npj Computational Materials (Mar 2022)

Unsupervised machine learning for discovery of promising half-Heusler thermoelectric materials

  • Xue Jia,
  • Yanshuai Deng,
  • Xin Bao,
  • Honghao Yao,
  • Shan Li,
  • Zhou Li,
  • Chen Chen,
  • Xinyu Wang,
  • Jun Mao,
  • Feng Cao,
  • Jiehe Sui,
  • Junwei Wu,
  • Cuiping Wang,
  • Qian Zhang,
  • Xingjun Liu

DOI
https://doi.org/10.1038/s41524-022-00723-9
Journal volume & issue
Vol. 8, no. 1
pp. 1 – 9

Abstract

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Abstract Thermoelectric materials can be potentially applied to waste heat recovery and solid-state cooling because they allow a direct energy conversion between heat and electricity and vice versa. The accelerated materials design based on machine learning has enabled the systematic discovery of promising materials. Herein we proposed a successful strategy to discover and design a series of promising half-Heusler thermoelectric materials through the iterative combination of unsupervised machine learning with the labeled known half-Heusler thermoelectric materials. Subsequently, optimized zT values of ~0.5 at 925 K for p-type Sc0.7Y0.3NiSb0.97Sn0.03 and ~0.3 at 778 K for n-type Sc0.65Y0.3Ti0.05NiSb were experimentally achieved on the same parent ScNiSb.