Finding unprecedentedly low-thermal-conductivity half-heusler semiconductors via high-throughput materials modeling
The lattice thermal conductivity (κω) is a key property for many potential applications of compounds. Discovery of materials with very low or high κω remains an experimental challenge due to high costs and time-consuming synthesis procedures. High-throughput computational prescreening is a valuable approach for significantly reducing the set of candidate compounds. In this article, we introduce efficient methods for reliably estimating the bulk κω for a large number of compounds. The algorithms are based on a combination of machine-learning algorithms, physical insights, and automatic ab initio calculations. We scanned approximately 79,000 half-Heusler entries in the AFLOWLIB.org database. Among the 450 mechanically stable ordered semiconductors identified, we find that κω spans more than 2 orders of magnitude-a much larger range than that previously thought. κω is lowest for compounds whose elements in equivalent positions have large atomic radii. We then perform a thorough screening of thermodynamical stability that allows us to reduce the list to 75 systems.We then provide a quantitative estimate of κω for this selected range of systems. Three semiconductors having κω < 5 Wm-1 K-1 are proposed for further experimental study.
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- 51 Physical sciences
- 0206 Quantum Physics
- 0204 Condensed Matter Physics
- 0201 Astronomical and Space Sciences
Citation
Published In
DOI
EISSN
Publication Date
Volume
Issue
Related Subject Headings
- 51 Physical sciences
- 0206 Quantum Physics
- 0204 Condensed Matter Physics
- 0201 Astronomical and Space Sciences