Revisión de métodos de mapeo de microclimas en el ámbito forestal

Palabras clave: fotogrametría, dron, láser, mapeo de microclimas, forestal

Resumen

El estudio de los microclimas presenta una serie de beneficios que implican su importancia para reducir los efectos del cambio climático, por lo que el mapeo de estos surge como una alternativa para su identificación y conservación. Siendo el objetivo de esta revisión la identificación de técnicas empleadas en el mapeo de microclimas. La metodología empleada fue una revisión exploratoria en bases de datos como Science Direct, Springer y IEEXplore, determinando que existe una escasez respecto a trabajos relacionados al mapeo de microclimas, ya que solo 19 trabajos cumplieron con los requisitos de inclusión para la revisión. Se determinó que el objetivo principal de la cartografía microclimática se centraba en el dosel arbóreo, la altura y la densidad de las estructuras forestales y sus efectos sobre los factores climáticos que las componen. Por otro lado, los métodos de cartografía microclimática identificados se dividieron en métodos fotogramétricos y métodos de escaneo láser, donde la mayoría de los estudios se basaron en la recopilación de datos aéreos, ya sea mediante drones (UAV, UAS, RPA, RPAS) o aeronaves como en el caso de las tecnologías LiDAR aerotransportadas. Se concluyó que existen pocas investigaciones sobre el mapeo de microclimas, por lo que se exhorta a la comunidad científica del ámbito forestal a emplear las diversas metodologías para objetivos de gran impacto en el ambiente como es la predicción de incendios forestales y seguimiento de restauración de bosques luego de estos.

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Publicado
2024-12-25
Cómo citar
Sánchez-Chero, M., Sánchez-Chero, J., Flores-Mendoza, L., Navarro, F., Donayre, D., & Cesare, M. (2024). Revisión de métodos de mapeo de microclimas en el ámbito forestal. Revista De La Facultad De Agronomía De La Universidad Del Zulia, 42(1), e254204. Recuperado a partir de https://produccioncientificaluz.org/index.php/agronomia/article/view/43151
Sección
Articulo de revisión