TY - JOUR
T1 - Synthesis of Machine Learning-Predicted Cs2PbSnI6 Double Perovskite Nanocrystals
AU - Mishra, Pritish
AU - Zhang, Mengyuan
AU - Kar, Manaswita
AU - Hellgren, Maria
AU - Casula, Michele
AU - Lenz, Benjamin
AU - Chen, Andy Paul
AU - Recatala-Gomez, Jose
AU - Padhy, Shakti Prasad
AU - Cagnon Trouche, Marina
AU - Amara, Mohamed Raouf
AU - Cheong, Ivan
AU - Xing, Zengshan
AU - Diederichs, Carole
AU - Sum, Tze Chien
AU - Duchamp, Martial
AU - Lam, Yeng Ming
AU - Hippalgaonkar, Kedar
N1 - Publisher Copyright:
© 2025 American Chemical Society.
PY - 2025
Y1 - 2025
N2 - Halide perovskites are positioned at the forefront of photonics, optoelectronics, and photovoltaics, owing to their excellent optical properties, with emission wavelengths ranging from blue to near-infrared, and their ease in manufacturing. However, their vast composition space and the corresponding emission energies are still not fully mapped, and guided high-throughput screening that allows for targeted material synthesis would be desirable. To this end, we use experimental data from the literature to build a machine learning model, predicting the band gap of 10,920 possible compositions. Focusing on one of the most promising candidates, Cs2PbSnI6, we validate the model by synthesizing and characterizing nanocrystals of the ordered 2-2 elpasolite (double perovskite) structure. The measured photoluminescence spectra agree with both ab initio GW band structure calculations and the machine learning-predicted band gap. Therefore, our study not only provides a machine learning model for the composition space of the halide perovskites but also introduces elpasolite Cs2PbSnI6 as a promising candidate material for optoelectronic applications.
AB - Halide perovskites are positioned at the forefront of photonics, optoelectronics, and photovoltaics, owing to their excellent optical properties, with emission wavelengths ranging from blue to near-infrared, and their ease in manufacturing. However, their vast composition space and the corresponding emission energies are still not fully mapped, and guided high-throughput screening that allows for targeted material synthesis would be desirable. To this end, we use experimental data from the literature to build a machine learning model, predicting the band gap of 10,920 possible compositions. Focusing on one of the most promising candidates, Cs2PbSnI6, we validate the model by synthesizing and characterizing nanocrystals of the ordered 2-2 elpasolite (double perovskite) structure. The measured photoluminescence spectra agree with both ab initio GW band structure calculations and the machine learning-predicted band gap. Therefore, our study not only provides a machine learning model for the composition space of the halide perovskites but also introduces elpasolite Cs2PbSnI6 as a promising candidate material for optoelectronic applications.
KW - band gap
KW - crystallography
KW - elpasolite
KW - machine learning
KW - nanocrystals
KW - perovskite
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U2 - 10.1021/acsnano.4c13500
DO - 10.1021/acsnano.4c13500
M3 - Article
AN - SCOPUS:85217199144
SN - 1936-0851
JO - ACS Nano
JF - ACS Nano
ER -