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A generalizable machine learning approach to predict land surface temperature Monitoring of land surface and atmospheric states is highly reliant on satellite data. Traditionally, data products are generated using carefully tuned and validated algorithms for low-earth orbit (LEO) sensors. However, the emerging constellation of geostationary (GEO) sensors contributes global, high temporal resolution observations which can better capture the diurnal variability of key observables like land surface temperature (LST). Using high performance computing and datasets from the NASA Earth Exchange, we exploit co-located, co-temporal observations from LEO and GEO satellites to develop a deep learning-based method for sensor-to-sensor algorithm emulation. Our model is trained on GOES-16 thermal bands to predict MODIS Terra LST and achieves a validation error <2K. Further, application of the model to unseen times of day and a second GEO sensor observing an unseen spatial domain demonstrate the generalization of the deep learning model across space, time and spectra. We anticipate that the synergies between a variety of active orbit configurations can be used to accelerate application of existing algorithms to new datasets.
Document ID
20210021497
Acquisition Source
Ames Research Center
Document Type
Presentation
Authors
Kate Marie Duffy
(Ames Research Center Mountain View, California, United States)
Thomas Vandal
(Bay Area Environmental Research Institute Petaluma, California, United States)
Ramakrishna R Nemani
(Ames Research Center Mountain View, California, United States)
Date Acquired
September 10, 2021
Subject Category
Earth Resources And Remote Sensing
Meeting Information
Meeting: 3rd NOAA Workshop on Leveraging AI in Environmental Sciences
Location: Online
Country: US
Start Date: September 13, 2021
End Date: September 17, 2021
Sponsors: National Oceanic and Atmospheric Administration
Funding Number(s)
CONTRACT_GRANT: NNX12AD05A
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
External Peer Committee

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