Title :
Deriving Vegetation Phenological Time and Trajectory Information Over Africa Using SEVIRI Daily LAI
Author :
Kaiyu Guan ; Medvigy, David ; Wood, Eric F. ; Caylor, Kelly K. ; Shi Li ; Su-Jong Jeong
Author_Institution :
Dept. of Civil & Environ. Eng., Princeton Univ., Princeton, NJ, USA
Abstract :
Vegetation phenology is closely connected to the terrestrial carbon budget, and interacts with the atmosphere through surface water and energy exchange. A comprehensive and detailed characterization of the spatio-temporal pattern of vegetation phenology can be used to improve the understanding of interactions between vegetation and climate in Africa. This research provides an approach to derive phenology time and trajectory parameters by optimally fitting a double-logistic curve to daily remotely sensed leaf area index (LAI) from the spinning enhanced visible and infrared imager. The proposed algorithm can reconstruct the temporal LAI trajectory based on the optimized parameters with a high accuracy, and provides user-defined phenological timing information (e.g., start/end of the growing season) and trajectory information (e.g., leaf emergence/senescence rate and length) using these fitted parameters. Both single and double growing-season cases have been considered with a spatial classification scheme implemented over Africa. The newly derived vegetation phenology of Africa exhibits emerging spatial patterns in growing season length, asymmetric green-up and green-off length/rate, and distinctive phenological features of cropland and natural vegetation. This approach has the potential to be applied globally, and the derived vegetation phenological information will improve dynamic vegetation modeling and climate prediction.
Keywords :
climatology; phenology; vegetation; vegetation mapping; Africa; SEVIRI daily LAI; asymmetric green-off length; asymmetric green-off rate; asymmetric green-up length; asymmetric green-up rate; climate prediction; cropland; daily remotely sensed leaf area index; double growing-season case; double-logistic curve; dynamic vegetation modeling; energy exchange; growing season length; leaf emergence rate; leaf senescence rate; natural vegetation; phenological features; phenological timing information; single growing-season case; spatial classification scheme; spatial patterns; spatiotemporal pattern; spinning enhanced visible and infrared imager; surface water; temporal LAI trajectory; terrestrial carbon budget; trajectory information; trajectory parameters; vegetation phenological information; vegetation phenological time; Africa; Spinning Enhanced Visible and Infrared Imager (SEVIRI); leaf area index (LAI); vegetation phenology;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2013.2247611