密度泛函理论
混合功能
激发态
单重态
带隙
电介质
极化连续介质模型
极化率
航程(航空)
化学
原子物理学
物理
分子物理学
材料科学
凝聚态物理
计算化学
量子力学
分子
复合材料
溶剂化
作者
R. Khatri,Barry D. Dunietz
标识
DOI:10.1021/acs.jpcc.4c04178
摘要
The energy gap between the lowest singlet and lowest triplet excited states of molecular emitters is a key property affecting their thermally activated delayed fluorescence (TADF) functionality. In cases in which these states are marked by internal charge transfer, the molecular environment of the emitter significantly stabilizes these states. To address this challenging relationship, a recently developed density functional theory (DFT) framework that alleviates the fundamental orbital gap in the gas phase can be employed, offering a highly effective and predictive description of these states. These modern functionals, range-separated hybrid functionals, are based on a generalized Kohn–Sham exchange functional expression where electronic interactions are separated into long and short ranges. For representing the significant condensed phase effects, especially in the case of charge transfer states, dielectric screening can be affected by functional expression. Dielectric-screened range-separated functionals that are invoked within a polarizable continuum model were shown to properly address the orbital gap challenge in the condensed phase and consequently benchmark well in calculating triplet and charge transfer excited states. We address the excited singlet–triplet state energy gap using such a screened range-separated functional and find that the calculated gaps tend to fall within 0.1 eV of the measured energies for a widely addressed benchmark set. Here, we emphasize the success of the dielectric-screened DFT framework in calculating these important energy gaps, reproducing well the benchmark values and therefore alleviating concerns about the applicability of existing functionals. We posit that dielectric-screened calculations will bear increasing impact on the design of organic materials aiming to enhance optoelectronic applications and in particular of realized TADF efficiencies.
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