Skip to content

This repository consists of sequential workflows for the development of an AI model to better quantify, understand, and predict the permafrost carbon feedback. The resulting manuscripts, data products, syntheses, and analyses is a multi-year effort originating from my dissertation through my current NPP research at JPL/Caltech.

License

Notifications You must be signed in to change notification settings

bradleygay/geocryoai

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

GeoCryoAI

GeoCryoAI is a hybridized ensemble learning framework composed of stacked convolutional layers and memory-encoded recurrent neural networks. This multimodal deep learning architecture simultaneously ingests and analyzes in situ measurements, airborne remote sensing observations, and process-based modeling outputs exhibiting disparate spatiotemporal sampling and data densities.
Bradley A. Gay, PhD | NASA Postdoctoral Program Fellow | JPL, California Institute of Technology
If these resources prove helpful and are incorporated, repurposed, and/or modules are extracted and reused, please cite this repository, the companion dataset and source code in the ORNL DAAC, and the JGR-MLC manuscript.
Gay, B. A., Pastick, N. J., Watts, J. D., et al., 2024. Decoding the Spatiotemporal Complexities of the Permafrost Carbon Feedback with Multimodal Ensemble Learning. Journal of Geophysical Research, Machine Learning and Computation. Under Review.
Gay, B.A., et al. 2024. GeoCryoAI | Decoding the Spatiotemporal Complexities of the Permafrost Carbon Feedback with Multimodal Ensemble Learning. ORNL DAAC, Oak Ridge, Tennessee, USA. https://doi.org/10.3334/ORNLDAAC/2371
Gay, B., Pastick, N., Watts, J., Armstrong, A., Miner, K., & Miller, C. (2024). geocryoai (Version 1.0.0) [Computer software]. https://www.github.com/bradleygay/geocryoai

Relevant Manuscripts

Gay, B. A., Pastick, N. J., Watts, J. D., et al., 2024. Decoding the Spatiotemporal Complexities of the Permafrost Carbon Feedback with Multimodal Ensemble Learning. Journal of Geophysical Research, Machine Learning and Computation. Under Review.
Gay, B. A., Pastick, N. J., Watts, J. D., et al., 2024. Forecasting Permafrost Carbon Dynamics in Alaska with Earth Observation Data and Artificial Intelligence, ESS Open Archive. https://essopenarchive.org/users/524229/articles/1225858-forecasting-permafrost-carbon-dynamics-in-alaska-with-earth-observation-data-and-artificial-intelligence
Gay, B. A., Züfle, A. E., Armstrong, A. H., et al. Investigating Permafrost Carbon Dynamics in Alaska with Artificial Intelligence, December 26, 2023. ESS Open Archive. https://doi.org/10.22541/essoar.170355056.64772303/v1
Gay, B. A., Züfle, A. E., Armstrong, A. H., et al. Investigating High-Latitude Permafrost Carbon Dynamics with Artificial Intelligence and Earth System Data Assimilation, December 26, 2023. ESS Open Archive. https://doi.org/10.22541/essoar.170355053.35677457/v1
Gay, B.A., Pastick, N.J., Züfle, A.E., Armstrong, A.H., Miner, K.R., Qu, J.J., 2023. Investigating permafrost carbon dynamics in Alaska with artificial intelligence. Environmental Research Letters 18. https://doi.org/10.1088/1748-9326/ad0607
Gay, B. A., (2023). Investigating High-Latitude Permafrost Carbon Dynamics with Artificial Intelligence and Earth System Data Assimilation. (Order No. 30488695, George Mason University). ProQuest Dissertations and Theses, 281. Retrieved from https://www.proquest.com/dissertations-theses/investigating-high-latitude-permafrost-carbon/docview/2826111475/se-2

About

This repository consists of sequential workflows for the development of an AI model to better quantify, understand, and predict the permafrost carbon feedback. The resulting manuscripts, data products, syntheses, and analyses is a multi-year effort originating from my dissertation through my current NPP research at JPL/Caltech.

Resources

License

Stars

Watchers

Forks

Packages

No packages published