吞吐量
热电材料
计算机科学
任务(项目管理)
环境友好型
工艺工程
热电效应
材料科学
纳米技术
系统工程
工程类
电信
热力学
无线
物理
生态学
生物
作者
Tingting Deng,Pengfei Qiu,Tingwei Yin,Ze Li,Jiong Yang,Tian‐Ran Wei,Xun Shi
标识
DOI:10.1002/adma.202311278
摘要
Abstract Searching for new high‐performance thermoelectric (TE) materials that are economical and environmentally friendly is an urgent task for TE society, but the advancements are greatly limited by the time‐consuming and high cost of the traditional trial‐and‐error method. The significant progress achieved in the computing hardware, efficient computing methods, advance artificial intelligence algorithms, and rapidly growing material data have brought a paradigm shift in the investigation of TE materials. Many electrical and thermal performance descriptors are proposed and efficient high‐throughput (HTP) calculation methods are developed with the purpose to quickly screen new potential TE materials from the material databases. Some HTP experiment methods are also developed which can increase the density of information obtained in a single experiment with less time and lower cost. In addition, machine learning (ML) methods are also introduced in thermoelectrics. In this review, the HTP strategies in the discovery of TE materials are systematically summarized. The applications of performance descriptor, HTP calculation, HTP experiment, and ML in the discovery of new TE materials are reviewed. In addition, the challenges and possible directions in future research are also discussed.
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