热电材料
材料科学
热电效应
维数之咒
塞贝克系数
多尺度建模
人工智能
材料设计
纳米技术
计算机科学
热导率
机械工程
机器学习
工程物理
工程类
物理
复合材料
热力学
化学
计算化学
作者
Chenguang Fu,Mouyang Cheng,Nguyen Tuan Hung,Eunbi Rha,Zhantao Chen,Ryotaro Okabe,Denisse Córdova Carrizales,Manasi Mandal,Yongqiang Cheng,Mingda Li
标识
DOI:10.1002/adma.202505642
摘要
Abstract Thermoelectric materials offer a promising pathway to directly convert waste heat to electricity. However, achieving high performance remains challenging due to intrinsic trade‐offs between electrical conductivity, the Seebeck coefficient, and thermal conductivity, which are further complicated by the presence of defects. This review explores how artificial intelligence (AI) and machine learning (ML) are transforming thermoelectric materials design. Advanced ML approaches including deep neural networks, graph‐based models, and transformer architectures, integrated with high‐throughput simulations and growing databases, effectively capture structure‐property relationships in a complex multiscale defect space and overcome the “curse of dimensionality”. This review discusses AI‐enhanced defect engineering strategies such as composition optimization, entropy and dislocation engineering, and grain boundary design, along with emerging inverse design techniques for generating materials with targeted properties. Finally, it outlines future opportunities in novel physics mechanisms and sustainability, highlighting the critical role of AI in accelerating the discovery of thermoelectric materials.
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