Mapping the Configuration Space of Half-Heusler Compounds via Subspace Identification for Thermoelectric Materials Discovery
Angela Pak, Kamil Ciesielski, Maria Wr\'oblewska, Eric S. Toberer, and, Elif Ertekin

TL;DR
This paper introduces a novel computational approach to identify promising subspaces within half-Heusler compounds for thermoelectric applications, combining statistical analysis with high-throughput screening to guide experimental exploration.
Contribution
It presents a new subspace identification method that uncovers elemental trends and physical principles for thermoelectric optimization in half-Heusler compounds.
Findings
Identified elemental subspaces linked to high thermoelectric quality factor
Linked n-type performance to ultra-high mobility at conduction band edges
Synthesized rare-earth gold stannides with low thermal conductivity
Abstract
Half-Heuslers are a promising family for thermoelectric (TE) applications, yet only a small fraction of their potential chemistries has been experimentally explored. In this work, we introduce a distinct computational high-throughput screening approach designed to identify underexplored yet promising material subspaces, and apply it to half-Heusler thermoelectrics. We analyze 1,126 half-Heuslers satisfying the 18 valence electron rule , including 332 predicted to be semiconductors, using electronic structure calculations, semi-empirical transport models, and thermoelectric quality factor . Unlike conventional filtering workflows, our approach employs statistical analysis of candidate material groups to uncover trends in their collective behavior, providing robust insights and minimizing reliance on uncertain predictions for individual compounds. Our findings link -type…
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Taxonomy
TopicsHeusler alloys: electronic and magnetic properties · Machine Learning in Materials Science · Advanced Thermoelectric Materials and Devices
