Published October 19, 2022 | Version v1
Dataset Open

Two-dimensional Energy Histograms as Features for Machine Learning to Predict Adsorption in Diverse Nanoporous Materials

  • 1. Northwestern University
  • 2. University of Florida
  • 3. Georgia Institute of Technology
  • 4. Oak Ridge National Laboratory
  • 5. University of Minnesota

Description

This repo contains the supplementary data sets for the to-be-published paper entitled "Two-dimensional Energy Histograms as Features for Machine Learning to Predict Adsorption in Diverse Nanoporous Materials".

 

This repo contains the following data sets:

1. CIF files for amorphous porous materials (activated carbon, hyper-cross-linked polymers, Kerogen, PIMs).

2. Grand canonical Monte Carlo (GCMC) simulation results for single-component adsorption isotherms in ToBaCCo1.0 MOFs and in amorphous porous materials. Gas molecules include Kr, Xe, ethane, propane, butane, n-hexane, and 2,2-dimethylbutane.

3. Textural properties of ToBaCCo1.0 MOFs and amorphous porous materials.

4. Trained machine learning models. R code that can work with these ML models is hosted on GitHub

Files

supplementary_data_sets.zip

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