https://github.com/fernandezfran/bmxfc

:bar_chart::bulb: Datasets, pipelines and predictions of a metric for benchmarking an extreme fast-charging of Li-ion battery electrode materials

https://github.com/fernandezfran/bmxfc

Science Score: 23.0%

This score indicates how likely this project is to be science-related based on various indicators:

  • CITATION.cff file
  • codemeta.json file
  • .zenodo.json file
  • DOI references
    Found 1 DOI reference(s) in README
  • Academic publication links
    Links to: zenodo.org
  • Academic email domains
  • Institutional organization owner
  • JOSS paper metadata
  • Scientific vocabulary similarity
    Low similarity (9.6%) to scientific vocabulary

Keywords

benchmarking database fast-charging lithium-ion-batteries metrics pipeline prediction
Last synced: 4 months ago · JSON representation

Repository

:bar_chart::bulb: Datasets, pipelines and predictions of a metric for benchmarking an extreme fast-charging of Li-ion battery electrode materials

Basic Info
  • Host: GitHub
  • Owner: fernandezfran
  • License: cc-by-sa-4.0
  • Language: Jupyter Notebook
  • Default Branch: main
  • Homepage:
  • Size: 687 KB
Statistics
  • Stars: 0
  • Watchers: 1
  • Forks: 0
  • Open Issues: 0
  • Releases: 2
Topics
benchmarking database fast-charging lithium-ion-batteries metrics pipeline prediction
Created about 2 years ago · Last pushed almost 2 years ago
Metadata Files
Readme License

README.md

Datasets, pipelines and predictions of universal BMX-FC metric

doi DOI license

Datasets, pipelines and predictions of a metric for benchmarking an extreme fast-charging of Li-ion battery electrode materials.

This repository supports the following article

F. Fernandez, E. M. Gavilán-Arriazu, D. E. Barraco, Y. Ein-Eli and E. P. M. Leiva. "A metric for benchmarking an extreme fast-charging of Li-ion battery electrode materials." Journal TODO. DOI: TODO

Content

The datasets folder contains the data of experimental characterizations, of the simulation of the map, and for the validation of the model. The predictions folder contains the predictions obtained with the different pipelines that were run in the following order: 1. metrics.ipynb 2. predictions.ipynb 3. validations.ipynb

Requirements

To run the pipelines you need Jupyter Notebooks that require Python 3.9+ and use the galpynostatic package, along with other libraries from the Python data science stack such as matplotlib, NumPy, pandas and SciPy, which can be installed as follows: pip install -r requirements.txt

Disclaimer

This repository only have the predictions for a kinetic rate constant of 1e-7, the other values reported in the paper can be obtained by slightly modifying the pipelines.

Contact

If you have any questions, you can contact me at ffernandev@gmail.com

Code Repository

https://www.github.com/fernandezfran/bmxfc

License

bmxfc is licensed under the Creative Commons Attribution-ShareAlike 4.0 International License.

Owner

  • Name: Francisco Fernandez
  • Login: fernandezfran
  • Kind: user
  • Location: Córdoba, Argentina
  • Company: FAMAF, UNC

Computational Physicist

GitHub Events

Total
  • Watch event: 1
Last Year
  • Watch event: 1

Dependencies

requirements.txt pypi
  • galpynostatic ==0.4.0