Applications of Unmanned Aerial Systems in Agricultural Operation Management: Part I: Overview
Agricultural drone setup at a crop field.
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How to Cite

Fletcher, James, and Aditya Singh. 2020. “Applications of Unmanned Aerial Systems in Agricultural Operation Management: Part I: Overview”. EDIS 2020 (6).


Unmanned aerial systems (UASs, UAVs, or drones) have emerged as one of the most promising technologies for agricultural operation management in recent decades. This 6-page publication provides an overview of the broad areas where UASs can be utilized for monitoring and managing farm operations. Written by James Fletcher and Aditya Singh, and published by the UF/IFAS Department of Agricultural and Biological Engineering, June 2020.
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