Planeación estratégica aplicada a la administración de cultivos de alverja empleando herramientas de inteligencia artificial basada en datos hidrometeorológicos y económicos

Strategic planning applied to pea crop management using artificial intelligence tools based on hydrometeorological and economic data

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Luz Angela Moreno-Cueva
César Augusto Peña-Cortés
Carlos Nelson Henriquez-Miranda
Resumen

En este artículo se presenta un método planeación estratégica de siembra de cultivos de alverja empleando técnicas avanzadas de administración como lo son la aplicación de redes neuronales predictivas basadas en datos históricos meteorológicos y económicos, para aumentar la rentabilidad de los agricultores. Se pudo corroborar que es posible realizar predicciones con un error medio del 7.7%, por lo cual el algoritmo se puede emplear herramienta para la toma de decisiones.

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Referencias

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