Dataset underlying the research of: Fit parameters for liquid-solid fluidisation models applied in drinking water treatment processes
doi:10.4121/13537121.v1
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doi: 10.4121/13537121
doi: 10.4121/13537121
Datacite citation style:
Kramer, Onno (2021): Dataset underlying the research of: Fit parameters for liquid-solid fluidisation models applied in drinking water treatment processes. Version 1. 4TU.ResearchData. dataset. https://doi.org/10.4121/13537121.v1
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Dataset
In
2020 new accurate voidage prediction models were published in water treatment
and multiphase flow related journal articles. The models were calibrated and
validate for monodisperse spherical glass beads and fractionised calcite grains
applied in water softening fluidised bed reactors. A spin off of this particular
research project is that other granules also were examined, such as sand, steel
and synthetic grains. The fit parameters for these grains were not shared with the
scientific community. In short: this dataset consists of fit parameters for liquid-solid
fluidisation models to predict the effective voidage applied in drinking water
treatment processes and other multiphase flow systems in other industrial field
for various granules, for various velocities, particle densities and
temperatures.
history
- 2021-01-08 first online, published, posted
publisher
4TU.ResearchData
associated peer-reviewed publication
Accurate voidage prediction in fluidisation systems for full-scale drinking water pellet softening reactors using data driven models
references
organizations
Delft University of Technology, Faculty of Civil EngineeringDelft University of Technology, Faculty of Mechanical, Maritime and Materials Engineering
Waternet, Amsterdam (funder)
HU University of Applied Sciences Utrecht, Institute for Life Science and Chemistry
Queen Mary University of London, Division of Chemical Engineering, School of Engineering and Materials Science
DATA
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