Title :
Exploring the Biophysical Drivers of Amazon Phenology: Preparing Data Sets to Improve Dynamic Global Vegetation Models
Author :
Bradley, Andrew ; Gerard, France ; Weedon, Graham ; Huntingford, Chris ; Barbier, Nicolas ; Zelazowski, Przemyslaw ; Anderson, Liana ; De Aragão, Luiz Eduardo O C
Author_Institution :
Centre for Ecology & Hydrol., Huntingdon
Abstract :
We explore the relative influence of biophysical drivers on phenology to assist validation and parameterization of Dynamic Global Vegetation Models. Using 6.8 years of MODIS data we created a vegetation index time series to map the spatial variability of vegetation phenology in the Amazon. TRMM and CERES data were used as a measure of two biophysical variables, precipitation and net radiation respectively. Using a Fourier transform and cross spectral analysis two aspects were considered from these data, the coincidence of: (A) spatial patterns, presence and strength in the annual cycle, and (B) the coherency and phase differences between the phenology and the biophysical variables. Using the Amazon as a study area we find that the coincidence between phenology and the drivers in annual power strength was not linear and in an area of high coherency we found radiation and phenology was almost in phase, whilst precipitation was not. The correspondence of slightly subdued annual phenology with strong annual radiation indicated that other drivers also influence the strength of the phenology.
Keywords :
Fourier transforms; atmospheric boundary layer; atmospheric precipitation; atmospheric radiation; phenology; remote sensing; spectral analysis; vegetation mapping; Amazon phenology; CERES data; Clouds and the Earth Radiant Energy System mission; Fourier transform; MODIS data; Moderate Resolution Imaging Spectroradiometer; South America; TRMM data; Tropical Rainfall Measuring Mission; anthropogenic influence; atmospheric precipitation; atmospheric radiation; biophysical drivers exploration; cross spectral analysis; data preparation; dynamic global vegetation model; spatial pattern; spatial variability; time series mapping; Atmospheric modeling; Environmental factors; Fourier transforms; Hydrology; MODIS; Predictive models; Remote monitoring; Satellites; Spectral analysis; Vegetation mapping; Fourier transform; Satellite applications; Vegetation mapping; modeling; spectral analysis;
Conference_Titel :
Geoscience and Remote Sensing Symposium, 2008. IGARSS 2008. IEEE International
Conference_Location :
Boston, MA
Print_ISBN :
978-1-4244-2807-6
Electronic_ISBN :
978-1-4244-2808-3
DOI :
10.1109/IGARSS.2008.4778946