• 24 Citations

Research output per year

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Personal profile

Academic background

Daniëlle Scheepers received her BSc and MSc Chemical Engineering at Eindhoven University of Technology. After finishing her MSc in 2019 she started as a researcher in the Membrane Materials and Processes Group, Department of Chemical Engineering & Chemistry, Eindhoven University of Technology. Her expertises are polymer membrane development, membrane characterization and nanofiltration membrane modelling.

Research profile

The world’s water need will increase in the coming decades and is considered to be one of the greatest challenges. Large quantities of saline wastewater could be reused after purification, but (partial) salinity and micropollutant removal is needed. The Water Nexus project focuses on the formation of charged nanofiltration (NF) membranes, which shows high potential to treat wastewater.  NF membranes have a separation mechanism based on size and charge and have a low operating pressure. The membranes will be produced by alternating nanometer thick polyelectrolyte layers using the Layer-by-Layer technique. This project results in the production and characterization of NF membranes in terms of morphology, performance and stability using artificial and industrial feed streams.

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Research Output

  • 24 Citations
  • 3 Article
Open Access
  • Vacuum membrane distillation multi-component numerical model for ammonia recovery from liquid streams

    Scheepers, D. M., Tahir, A. J., Brunner, C. & Guillen-Burrieza, E., 30 Jun 2020, In : Journal of Membrane Science. 614, 17 p., 118399.

    Research output: Contribution to journalArticleAcademicpeer-review

  • Experimental determination of the LLE data of systems consisting of {hexane + benzene + deep eutectic solvent} and prediction using the Conductor-like Screening Model for Real Solvents

    Rodriguez Rodriguez, N., Gerlach, T., Scheepers, D., Kroon, M. C. & Smirnova, I., 1 Jan 2017, In : The Journal of Chemical Thermodynamics. 104, p. 128-137 10 p.

    Research output: Contribution to journalArticleAcademicpeer-review

    Open Access
  • 24 Citations (Scopus)
    122 Downloads (Pure)