有机发光二极管
材料科学
轨道能级差
二苯甲酮
光化学
接受者
量子效率
无定形固体
热稳定性
光致发光
单重态
光电子学
化学
纳米技术
高分子化学
图层(电子)
有机化学
分子
物理
凝聚态物理
核物理学
激发态
作者
Iram Siddiqui,Prakalp Gautam,Dovydas Blaževičius,Jayachandran Jayakumar,S. Lenka,Daiva Tavgenienė,Ernestas Zaleckas,Saulius Grigalevičius,Jwo‐Huei Jou
出处
期刊:Molecules
[MDPI AG]
日期:2024-04-08
卷期号:29 (7): 1672-1672
被引量:1
标识
DOI:10.3390/molecules29071672
摘要
Over the past few decades, organic light-emitting diodes (OLEDs) find applications in smartphones, televisions, and the automotive sector. However, this technology is still not perfect, and its application for lighting purposes has been slow. For further development of the OLEDs, we designed twisted donor-acceptor-type electroactive bipolar derivatives using benzophenone and bicarbazole as building blocks. Derivatives were synthesized through the reaction of 4-fluorobenzophenone with various mono-alkylated 3,3′-bicarbazoles. We have provided a comprehensive structural characterization of these compounds. The new materials are amorphous and exhibit suitable glass transition temperatures ranging from 57 to 102 °C. They also demonstrate high thermal stability, with decomposition temperatures reaching 400 °C. The developed compounds exhibit elevated photoluminescence quantum yields (PLQY) of up to 75.5% and favourable HOMO-LUMO levels, along with suitable triplet-singlet state energy values. Due to their good solubility and suitable film-forming properties, all the compounds were evaluated as blue TADF emitters dispersed in commercial 4,4′-bis(N-carbazolyl)-1,10-biphenyl (CBP) host material and used for the formation of emissive layer of organic light-emitting diodes (OLEDs) in concentration-dependent experiments. Out of these experiments, the OLED with 15 wt% of the emitting derivative 4-(9′-{2-ethylhexyl}-[3,3′]-bicarbazol-9-yl)benzophenone exhibited superior performance. It attained a maximum brightness of 3581 cd/m2, a current efficacy of 5.7 cd/A, a power efficacy of 4.1 lm/W, and an external quantum efficacy of 2.7%.
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