1 to 10 of 83,949 Results
Apr 30, 2024
Parazoo, Nicholas; Byrne, Brendan, 2024, "Science Data for the article “More Frequent Spaceborne Sampling of XCO2 Improves Detectability of Carbon Cycle Seasonal Transitions in Arctic-Boreal Ecosystems", https://doi.org/10.48577/jpl.OASBRL, JPL Open Repository
These datasets are results from modeling experiments to test for the impact of spaceborne sampling of atmospheric CO2 on estimates of land-atmospheric CO2 exchange in the Arctic region. Specifically, we use flux inversion observing system sensitivity experiments (OSSE) to test th... |
Network Common Data Form - 55.4 MB -
MD5: 0dc5a93d63df3e3100e028bbcb9d62b2
|
Network Common Data Form - 55.5 MB -
MD5: 4599d45e312a2561d59259d8f6093fa4
|
Apr 30, 2024
Hamlington, Benjamin (329C), 2024, "Seeing Earth’s Coastlines: SWOT Satellite Provides Higher-resolution Data than Ever", https://doi.org/10.48577/jpl.164TQL, Von Karman Lecture, JPL Open Repository
Seeing Earth’s Coastlines: SWOT Satellite Provides Higher-resolution Data than Ever |
Adobe PDF - 34.3 MB -
MD5: 0d54c9ec8d7df20b66c096aca0364c7a
|
Apr 29, 2024
Cedric David (329F), 2024, "Observing River Dynamics from Space… Why?", https://doi.org/10.48577/jpl.9NHIUL, Panel Discussion on “Satellite Constellation for Daily Water Level Measurements”, JPL Open Repository
Observing River Dynamics from Space… Why? |
Apr 29, 2024 -
Observing River Dynamics from Space… Why?
Adobe PDF - 9.6 MB -
MD5: 198d14bec996e57226c25ee9c6296bf2
|
Apr 29, 2024
Thompson, David (382B); Eckert, Regina; Brodrick, Philip; Bohn, U. Niklas; Carmon, Nimrod; Green, Robert O., 2024, "Local linear emulators accelerate atmospheric correction", https://doi.org/10.48577/jpl.MY6SSF, EARSeL Workshop on Imaging Spectroscopy in Valéncia, JPL Open Repository
Local linear emulators accelerate atmospheric correction |
Apr 29, 2024 -
Local linear emulators accelerate atmospheric correction
Adobe PDF - 3.9 MB -
MD5: bce93d5c76e303d28bf15b6956f22fd5
|
Apr 29, 2024 -
MRO Overview: Sixteen Years in Mars Orbit
Adobe PDF - 19.9 MB -
MD5: 58808278b4cfbf9bdce559079bf2f6a2
|