Invited Paper: Theoretical Studies on Molecular Recognition and Self-Assembly

Sunwoo Kang, Shihai Yan, J. Lee
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引用次数: 1

Abstract

Supramolecular chemistry now has become a central part of the research activities. Basically, it mostly concerns molecular recognition and self aggregation by non-covalent weak intermolecular interactions, such as hydrogen bonding, π-π stacking, and van der Waals interactions. The computational applications on such large systems are limited for their structural complexity. Several examples of the computational approaches to understand molecular recognition and self-aggregation are discussed. Firstly, bifunctional (fluorescence and visible light absorption) anion sensing mechanism is supported by the DFT calculations. Secondly, an experimentally observed selective recognition of Cu2+ by an azobenzene-appended receptor, which can exhibit Cu2+ selectivity by color change, is discussed based on computational approach. Finally, the intermolecular interaction, which is useful for predicting the self-assembled structures, can be understood by replicating the monomer unit and manipulating the translation and rotation.
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特邀论文:分子识别与自组装的理论研究
目前,超分子化学已成为研究活动的核心部分。基本上,它主要关注非共价弱分子间相互作用的分子识别和自聚集,如氢键、π-π堆叠和范德华相互作用。这种大型系统的计算应用由于其结构复杂性而受到限制。讨论了几个计算方法来理解分子识别和自聚集的例子。首先,DFT计算支持了双功能(荧光和可见光吸收)阴离子传感机制。其次,基于计算方法讨论了偶氮苯附加受体对Cu2+的选择性识别,该受体可以通过颜色变化表现出Cu2+的选择性。最后,分子间相互作用可以通过复制单体单元和操纵平移和旋转来理解,这有助于预测自组装结构。
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