has been a focus on developing lightweight and environmentally friendly materials, with active research aimed at enhancing the energy efficiency of electric and hybrid vehicles. In this context, the development of polymer composites with superior thermal conductivity (TC) has been recognized as critical to meeting mechanical property requirements. This paper presents a machine learning model that utilized 1774 experimental data points to predict various properties of polymer composites, such as density, heat deflection temperature, flexural modulus, flexural strength, tensile yield strength, impact strength, and TC. Various data representation methods for composition data are employed, and the XGBoost model is trained, achieving high accuracy with an average R-2 score of 0.95. This machine learning model, informed by experimental data, is a useful tool for predicting and optimizing the properties of polymer composites.
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서울 공과대학 > 서울 유기나노공학과 > 1. Journal Articles

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