About this Abstract |
Meeting |
2025 TMS Annual Meeting & Exhibition
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Symposium
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Bridging Scale Gaps in Multiscale Materials Modeling in the Age of Artificial Intelligence
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Presentation Title |
Machine Learning-Enhanced Multiscale Modeling of Solidification |
Author(s) |
Sepideh Kavousi, Mohsen Asle Zaeem |
On-Site Speaker (Planned) |
Sepideh Kavousi |
Abstract Scope |
Understanding the characteristics of the solidification process and quantitative prediction of solidification microstructures require detailed knowledge of crystal-melt (CM) interfacial properties. We have developed an advanced and accurate computational framework that determines the CM properties and integrates atomistic simulations and phase-field (PF) modeling to quantitatively predict nano- and microstructures in both slow and rapid solidification processes. In this presentation, we will discuss our approach on applying machine learning (ML) methods to investigate various phenomena related to solidification. Specifically, we will present our latest achievements in coupling ML with our multiscale framework in several key areas, such as interatomic potential development, automated atomistic and microscale data wrangling, uncertainty quantification and propagation, and prediction of microstructural features such as solute segregation and dendritic arm spacing. |
Proceedings Inclusion? |
Planned: |
Keywords |
Machine Learning, Computational Materials Science & Engineering, Solidification |