Predictions of photophysical properties of phosphorescent platinum(II) complexes based on ensemble machine learning approach
Shuai Wang (1), ChiYung Yam (2,3), Shuguang Chen (1,2), Lihong Hu (4),, Liping Li (2), Faan-Fung Hung (1,2), Jiaqi Fan (2), Chi-Ming Che (1,2), and, GuanHua Chen (1,2) ((1) Department of Chemistry, The University of Hong Kong,, Pokfulam, Hong Kong SAR

TL;DR
This paper introduces an ensemble machine learning protocol that accurately predicts key photophysical properties of phosphorescent platinum(II) complexes, aiding the design of efficient OLED emitters.
Contribution
It develops a novel, integrated prediction method combining quantum mechanics, machine learning, and experimental data for phosphorescent Pt(II) complexes.
Findings
High prediction accuracy for emission wavelength (R^2=0.96)
Reliable quantum yield predictions (R^2=0.81)
Effective validation on newly reported complexes
Abstract
Phosphorescent metal complexes have been under intense investigations as emissive dopants for energy efficient organic light emitting diodes (OLEDs). Among them, cyclometalated Pt(II) complexes are widespread triplet emitters with color-tunable emissions. To render their practical applications as OLED emitters, it is in great need to develop Pt(II) complexes with high radiative decay rate constant () and photoluminescence (PL) quantum yield. Thus, an efficient and accurate prediction tool is highly desirable. Here, we develop a general protocol for accurate predictions of emission wavelength, radiative decay rate constant, and PL quantum yield for phosphorescent Pt(II) emitters based on the combination of first-principles quantum mechanical method, machine learning (ML) and experimental calibration. A new dataset concerning phosphorescent Pt(II) emitters is constructed, with more…
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Taxonomy
TopicsOrganic Light-Emitting Diodes Research · Conducting polymers and applications · Luminescence Properties of Advanced Materials
MethodsMasked autoencoder
