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Cover Feature: Luminescent Ionic Liquid Crystals Based on Naphthalene‐Imidazolium Unit (eur. J. Org. Chem. 14/2021)

European Journal of Organic Chemistry(2021)

Département des Matériaux Organiques Institut de Physique et de Chimie des Matériaux de Strasbourg (UMR 7504) Université de Strasbourg/CNRS 23 Rue du Loess 67000 Strasbourg France

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Abstract
The Cover Feature shows a luminescent ionic naphtalene molecular structure. By playing with the nature of the anion and the amphipathic character, it is possible to promote luminescence properties in the three states of matter (solid, liquid crystal, and liquid) as well as to control the supramolecular mesomorphic architecture in layers (black triangle with positive smectic units) or columns (background with a typical hexagonal columnar texture). More information can be found in the Full Paper by L. Douce et al.
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