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A Critical Review of Machine Learning Techniques on Thermoelectric Materials.

Xiangdong WangYe ShengJinyan NingJinyang XiLili XiDi QiuJiong YangXuezhi Ke
Published in: The journal of physical chemistry letters (2023)
Thermoelectric (TE) materials can directly convert heat to electricity and vice versa and have broad application potential for solid-state power generation and refrigeration. Over the past few decades, efforts have been made to develop new TE materials with high performance. However, traditional experiments and simulations are expensive and time-consuming, limiting the development of new materials. Machine learning (ML) has been increasingly applied to study TE materials in recent years. This paper reviews the recent progress in ML-based TE material research. The application of ML in predicting and optimizing the properties of TE materials, including electrical and thermal transport properties and optimization of functional materials with targeted TE properties, is reviewed. Finally, future research directions are discussed.
Keyphrases
  • machine learning
  • solid state
  • systematic review
  • risk assessment
  • heat stress
  • drug delivery
  • deep learning
  • climate change