Modeling solvation effects on absorption and fluorescence spectra of indole in aqueous solution

溶剂化 化学 极化连续介质模型 激发态 吸收光谱法 化学物理 极化率 分子动力学 吸收(声学) 分子 计算化学 分子物理学 原子物理学 材料科学 物理 量子力学 有机化学 复合材料
作者
Salsabil Abou‐Hatab,Vincenzo Carnevale,Spiridoula Matsika
出处
期刊:Journal of Chemical Physics [American Institute of Physics]
卷期号:154 (6): 064104-064104 被引量:17
标识
DOI:10.1063/5.0038342
摘要

Modeling the optical spectra of molecules in solution presents a challenge, so it is important to understand which of the solvation effects (i.e., electrostatics, mutual polarization, and hydrogen bonding interactions between solute and solvent molecules) are crucial in reproducing the various features of the absorption and fluorescence spectra and to identify a sufficient theoretical model that accurately captures these effects with minimal computational cost. In this study, we use various implicit and explicit solvation models, such as molecular dynamics coupled with non-polarizable and polarizable force fields, as well as Car–Parrinello molecular dynamics, to model the absorption and fluorescence spectra of indole in aqueous solution. The excited states are computed using the equation of motion coupled cluster with single and double excitations combined with the effective fragment potential to represent water molecules, which we found to be a computationally efficient approach for modeling large solute–solvent clusters at a high level of quantum theory. We find that modeling mutual polarization, compared to other solvation effects, is a dominating factor for accurately reproducing the position of the peaks and spectral line shape of the absorption spectrum of indole in solution. We present an in-depth analysis of the influence that different solvation models have on the electronic excited states responsible for the features of the absorption spectra. Modeling fluorescence is more challenging since it is hard to reproduce even the correct emitting state, and force field parameters need to be re-evaluated.
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