Aplicación de la tecnología AMTEC para mejorar el cultivo de arroz en Côte d'Ivoire: un enfoque integral de seguimiento y gestión de datos
DOI:
https://doi.org/10.5281/zenodo.14194088Keywords:
AMTEC Technology, Rice Cultivation, Satellite MonitoringAbstract
The transfer of the AMTEC technological model for rice cultivation was carried out in four rural areas of Côte d'Ivoire. The objective was to implement agroecological and technological practices to improve rice production and care. A web platform was developed under the Model-View-Controller (MVC) model for producers to enter data during manual monitoring processes. Activities included topographic surveys, drone monitoring, and analysis of satellite and climatic data. In Territory 1, a predominance of rain was observed in June and low precipitation in December, recommending the use of drones for monitoring. In Territory 2, the need for irrigation systems was highlighted due to the decrease in rainfall since 2021. In Territories 3 and 4, areas of drought and vegetation were identified, using sensors to improve data accuracy. Monitoring showed vegetation indices (NDVI) ranging from 0.4 to 0.7 in December, with future precipitation predictions of 0.577803 mm in 2025, -1.035868 mm in 2035, and -2.649539 mm in 2045. Satellite data indicated that in Territory 1, vegetation indices increased each year, with an NDVI close to 1 for December. Monitoring data in Territory 2 showed a stable NDVI between 0.6 and 0.7 since 2016, although rainfall decreased significantly in 2023. The web platform facilitates the collection and management of these data, improving agricultural decisions based on precise and updated information.
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