Maize yield forecasts for Sub-Saharan Africa using Earth Observation data and machine learning

Global Food Security - Tập 33 - Trang 100643 - 2022
Donghoon Lee1, Frank Davenport1, Shraddhanand Shukla1, Greg Husak1, Chris Funk1, Laura Harrison1, Amy McNally2,3,4, James Rowland5, Michael Budde5, James Verdin3
1Climate Hazards Center, Department of Geography, University of California, SantaBarbara, CA, United States
2NASA Goddard Space Flight Center, Greenbelt, MD, United States
3U.S. Agency for International Development, Washington, DC, United States
4Science Applications International Corporation, Reston, VA, United States
5U.S. Geological Survey, Earth Resources Observation and Science Center, Sioux Falls, SD, United States

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