Robust Covalently Cross-linked Polybenzimidazole/Graphene Oxide Membranes for High-Flux Organic Solvent Nanofiltration

Published: 26 Apr 2018 | Version 1 | DOI: 10.17632/tnh4sgrspy.1
Contributor(s):
  • Christopher Blanford,
    Materials Science
    School of Materials, University of Manchester
  • Fan Fei,
    Fan Fei
    University of Manchester School of Materials
  • Levente Cseri,
    Levente Cseri
    University of Manchester School of Chemical Engineering and Analytical Science
  • Gyorgy Szekely
    Gyorgy Szekely
    University of Manchester School of Chemical Engineering and Analytical Science

Description of this data

The raw data and images from paper published in ACS Appl. Mater. Interfaces in 2018 by the same authors. The images are in open standard lossless formats. The raw data are stored in the Origin files used to generate the plots in the paper. AFM images were generated on a Nanoscope and can be opened with the freeware Gwyddion program.

Experiment data files

Related links

Latest version

  • Version 1

    2018-04-26

    Published: 2018-04-26

    DOI: 10.17632/tnh4sgrspy.1

    Cite this dataset

    Blanford, Christopher; Fei, Fan; Cseri, Levente; Szekely, Gyorgy (2018), “Robust Covalently Cross-linked Polybenzimidazole/Graphene Oxide Membranes for High-Flux Organic Solvent Nanofiltration”, Mendeley Data, v1 http://dx.doi.org/10.17632/tnh4sgrspy.1

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Institutions

The University of Manchester

Categories

Nanofiltration, Membranes, Organic Solvents, Graphene Oxide

Licence

CC BY 4.0 Learn more

The files associated with this dataset are licensed under a Creative Commons Attribution 4.0 International licence.

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