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Agricultura de precisión en la producción de aguacate: mapeando el panorama de los desarrollos científicos y tecnológicos

Analysis of keywords and their correlations about precision agriculture on avocado production from 2012 to 2024. Photo: J.P. Taramuel-Taramuel

Resumen

La integración de tecnologías de agricultura de precisión de vanguardia en la producción de aguacate es una estrategia prometedora para impulsar la productividad y la rentabilidad en esta próspera industria. Si bien revisiones anteriores han explorado la aplicación de tecnologías emergentes en el cultivo de aguacate, existe un vacío en el análisis de la producción de patentes. Esta investigación tiene como objetivo cerrar esa brecha identificando tendencias en innovaciones científicas y tecnológicas relacionadas con la agricultura de precisión en el aguacate. A través de un análisis bibliométrico utilizando datos de Scopus y Lens.org, este estudio revela que la producción científica se concentra principalmente en los países industrializados, con una producción de investigación limitada de las principales naciones productoras de aguacate. La investigación se ha centrado en las técnicas de teledetección y procesamiento de imágenes. En términos de desarrollo tecnológico, las innovaciones en captura, recolección y procesamiento de datos agrícolas, así como en componentes para maquinaria agrícola, han sido las más predominantes. Las tecnologías disponibles en el mercado están diseñadas para predecir el rendimiento de los cultivos y evaluar el impacto de factores abióticos como la temperatura, la humedad y las precipitaciones. Al adoptar estas herramientas de agricultura de precisión, los productores de aguacate pueden tomar decisiones basadas en datos para optimizar el uso de recursos, mejorar la salud de los cultivos y, en última instancia, mejorar el rendimiento general de la finca.

Palabras clave

Persea americana Mill., Agricultura digital, Vigilancia tecnológica, Agricultura 4.0, Productividad agrícola

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Citas

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