About this Abstract |
Meeting |
2022 TMS Annual Meeting & Exhibition
|
Symposium
|
Algorithm Development in Materials Science and Engineering
|
Presentation Title |
NOW ON-DEMAND ONLY - Interatomic Potentials for Materials Science and Beyond; Advances in Machine Learned Spectral Neighborhood Analysis Potentials |
Author(s) |
Mitchell Wood, Mary Alice Cusentino, Ivan Oleynik, Aidan Thompson |
On-Site Speaker (Planned) |
Mitchell Wood |
Abstract Scope |
With exascale super computers arriving in the near future, it is timely to ask whether our simulation software is capable of matching this unprecedented computing capability. While many research challenges in material physics, chemistry and biology lie just out of reach on peta-scale machines due to length and time restrictions inherent to Molecular Dynamics(MD), questions of the accuracy of our simulations will continue to linger. This is particularly true for complex alloys, composites of disparate components as well as materials in extremes of temperature, pressure and radiation exposure. This talk will overview advances made in machine learned Spectral Neighborhood Analysis Potential(SNAP) for both their physical accuracy and computational performance on leadership platforms. Exemplar problems include plasma facing materials, phase transitions of carbon and metals near their triple-point. Additionally, a discussion will be presented of best practices for assembling training data and model form selection for SNAP and related ML potentials. |
Proceedings Inclusion? |
Planned: |
Keywords |
Computational Materials Science & Engineering, Machine Learning, Modeling and Simulation |