Artificial neural network-based prediction of stacking fault energy in Fe-Cr-Mn-C-N steels
- Authors
- Tiwari, Saurabh; Narayana, P. L.; Ishtiaq, Muhammad; Wang, Xiao-Song; Park, Nokeun; Reddy, N. S.
- Issue Date
- Jun-2025
- Publisher
- Maney Publishing
- Keywords
- Stacking fault energy; Fe-Cr-Mn-C-N steels; artificial neural network (ANN); mechanical properties; deformation mechanisms
- Citation
- Canadian Metallurgical Quarterly
- Indexed
- SCIE
SCOPUS
- Journal Title
- Canadian Metallurgical Quarterly
- URI
- https://scholarworks.gnu.ac.kr/handle/sw.gnu/79121
- DOI
- 10.1080/00084433.2025.2520646
- ISSN
- 0008-4433
1879-1395
- Abstract
- This study develops an artificial neural network (ANN) model to systematically investigate the influence of alloying elements on the stacking fault energy (SFE.) in Fe-Cr-Mn-C-N steels. SFE is a key factor in determining these materials' mechanical properties and deformation mechanisms. The ANN model demonstrates excellent predictive accuracy, with an error of less than 4% and an R-2 value of 93%, significantly outperforming traditional empirical equations and thermodynamic models. Additionally, our analysis establishes a clear qualitative hierarchy among the alloying elements influencing SFE, with nitrogen exerting the strongest effect, followed by carbon, manganese, and chromium (N > C > Mn > Cr). These insights provide a deeper understanding of SFE in Fe-Cr-Mn-C-N steels and offer a strategic framework for optimizing alloy compositions, supporting the development of high-performance austenitic steels.
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Collections - 공과대학 > 나노신소재공학부금속재료공학전공 > Journal Articles
- 공학계열 > Dept.of Materials Engineering and Convergence Technology > Journal Articles

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