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    Drones Aplicados a la Agricultura de Precisión

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    Author
    González, Adrián
    Amarillo, Gelberth
    Amarillo, Milton
    Sarmiento, Francisco
    Publisher
    Universidad Nacional Abierta y a Distancia, UNAD

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    TY - GEN T1 - Drones Aplicados a la Agricultura de Precisión AU - González, Adrián AU - Amarillo, Gelberth AU - Amarillo, Milton AU - Sarmiento, Francisco UR - https://repository.unad.edu.co/handle/10596/29774 PB - Universidad Nacional Abierta y a Distancia, UNAD AB - ER - @misc{10596_29774, author = {González Adrián and Amarillo Gelberth and Amarillo Milton and Sarmiento Francisco}, title = {Drones Aplicados a la Agricultura de Precisión}, year = {}, abstract = {}, url = {https://repository.unad.edu.co/handle/10596/29774} }RT Generic T1 Drones Aplicados a la Agricultura de Precisión A1 González, Adrián A1 Amarillo, Gelberth A1 Amarillo, Milton A1 Sarmiento, Francisco LK https://repository.unad.edu.co/handle/10596/29774 PB Universidad Nacional Abierta y a Distancia, UNAD AB OL Spanish (121)
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    Abstract
    El siguiente artículo presenta los drones como una tecnología que ayuda a los múltiples procesos de la agricultura, a captar información importante y a evaluar las condiciones de los terrenos monitoreados, gracias a sus grandes ventajas para sobrevolar los campos y los cultivos. Ahora no es completamente necesario recorrer todo el cultivo personalmente para detectar los problemas que sufre este, ya que con los drones el procedimiento de evaluar los cultivos se puede hacer de forma virtual, aplicando tecnologías de cámaras con alta definición e información georreferenciada para su ubicación exacta. Lo más importante es el poder determinar de forma prematura y eficiente las enfermedades, las plagas, la maleza y los posibles efectos futuros de daños climáticos como las heladas o sequías. La eficiencia, tanto ambiental como económica, ayuda en los procesos de siembra, costos de riego, abono y fumigación. 
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    http://hemeroteca.unad.edu.co/index.php/publicaciones-e-investigacion/article/view/1585/1917
    http://hemeroteca.unad.edu.co/index.php/publicaciones-e-investigacion/article/view/1585/1930
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    http://dx.doi.org/10.22490/25394088.1585
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