Accelerated design and optimization of novel OLED materials via active learning

H. Abroshan, Anand Chandrasekaran, P. Winget, Yuling An, Shaun H. Kwak, C. Brown, M. Halls
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引用次数: 3

Abstract

To date, the development of organic light-emitting diode (OLED) materials has been primarily based on a combination of chemical intuition and trial-and-error experimentation. The approach is often expensive and time-consuming, let alone in most instances fails to offer new materials leading to higher efficiencies. Data-driven approaches have emerged as a powerful tool to accelerate the design and discovery of novel materials with multifunctional properties for next generation OLED technologies. Virtual high-throughput methods assisted by machine learning (ML) enable a broad screening of chemical space to predict material properties and suggest new candidates for OLEDs. In order to build reliable predictive ML models for OLED materials, it is required to create and manage a high volume of data which not only maintain high accuracy but also properly assess the complexity of materials chemistry in the OLED space. Active learning (AL) is among several strategies developed to face the challenge in both materials science and life science applications, where the data management in large-scale becomes a main bottleneck. Here, we present a workflow that efficiently combines AL with atomic-scale simulations to reliably predict optoelectronic properties of OLED materials. This study provides a robust and validated framework to account for multiple parameters that simultaneously influence OLED performance. Results of this work pave the way for a fundamental understanding of optoelectronic performance of emergent layers from a molecular perspective, and further screen candidate materials with superior efficiencies before laborious simulations, synthesis, and device fabrication.
基于主动学习的新型OLED材料加速设计与优化
迄今为止,有机发光二极管(OLED)材料的开发主要基于化学直觉和试错实验的结合。这种方法通常既昂贵又耗时,更不用说在大多数情况下无法提供导致更高效率的新材料。数据驱动的方法已经成为一种强大的工具,可以加速设计和发现下一代OLED技术中具有多功能特性的新材料。由机器学习(ML)辅助的虚拟高通量方法可以广泛筛选化学空间,以预测材料性能并为oled提供新的候选材料。为了建立可靠的OLED材料预测机器学习模型,需要创建和管理大量数据,这些数据不仅要保持高精度,而且要正确评估OLED领域材料化学的复杂性。主动学习是为应对材料科学和生命科学应用中的挑战而开发的几种策略之一,在这些应用中,大规模的数据管理成为主要瓶颈。在这里,我们提出了一个工作流程,有效地将人工智能与原子尺度模拟相结合,以可靠地预测OLED材料的光电特性。本研究提供了一个稳健且经过验证的框架来解释同时影响OLED性能的多个参数。这项工作的结果为从分子角度理解涌现层的光电性能铺平了道路,并在费力的模拟、合成和器件制造之前进一步筛选具有优越效率的候选材料。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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