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Exploration of Machine Learning to Predict Hot Ductility of Cast Steel from Chemical Composition and Thermal Conditions SCIE SCOPUS KCI

Title
Exploration of Machine Learning to Predict Hot Ductility of Cast Steel from Chemical Composition and Thermal Conditions
Authors
Hong, DaegeunKwon, SanghumYIM, CHANG HEE
Date Issued
2021-02
Publisher
KOREAN INST METALS MATERIALS
Abstract
This study explores the use of machine learning (ML) as a data-driven approach to estimate hot ductility of cast steel from literature data. Four ML algorithms were used to predict hot ductility by considering elemental composition and thermal conditions. Experimentally-measured reduction of area (RA) values were converted to a low-temperature limit, center-temperature, and high-temperature limit, which were represented as Gaussian curves. The prediction accuracy of the four ML models was evaluated using RMSE for these three output variables. In a case study of three steels that had different contents of alloying elements, only the Neural-net model predicted the RA trough more accurately in all cases. These results demonstrate the utility of ML models to predict hot ductility of cast steels.
URI
https://oasis.postech.ac.kr/handle/2014.oak/105598
DOI
10.1007/s12540-020-00713-w
ISSN
1598-9623
Article Type
Article
Citation
METALS AND MATERIALS INTERNATIONAL, vol. 27, no. 2, page. 298 - 305, 2021-02
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임창희YIM, CHANG HEE
Ferrous & Energy Materials Technology
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