Strategic planning applied to pea crop management using artificial intelligence tools based on hydrometeorological and economic data
Planeación estratégica aplicada a la administración de cultivos de alverja empleando herramientas de inteligencia artificial basada en datos hidrometeorológicos y económicos
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In this article, a strategic planting planning method for pea crops is presented, using advanced management techniques such as the application of predictive neural networks based on historical meteorological and economic data to increase farmers' profitability. It was verified that predictions can be made with an average error of 7.7%, therefore the algorithm can be used as a decision-making tool.
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