Machine learning for perovskite materials design and discovery release_mreztkhilbhm5ai645dizt6py4

by Qiuling Tao, Pengcheng Xu, Minjie Li, Wencong Lu

Published in npj Computational Materials by Springer Science and Business Media LLC.

2021  

Abstract

<jats:title>Abstract</jats:title>The development of materials is one of the driving forces to accelerate modern scientific progress and technological innovation. Machine learning (ML) technology is rapidly developed in many fields and opening blueprints for the discovery and rational design of materials. In this review, we retrospected the latest applications of ML in assisting perovskites discovery. First, the development tendency of ML in perovskite materials publications in recent years was organized and analyzed. Second, the workflow of ML in perovskites discovery was introduced. Then the applications of ML in various properties of inorganic perovskites, hybrid organic–inorganic perovskites and double perovskites were briefly reviewed. In the end, we put forward suggestions on the future development prospects of ML in the field of perovskite materials.
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