Practical Approach for Determining Material Parameters When Predicting Austenite Grain Growth under Isothermal Heat Treatment
Abstract
:1. Introduction
2. Materials and Experiments
3. Material Parameter Characterization and FE Model of AGS Growth
3.1. Mathematical Model of AGS Growth
3.2. Finite Element Model
4. Results and Verification
4.1. Method Validation
4.2. Application Example
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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T (°C) | Measured Parameter [1] | Optimized dG Parameters | ||
---|---|---|---|---|
d0 (μm) | Q (J/mol) | A | m | |
900 | 38.0 | 89,768 | 17,732 | 2.501 |
950 | 45.0 | 88,810 | 18,732 | 2.505 |
1000 | 58.0 | 69,550 | 19,732 | 2.848 |
1050 | 73.0 | 44,120 | 21,931 | 3.200 |
1100 | 85.0 | 32,094 | 23,702 | 3.145 |
1150 | 119.0 | 22,093 | 33,197 | 3.149 |
1200 | 200.0 | 22,000 | 33,200 | 2.904 |
1250 | 440.0 | 12,095 | 34,181 | 2.782 |
900 | 38.0 | 89,768 | 17,732 | 2.501 |
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Razali, M.K.; Abd Ghawi, A.A.; Irani, M.; Chung, S.H.; Choi, J.M.; Joun, M.S. Practical Approach for Determining Material Parameters When Predicting Austenite Grain Growth under Isothermal Heat Treatment. Materials 2023, 16, 6583. https://doi.org/10.3390/ma16196583
Razali MK, Abd Ghawi AA, Irani M, Chung SH, Choi JM, Joun MS. Practical Approach for Determining Material Parameters When Predicting Austenite Grain Growth under Isothermal Heat Treatment. Materials. 2023; 16(19):6583. https://doi.org/10.3390/ma16196583
Chicago/Turabian StyleRazali, Mohd Kaswandee, Afaf Amera Abd Ghawi, Missam Irani, Suk Hwan Chung, Jeong Muk Choi, and Man Soo Joun. 2023. "Practical Approach for Determining Material Parameters When Predicting Austenite Grain Growth under Isothermal Heat Treatment" Materials 16, no. 19: 6583. https://doi.org/10.3390/ma16196583