Tendencias en el verdor de la vegetación y en la producción primaria bruta de las áreas forestales en la España peninsular (2000)

  1. C. Giner 1
  2. B. Martínez 1
  3. M. A. Gilabert 1
  4. Domingo Alcaraz-Segura 2
  1. 1 Universitat de València
    info

    Universitat de València

    Valencia, España

    ROR https://ror.org/043nxc105

  2. 2 Universidad de Granad
Revista:
Revista de teledetección: Revista de la Asociación Española de Teledetección

ISSN: 1133-0953

Año de publicación: 2012

Número: 38

Páginas: 51-64

Tipo: Artículo

Otras publicaciones en: Revista de teledetección: Revista de la Asociación Española de Teledetección

Resumen

El objetivo de este trabajo consiste en evaluar las tendencias experimentadas por las áreas forestales de la España peninsular durante el periodo 2000-2009. Para ello se ha aplicado la metodología del análisis multi-resolución (AMR) basado en la aplicación de la transformada wavelet (TW) a datos de producción primaria bruta (GPP) e índices de vegetación (NDVI y EVI) derivados del sensor MODIS. Este análisis permite descomponer una señal no estacionaria en varias componentes a diferentes escalas temporales. La aplicación del test no-paramétrico de Mann-Kendall y del método Sen a la componente de tendencia derivada del AMR proporciona información sobre la magnitud y dirección de los cambios experimentados. Como se muestra comparando con otros estudios recientes, la detección de cambios en la vegetación mediante series temporales es altamente dependiente del periodo de estudio y de la fecha de inicio de la serie temporal.

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