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김광수

Kim, Kwang S.
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Challenges, Opportunities, and Prospects in Metal Halide Perovskites from Theoretical and Machine Learning Perspectives

Author(s)
Myung, Chang WooHajibabaei, AmirCha, Ji-HyunHa, MiranKim, JunuKim, Kwang S.
Issued Date
2022-12
DOI
10.1002/aenm.202202279
URI
https://scholarworks.unist.ac.kr/handle/201301/59901
Fulltext
https://onlinelibrary.wiley.com/doi/10.1002/aenm.202202279
Citation
ADVANCED ENERGY MATERIALS, v.12, no.45, pp.2202279
Abstract
Metal halide perovskite (MHP) is a promising next generation energy material for various applications, such as solar cells, light emitting diodes, lasers, sensors, and transistors. MHPs show excellent mechanical, dielectric, photovoltaic, photoluminescence, and electronic properties, and such intriguing physical and chemical properties have drawn attention recently. However, there exists a chasm between the successful applications of MHPs and theoretical understandings. The difficulty arises from the intrinsic properties of MHPs, including structural disorder, ionic interactions, nonadiabatic effects, and composition diversity. Machine learning (ML) approaches have shown great promise as a tool to overcome the theoretical obstacles in many fields of science. In this perspective, the pending theoretical challenges from experiments are overviewed and promising ML approaches, including ab initio ML potentials, materials design/optimization models, and data mining strategies are proposed. Possible roles and pipelines of ML frameworks are highlighted to close the gap between experiment and theory in MHPs.
Publisher
WILEY-V C H VERLAG GMBH
ISSN
1614-6832
Keyword (Author)
excited states dynamicskinetic processesmachine learning potentialmachine learningmaterials designmetal halide perovskitesnanodomain
Keyword
SOLAR-CELLSDEGRADATIONSTABILITYPERFORMANCE1ST-PRINCIPLESCARRIERSLAYERMECHANISMINSIGHTSORIGIN

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