Deep Learning for Additive Screening in Perovskite Light-Emitting Diodes

Liang Zhang, Na Li, Dawei Liu, Guanhong Tao, Weidong Xu, Mengmeng Li, Ying Chu, Chensi Cao, Feiyue Lu, Chenjie Hao, Ju Zhang, Yu Cao, Feng Gao, Nana Wang, Lin Zhu, Wei Huang, Jianpu Wang

Research output: Contribution to journalArticlepeer-review

33 Scopus citations

Abstract

Additive engineering with organic molecules is of critical importance for achieving high-performance perovskite optoelectronic devices. However, experimentally finding suitable additives is costly and time consuming, while conventional machine learning (ML) is difficult to predict accurately due to the limited experimental data available in this relatively new field. Here, we demonstrate a deep learning method that can predict the effectiveness of additives in perovskite light-emitting diodes (PeLEDs) with a high accuracy up to 96 % by using a small dataset of 132 molecules. This model can maximize the information of the molecules and significantly mitigate the duplicated problem that usually happened with previous models in ML for molecular screening. Very high efficiency PeLEDs with a peak external quantum efficiency up to 22.7 % can be achieved by using the predicated additive. Our work opens a new avenue for further boosting the performance of perovskite optoelectronic devices.

Original languageEnglish
Article numbere202209337
JournalAngewandte Chemie - International Edition
Volume61
Issue number37
DOIs
StatePublished - 12 Sep 2022

Keywords

  • Additive Engineering
  • Light-Emitting Diode
  • Machine Learning
  • Molecule Screening
  • Perovskite

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