Evaluación de información relacionada con combustibles en el Distrito Metropolitano de Quito para el modelado y simulación de incendios forestales, caso de estudio: Incendio del cerro Atacazo
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Resumen
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FlamMap, simulação de incêndios florestais, modelagem de incêndios florestais, sensoriamento remoto FlamMap, simulación incendios forestales, modelado incendios forestales, sensores remotos FlamMap, wildfires simulation, wildfires modeling, remote sensing
Citas
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