Photocatalytic proton reduction by a computationally identified, molecular hydrogen-bonded framework
We show that a hydrogen-bonded framework, TBAP -α, with extended π-stacked pyrene columns has a sacrificial photocatalytic hydrogen production rate of up to 3108 μmol g −1 h −1 . This is the highest activity reported for a molecular organic crystal. By comparison, a chemically-identical but amorphou...
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Veröffentlicht in: | Journal of materials chemistry. A, Materials for energy and sustainability Materials for energy and sustainability, 2020, Vol.8 (15), p.7158-717 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | We show that a hydrogen-bonded framework,
TBAP
-α, with extended π-stacked pyrene columns has a sacrificial photocatalytic hydrogen production rate of up to 3108 μmol g
−1
h
−1
. This is the highest activity reported for a molecular organic crystal. By comparison, a chemically-identical but amorphous sample of
TBAP
was 20-200 times less active, depending on the reaction conditions, showing unambiguously that crystal packing in molecular crystals can dictate photocatalytic activity. Crystal structure prediction (CSP) was used to predict the solid-state structure of
TBAP
and other functionalised, conformationally-flexible pyrene derivatives. Specifically, we show that energy-structure-function (ESF) maps can be used to identify molecules such as
TBAP
that are likely to form extended π-stacked columns in the solid state. This opens up a methodology for the
a priori
computational design of molecular organic photocatalysts and other energy-relevant materials, such as organic electronics.
A hydrogen-bonded organic framework is an effective photocatalyst for producing hydrogen from water. Its crystal structure is key to its activity; a chemically identical, amorphous version is almost inactive, as rationalized by crystal structure prediction. |
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ISSN: | 2050-7488 2050-7496 2050-7496 |
DOI: | 10.1039/d0ta00219d |