Thermal Conductivity Predictions with Foundation Atomistic Models
ORAL
Abstract
Advances in machine learning have led to the development of foundation models for atomistic materials chemistry, enabling quantum-accurate descriptions of interatomic forces across diverse compounds at reduced computational cost. Hitherto, these models have been benchmarked relying on descriptors based on atoms' interaction energies or harmonic vibrations; their accuracy and efficiency in predicting observable and technologically relevant heat-conduction properties remains unknown. Here, we introduce a framework that leverages foundation models and the Wigner formulation of heat transport to overcome the major bottlenecks of current methods for designing heat-management materials: high cost, limited transferability, or lack of physics awareness. We present the standards needed to achieve first-principles accuracy in conductivity predictions through model's fine-tuning, discussing benchmark metrics and precision/cost trade-offs. We apply our framework to a database of solids with diverse compositions and structures, demonstrating its potential to discover materials for next-gen thermal-insulation technologies.
–
Publication: Póta, B., Ahlawat, P., Csányi, G., & Simoncelli, M. (2024). Thermal Conductivity Predictions with Foundation Atomistic Models. arXiv preprint arXiv:2408.00755.
Presenters
Balazs Pota
Theory of Condensed Matter Group, Cavendish Laboratory, University of Cambridge
Authors
Balazs Pota
Theory of Condensed Matter Group, Cavendish Laboratory, University of Cambridge
Paramvir Ahlawat
Theory of Condensed Matter Group, Cavendish Laboratory, University of Cambridge
Gabor Csanyi
Engineering Laboratory, University of Cambridge, Applied Mechanics Group, Mechanics, Materials and Design, Department of Engineering, University of Cambridge
Michele Simoncelli
Theory of Condensed Matter Group, Cavendish Laboratory, University of Cambridge, Univ of Cambridge, TCM group, Cavendish Laboratory, University of Cambridge