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Machine learning-driven prediction of band-alignment types in 2D hybrid perovskites.

Authors :
Mahal, Eti
Roy, Diptendu
Manna, Surya Sekhar
Pathak, Biswarup
Source :
Journal of Materials Chemistry A; 11/21/2023, Vol. 11 Issue 43, p23547-23555, 9p
Publication Year :
2023

Abstract

Based on intramolecular band alignments between the organic and inorganic units, 2D hybrid perovskites can be of four types (I<subscript>a</subscript>, I<subscript>b</subscript>, II<subscript>a</subscript> and II<subscript>b</subscript>). Specific optoelectronic devices (photovoltaics, light emitting diodes, spintronics, etc.) demand specific charge carrier property that originates due to different types of band alignments. In this study, we have proposed a machine learning technique to classify 2D perovskites based on their band alignment types using molecular and elemental features. Our proposed model can successfully classify type I–II, type I<subscript>a</subscript>–I<subscript>b</subscript> and type II<subscript>a</subscript>–II<subscript>b</subscript> using binary classification and all four types using multiclass classification. We have also formulated an equation for determining the probability of the different band alignment types based on the contribution coefficients of the considered features. We believe such an interpretable glass-box model can open a new paradigm for the study of electronic properties of 2D perovskite materials. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20507488
Volume :
11
Issue :
43
Database :
Complementary Index
Journal :
Journal of Materials Chemistry A
Publication Type :
Academic Journal
Accession number :
173476057
Full Text :
https://doi.org/10.1039/d3ta05186b