NASA Logo

NTRS

NTRS - NASA Technical Reports Server

Back to Results
Multisensor Machine Learning to Retrieve High Spatiotemporal Resolution Land Surface TemperatureClimate change is making heat waves more frequent, long-lasting, and severe. While multiple satellite types provide data to monitor surface temperature, geostationary (GEO) sensors provide near-continuous, continental-scale observations which can better capture the diurnal variability of land surface temperature (LST) than intermittent observations from low-earth orbit (LEO) sensors. However, standard products from GEO satellites are available at coarsened spatial and temporal resolutions compared to the native sensor resolution. Using datasets from the NASA Earth Exchange, we leveraged co-located, co-temporal observations from LEO and GEO satellites to learn a data-driven mapping using a convolutional neural network. The resulting NASA Earth eXchange Artificial Intelligence LST (NEXAI-LST) achieved a mean absolute error of 1.73 K relative to the target LEO product and improves on both spatial and temporal resolution [2 km, 10 minute] compared to the GEO full disk standard product [10 km, hourly]. In validation against measurements from a ground-based sensor network, NEXAI-LST achieves similar or better fit than both LEO and GEO standard products, while depending none of the prior knowledge of land surface and atmospheric states required by physical-statistical models. Further, application of the model to unseen LEO and GEO satellites demonstrates robust generalization of the model across spatial region, time of day, and sensor. In support of NASA’s open-source science initiative, we make our NEXAI-LST product, model, and codes available to facilitate data exploration and further studies.
Document ID
20220005290
Acquisition Source
Ames Research Center
Document Type
Conference Paper
Authors
Kate Marie Duffy ORCID
(Bay Area Environmental Research Institute Moffett Field, California, United States)
Thomas J. Vandal
(Bay Area Environmental Research Institute Petaluma, California, United States)
Ramakrishna R. Nemani
(Bay Area Environmental Research Institute Petaluma, California, United States)
Date Acquired
April 5, 2022
Publication Date
August 16, 2022
Publication Information
Publication: IEEE Access
Publisher: Institute of Electrical and Electronics Engineers
Volume: 10
Issue Publication Date: August 16, 2022
e-ISSN: 2169-3536
Subject Category
Earth Resources And Remote Sensing
Meeting Information
Meeting: 28th SIGKDD Conference on Knowledge Discovery and Data Mining
Location: Washington D.C
Country: US
Start Date: August 14, 2022
End Date: August 18, 2022
Sponsors: Association for Computing Machinery, Institute of Electrical and Electronics Engineers
Funding Number(s)
CONTRACT_GRANT: NNX12AD05A
Distribution Limits
Public
Copyright
Public Use Permitted.
Technical Review
External Peer Committee
No Preview Available