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Validación multisitio de sistemas duales de drones para la agricultura de precisión en anacardo tropical

Validación multisitio de sistemas duales de drones para la agricultura de precisión en anacardo tropical




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López, J. F., & Pérez, W. (2025). Validación multisitio de sistemas duales de drones para la agricultura de precisión en anacardo tropical. Negonotas Docentes, 26, 51-65. https://doi.org/10.52143/2346-1357.1120

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López, J. F., & Pérez, W. (2025). Validación multisitio de sistemas duales de drones para la agricultura de precisión en anacardo tropical. Negonotas Docentes, 26, 51-65. https://doi.org/10.52143/2346-1357.1120

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Jhony F. López
Sin roles de crédito asignados.
William Pérez
Sin roles de crédito asignados.

Precision agriculture in tropical woody crops faces a critical gap: the lack of validated operational frameworks
at commercial scale with multisite reproducibility. This study bridges that gap by validating a dual-drone system
across 201.27 ha of cashew in Vichada, Colombia. Over 254 missions, the system demonstrated a 236 % improvement
in operational efficiency compared to the baseline, achieving an average of 6.68 ha h-¹ and peaks of 11.35 ha h- ¹. The
protocol exhibited high reproducibility (CV < 24 % in hourly efficiency), validating its robustness for commercial
operations. The economic analysis confirms that the Agriculture as a Service (AaaS) model is profitable, with a
25.6 % cost reduction and a 63.4 % return on investment (ROI). This work therefore establishes the first reproducible
and economically viable operational framework for largescale precision agriculture in this type of crops, providing a
validated roadmap for technological adoption.


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