哒嗪
咔唑
质子化
三氟乙酸
化学
荧光
光化学
分子内力
接受者
吸收(声学)
轨道能级差
分子
材料科学
有机化学
离子
复合材料
物理
量子力学
凝聚态物理
作者
Sohee Lee,Seung-Hwan Kim,Sun Hee Lee,Yeeun Lee,Yong Sup Lee,Kwang-Hwan Yang,Kang‐Kyun Wang,Won‐Sik Han
标识
DOI:10.1016/j.dyepig.2021.109613
摘要
Stimuli-responsive materials based on donor–acceptor systems have great potential for sensing applications, including in the solid state. Herein, two push–pull-type molecules, 3,6-di(9 H -carbazol-9-yl)pyridazine ( CzPyr–H ) and 3,6-bis(3,6-dimethoxy-9 H -carbazol-9-yl)pyridazine ( CzPyr–OMe ), each of which contain two carbazole donors and a pyridazine acceptor, were designed and synthesized. The photophysical properties of CzPyr–H and CzPyr–OMe were systematically explored with the aim of switching the absorption and emission properties using trifluoroacetic acid (TFA) as an external analyte, thus realizing volatile acid sensing. The protonation of the central pyridazine unit led to a broad absorption band at longer wavelengths owing to intramolecular charge transfer (ICT), and the emission intensity gradually decreased with increasing TFA concentration. Density functional theory calculations of the HOMO–LUMO energy gaps and orbital distributions of CzPyr–H and CzPyr–OMe as well as their protonated forms, CzPyr–H(H+) and CzPyr–OMe(H+) , confirmed that charge transfer occurred in the protonated species. In their aggregated solid states, both compounds showed interesting emission properties including aggregation-enhanced emission (AEE). Utilizing their TFA sensitivity and the AEE phenomenon, CzPyr–H and CzPyr–OMe were successfully applied as fluorescent probes for volatile acid detection and as security ink for information encryption on paper. • Carbazole and pyridazine-based compounds are prepared to study acid-sensing ability. • Methoxy functionalized compound exhibits higher sensitivity as a TFA sensor. • Both compounds can be reversibly switched off and on by controlling the pH. • Develop fluorescent probes for volatile acid detection and security ink.
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