DATA-DRIVEN DISCOVERY AND DESIGN OF THERMOELECTRIC MATERIALSChristopher Wolverton1
1Northwestern University, Evanston, United StatesPAPER: 402/SolidStateChemistry/Invited (Oral) OS
SCHEDULED: 15:25/Tue. 22 Oct. 2024/Ariadni A
ABSTRACT:Discovery and design of novel thermoelectric materials is particularly challenging, due to the complex (and often contraindicated) set of materials properties that must be simultaneously optimized. Here we discuss our efforts at developing and applying data-driven computational techniques that enable an accelerated discovery of novel thermoelectrics. These techniques involve a combination of high-throughput density functional theory (DFT) calculations, inverse design approaches, and machine learning and artificial intelligence based methods. We discuss several recent examples of these methods: (i) inverse design strategies based on a materials database screening to design a solid with a desired band structure [1], (ii) inverse design strategies to identify compounds with ultralow thermal conductivity [2] (iii) an effective strategy of weakening interatomic interactions and therefore suppressing lattice thermal conductivity based on chemical bonding principles [3], and (iv) the development of crystal graph based neural network techniques to accelerate high-throughput computational screening for materials with ultralow thermal conductivity. [4,5]
REFERENCES:[1] E. B. Isaacs and C. Wolverton, "Inverse Band Structure Design via Materials Database Screening: Application to Square Planar Thermoelectrics," Chemistry of Materials 30 (5), 1540-1546 (2018) .
[2] E. B. Isaacs, G. M. Lu, and C. Wolverton, "Inverse Design of Ultralow Lattice Thermal Conductivity Materials via Materials Database Screening of Lone Pair Cation Coordination Environment," Journal of Physical Chemistry Letters 11 (14), 5577-5583 (2020).
[3] J. G. He, Y. Xia, W. W. Lin, K. Pal, Y. Z. Zhu, M. G. Kanatzidis, and C. Wolverton, "Accelerated Discovery and Design of Ultralow Lattice Thermal Conductivity Materials Using Chemical Bonding Principles," Advanced Functional Materials 32 (14) (2022).
[4] K. Pal, C. W. Park, Y. Xia, J. H. Shen, and C. Wolverton, "Scale-invariant machine-learning model accelerates the discovery of quaternary chalcogenides with ultralow lattice thermal conductivity," Npj Computational Materials 8 (1) (2022).
[5] Y. Xia, D. Gaines II, J. G. He, K. Pal, Z. Li, M. G. Kanatzidis, V. Ozolins, and C. Wolverton, "A unified understanding of minimum lattice thermal conductivity," Proceedings of the National Academy of Sciences of the United States of America 120 (26) (2023).