modelbiasesann
Investigation of model biases in historical internal variability using explainable AI
Science Score: 59.0%
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✓DOI references
Found 13 DOI reference(s) in README -
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1 of 1 committers (100.0%) from academic institutions -
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○Scientific vocabulary similarity
Low similarity (7.6%) to scientific vocabulary
Keywords
climate-change
climate-models
climate-science
explainable-ai
internal-variability
machine-learning
neural-networks
uncertainty
Last synced: 6 months ago
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JSON representation
Repository
Investigation of model biases in historical internal variability using explainable AI
Basic Info
- Host: GitHub
- Owner: zmlabe
- License: mit
- Language: Python
- Default Branch: main
- Homepage: https://zacklabe.com/
- Size: 95.4 MB
Statistics
- Stars: 8
- Watchers: 2
- Forks: 1
- Open Issues: 0
- Releases: 2
Topics
climate-change
climate-models
climate-science
explainable-ai
internal-variability
machine-learning
neural-networks
uncertainty
Created about 5 years ago
· Last pushed over 3 years ago
Metadata Files
Readme
License
Citation
README.md
ModelBiasesANN 
Investigation of model biases in historical internal variability using explainable AI
Under construction... [Python 3.7]
Contact
Zachary Labe - Research Website - @ZLabe
Description
Scripts/: Main Python scripts/functions used in data analysis and plottingrequirements.txt: List of environments and modules associated with the most recent version of this project. A Python Anaconda3 Distribution was used for our analysis. Tools including NCL, CDO, and NCO were also used for initial data manipulation.
Data
- Berkeley Earth Surface Temperature project (BEST) : [DATA]
- Rohde, R. and Coauthors (2013) Berkeley earth temperature averaging process. Geoinform Geostat Overv. doi:10.4172/2327-4581.1000103 [PUBLICATION]
- ERA5 : [DATA]
- Bell, B., Hersbach, H., Simmons, A., Berrisford, P., Dahlgren, P., Hornyi, A., ... & Thpaut, J. N. (2021). The ERA5 global reanalysis: Preliminary extension to 1950. Quarterly Journal of the Royal Meteorological Society, doi.org/10.1002/qj.4174 [PUBLICATION]
- Hersbach, H., Bell, B., Berrisford, P., Hirahara, S., Hornyi, A., MuozSabater, J., ... & Simmons, A. (2020). The ERA5 global reanalysis. Quarterly Journal of the Royal Meteorological Society, doi:10.1002/qj.3803 [PUBLICATION]
- CESM Large Ensemble Project (LENS) : [DATA]
- Kay, J. E and Coauthors, 2015: The Community Earth System Model (CESM) large ensemble project: A community resource for studying climate change in the presence of internal climate variability. Bull. Amer. Meteor. Soc., 96, 13331349, doi:10.1175/BAMS-D-13-00255.1 [PUBLICATION]
- Multi-Model Large Ensemble (SMILE) : [DATA]
- Deser, C., Phillips, A. S., Simpson, I. R., Rosenbloom, N., Coleman, D., Lehner, F., ... & Stevenson, S. (2020). Deser, C., Lehner, F., Rodgers, K. B., Ault, T., Delworth, T. L., DiNezio, P. N., ... & Ting, M. (2020). Insights from Earth system model initial-condition large ensembles and future prospects. Nature Climate Change, 1-10. doi:10.1038/s41558-020-0731-2 [PUBLICATION]
- NOAA-CIRES-DOE Twentieth Century Reanalysis (20CRv3) : [DATA]
- Slivinski, L. C., Compo, G. P., Whitaker, J. S., Sardeshmukh, P. D., Giese, B. S., McColl, C., ... & Wyszyski, P. (2019). Towards a more reliable historical reanalysis: Improvements for version 3 of the Twentieth Century Reanalysis system. Quarterly Journal of the Royal Meteorological Society, 145(724), 2876-2908. doi:10.1002/qj.3598 [PUBLICATION]
Publications
- [1] Labe, Z.M. and E.A. Barnes (2022), Comparison of climate model large ensembles with observations in the Arctic using simple neural networks. Earth and Space Science, DOI:10.1029/2022EA002348 [HTML][SUMMARY][BibTeX]
Conferences
- [5] Labe, Z.M. and E.A. Barnes. Using explainable neural networks for comparing climate model projections, 27th Conference on Probability and Statistics, Virtual Attendance (Jan 2022). [Abstract] [Slides]
- [4] Labe, Z.M. and E.A. Barnes. Evaluating global climate models using simple, explainable neural networks, 2021 American Geophysical Union Annual Meeting, Virtual Attendance (Dec 2021) (Invited). [Abstract] [Slides]
- [3] Labe, Z.M. and E.A. Barnes. Exploring climate model large ensembles with explainable neural networks, WCRP workshop on attribution of multi-annual to decadal changes in the climate system, Virtual Workshop (Sep 2021). [Slides]
- [2] Labe, Z.M. and E.A. Barnes. Climate model evaluation with explainable neural networks, 3rd NOAA Workshop on Leveraging AI in Environmental Sciences, Virtual Workshop (Sep 2021). [Poster]
- [1] Labe, Z.M. and E.A. Barnes. Using explainable neural networks for comparing historical climate model simulations, 2nd Workshop on Knowledge Guided Machine Learning (KGML2021), Virtual Workshop (Aug 2021). [Poster]
Owner
- Name: Zachary Labe
- Login: zmlabe
- Kind: user
- Location: Princeton, NJ
- Company: Princeton University & NOAA GFDL
- Website: https://zacklabe.com/
- Twitter: ZLabe
- Repositories: 32
- Profile: https://github.com/zmlabe
I’m a climate scientist trying to visualize the signal from a lot of noise.
GitHub Events
Total
- Watch event: 1
Last Year
- Watch event: 1
Committers
Last synced: about 2 years ago
Top Committers
| Name | Commits | |
|---|---|---|
| Zachary Labe | z****e@r****u | 92 |
Committer Domains (Top 20 + Academic)
Issues and Pull Requests
Last synced: about 2 years ago
All Time
- Total issues: 0
- Total pull requests: 0
- Average time to close issues: N/A
- Average time to close pull requests: N/A
- Total issue authors: 0
- Total pull request authors: 0
- Average comments per issue: 0
- Average comments per pull request: 0
- Merged pull requests: 0
- Bot issues: 0
- Bot pull requests: 0
Past Year
- Issues: 0
- Pull requests: 0
- Average time to close issues: N/A
- Average time to close pull requests: N/A
- Issue authors: 0
- Pull request authors: 0
- Average comments per issue: 0
- Average comments per pull request: 0
- Merged pull requests: 0
- Bot issues: 0
- Bot pull requests: 0