热电效应
材料科学
热电材料
热导率
碲
非谐性
凝聚态物理
格子(音乐)
复合材料
热力学
冶金
物理
声学
作者
Shaoqin Wang,Xiangdong Wang,Zhili Li,Pengfei Luo,Jiye Zhang,Jiong Yang,Jun Luo
标识
DOI:10.1002/admt.202300882
摘要
Searching for new materials with intrinsically low lattice thermal conductivity is crucial for the exploration of high‐performance thermoelectric materials. Herein, the layered compound GeBi 2 Se 4 with intrinsically low lattice thermal conductivity is discovered, and its thermoelectric performance optimization is accelerated by machine learning. The ultralow lattice thermal conductivity of 0.53 W m −1 K −1 at room temperature for the GeBi 2 Se 4 sample can be ascribed to the large anharmonicity and miscellaneous crystal defects. By alloying tellurium (Te) at the selenium (Se) site, the lattice thermal conductivity is further reduced due to the alloy scattering effect and chemical bond softening while the density‐of‐states effective mass of electrons is significantly increased. Finally, the best n‐type thermoelectric GeBi 2 Se 1.9 Te 2.1 sample with a dimensionless figure of merit zT of 0.56 at 460 K is screened out by machine learning and verified by experiments, which increases by 140% in comparison with the pristine GeBi 2 Se 4 .
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