Frontiers in Chemistry (Jan 2022)

Active Learning Accelerates Design and Optimization of Hole-Transporting Materials for Organic Electronics

  • Hadi Abroshan,
  • H. Shaun Kwak,
  • Yuling An,
  • Christopher Brown,
  • Anand Chandrasekaran,
  • Paul Winget,
  • Mathew D. Halls

DOI
https://doi.org/10.3389/fchem.2021.800371
Journal volume & issue
Vol. 9

Abstract

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Data-driven methods are receiving increasing attention to accelerate materials design and discovery for organic light-emitting diodes (OLEDs). Machine learning (ML) has enabled high-throughput screening of materials properties to suggest new candidates for organic electronics. However, building reliable predictive ML models requires creating and managing a high volume of data that adequately address the complexity of materials’ chemical space. In this regard, active learning (AL) has emerged as a powerful strategy to efficiently navigate the search space by prioritizing the decision-making process for unexplored data. This approach allows a more systematic mechanism to identify promising candidates by minimizing the number of computations required to explore an extensive materials library with diverse variables and parameters. In this paper, we applied a workflow of AL that accounts for multiple optoelectronic parameters to identify materials candidates for hole-transport layers (HTL) in OLEDs. Results of this work pave the way for efficient screening of materials for organic electronics with superior efficiencies before laborious simulations, synthesis, and device fabrication.

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