qled的空穴传输材料:机器学习和原子模拟的结合方法

H. Abroshan, Shaun H. Kwak, Anand Chandrasekaran, A. Chew, Alexandr Fonari, M. Halls
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引用次数: 0

摘要

qled已经成为光电应用的一种替代方案。然而,为了qled的广泛应用,需要提高器件的效率。常用量子点(QDs)的价带与传统空穴输运材料(HTMs)的HOMO能级之间存在明显的能级失配。由于量子点的导带与商业电子输运材料之间的能级不匹配较小,因此发光层中的载流子是不平衡的。这种电荷不平衡降低了QLED器件的效率,因此设计与量子点能量不匹配小的新型HTL材料具有重要意义。考虑到有机空间中有大量潜在的分子,采用基于化学直觉和试错实验的昂贵且耗时的方法实际上是无效的。因此,实现下一代qled技术需要在材料设计和开发方面进行范式改变。在这里,我们将主动学习(AL)和高通量量子力学计算相结合,作为一种新的策略来有效地导航大型材料库中的搜索空间。人工智能通过计算多个光电特性来实现系统的材料筛选,同时最大限度地减少计算次数。我们使用原子模拟和机器学习进一步评估了这些候选材料,以研究它们的非晶膜中的电荷迁移率和热稳定性。这项工作为qled材料的有效计算筛选提供了指导,减少了费力、耗时和昂贵的计算机模拟、材料合成和器件制造。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hole transport materials for QLEDs: a combined approach of machine learning and atomistic simulation
QLEDs have emerged as an alternative for optoelectronic applications. However, for widespread application of QLEDs, the device efficiency is required to be improved. There is a significant energy level mismatch between the valence band of commonly used quantum dots (QDs) and the HOMO level of traditional hole transport materials (HTMs). Given the small energy level mismatch between the conduction bands of the QDs and commercial electron transport materials, charge carriers in the light-emitting layer are imbalanced. Such a charge imbalance decreases the efficiency of QLED devices, and thus it is of great importance to design novel HTL materials with small energy mismatch with the QDs. Given the numerous potential molecules in the organic space, employing expensive and time-consuming approaches based on chemical intuition and trial-and-error experimentation is practically ineffective. Thus, realizing next-generation QLEDs technologies requires a paradigm change in materials design and development. Here, we combine active learning (AL) and high-throughput quantum mechanical calculations as a novel strategy to efficiently navigate the search space in a large materials library. The AL enables a systematic material screening by accounting multiple optoelectronic properties while minimizing the number of calculations. We further evaluated the top candidates using atomistic simulations and machine learning to investigate charge mobility and thermal stability in their amorphous films. This work offers guidelines for efficient computational screening of materials for QLEDs, reducing laborious, time-consuming, and expensive computer simulations, materials synthesis, and device fabrication.
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