Prediction of C7N6 and C9N4: Stable and strong porous carbon-nitride nanosheets with attractive electronic and optical properties

Bohayra Mortazavi, Masoud Shahrokhi, Alexander V. Shapeev, Timon Rabczuk, Xiaoying Zhuang

Research output: Contribution to journalArticlepeer-review

36 Citations (Scopus)

Abstract

In this work, three novel porous carbon-nitride nanosheets with C7N6, C9N4 and C10N3 stoichiometries are predicted. First-principles simulations were accordingly employed to evaluate stability and explore the mechanical, electronic and optical properties. Phonon dispersions confirm the dynamical stability of all predicted nanosheets. Nonetheless, ab initio molecular dynamics results indicate that only C7N6 and C9N4 are thermally stable. C7N6, C9N4 and C10N3 nanosheets were predicted to exhibit high elastic moduli of 212, 202 and 208 N m-1 and maximum tensile strengths of 14.1, 22.4 and 15.8 N m-1, respectively. The C7N6 monolayer was confirmed to be a direct band-gap semiconductor, with a 2.25 eV gap according to the HSE06 method estimation. Interestingly, C9N4 and C10N3 monolayers show metallic character. The first absorption peaks of the optical spectra reveal that the C7N6 nanosheet can absorb visible light, whereas C9N4 and C10N3 monolayers can absorb in the infrared range of light. Moreover, the absorption coefficient and optical conductivity of the predicted nanosheets in the visible range of light are larger than those of graphene. The results provided by this study confirm the stability and highlight the very promising properties of C7N6 and C9N4 nanosheets, which may serve as promising candidates for numerous advanced technologies.

Original languageEnglish
Pages (from-to)10908-10917
Number of pages10
JournalJournal of Materials Chemistry C
Volume7
Issue number35
DOIs
Publication statusPublished - 2019

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