Design of Organic Electronic Materials With a Goal-Directed Generative Model Powered by Deep Neural Networks and High-Throughput Molecular Simulations

In recent years, generative machine learning approaches have attracted significant attention as an enabling approach for designing novel molecular materials with minimal design bias and thereby realizing more directed design for a specific materials property space. Further, data-driven approaches ha...

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Veröffentlicht in:Frontiers in chemistry 2022-01, Vol.9, p.800370-800370
Hauptverfasser: Kwak, H Shaun, An, Yuling, Giesen, David J, Hughes, Thomas F, Brown, Christopher T, Leswing, Karl, Abroshan, Hadi, Halls, Mathew D
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Sprache:eng
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Zusammenfassung:In recent years, generative machine learning approaches have attracted significant attention as an enabling approach for designing novel molecular materials with minimal design bias and thereby realizing more directed design for a specific materials property space. Further, data-driven approaches have emerged as a new tool to accelerate the development of novel organic electronic materials for organic light-emitting diode (OLED) applications. We demonstrate and validate a goal-directed generative machine learning framework based on a recurrent neural network (RNN) deep reinforcement learning approach for the design of hole transporting OLED materials. These large-scale molecular simulations also demonstrate a rapid, cost-effective method to identify new materials in OLEDs while also enabling expansion into many other verticals such as catalyst design, aerospace, life science, and petrochemicals.
ISSN:2296-2646
2296-2646
DOI:10.3389/fchem.2021.800370