A meta-analysis of the impact of water content and temperature on the viscosities of four deep eutectic solvents (glyceline, reline, DEAG, DEACG), their components (choline chloride, urea, glycerol, ethylene glycol), methanol, and pure water was performed. We analyzed the viscosity data by an automated workflow, using Arrhenius and Vogel–Fulcher–Tammann-Hesse models.
DOI: 10.15490/fairdomhub.1.study.767.1
Zenodo URL: None
Created at: 24th Nov 2020 at 08:11
VFT and Arrhenius Modelling
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Viscosity data input
Input data (viscosities, in .csv format) for the modelling workflow, collected from literature, see associated publication for details.
- Input.zip
Results of modelling analysis
Resulting data from the modelling workflow, see associated publication.
- Results.zip
Modelling Workflow
The modelling workflow used on the input data, which leads to the results, see associated publication.
- Scripts.zip
Defining names
Python script allowing the user to define the names of the input files to be used. Together with "wrapper.py" this script requires input files to be located in a folder called "input" in the same directory.
- names.py
Wrapper script
Python script wrapping up (executing) all the steps of the workflow the user enters in it. Together with "names.py" this script requires input files to be located in a folder called "input" in the same directory.
- wrapper.py
Instructions for using the workflow
Instructions and details on the data analysis workflow.
- Manual.pdf
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Created: 24th Nov 2020 at 08:11
Last updated: 24th Nov 2020 at 08:11