Computational Discovery of TTF Molecules with Deep Generative Models

被引:4
|
作者
Yakubovich, Alexander [1 ]
Odinokov, Alexey [1 ]
Nikolenko, Sergey [2 ,3 ]
Jung, Yongsik [4 ]
Choi, Hyeonho [4 ]
机构
[1] Samsung Elect, Samsung R&D Inst Russia SRR, Moscow, Russia
[2] Steklov Inst Math St Petersburg, St Petersburg, Russia
[3] ISP RAS Res Ctr Trusted Artificial Intelligence, Moscow, Russia
[4] Samsung Elect, Samsung Adv Inst Technol SAIT, Gyeonggi, South Korea
来源
FRONTIERS IN CHEMISTRY | 2021年 / 9卷
关键词
generative model; OLED; organic light emitting devices; display; computational materials discovery; quantum chemistry; autoencoder; molecular database screening; TRIPLET-TRIPLET ANNIHILATION; ULTRAVIOLET-ABSORPTION; EXCITED-STATES; UP-CONVERSION; DESIGN; TRANSITIONS; SPECTROSCOPY; PYRAZINE; LIGHT;
D O I
10.3389/fchem.2021.800133
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
We present a computational workflow based on quantum chemical calculations and generative models based on deep neural networks for the discovery of novel materials. We apply the developed workflow to search for molecules suitable for the fusion of triplet-triplet excitations (triplet-triplet fusion, TTF) in blue OLED devices. By applying generative machine learning models, we have been able to pinpoint the most promising regions of the chemical space for further exploration. Another neural network based on graph convolutions was trained to predict excitation energies; with this network, we estimate the alignment of energy levels and filter molecules before running time-consuming quantum chemical calculations. We present a comprehensive computational evaluation of several generative models, choosing a modification of the Junction Tree VAE (JT-VAE) as the best one in this application. The proposed approach can be useful for computer-aided design of materials with energy level alignment favorable for efficient energy transfer, triplet harvesting, and exciton fusion processes, which are crucial for the development of the next generation OLED materials.
引用
收藏
页数:12
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