Publications des agents du Cirad

Cirad

Evaluation of the potential of MODIS satellite data to predict vegetation phenology in different biomes: An investigation using ground-based NDVI measurements

Hmimina G., Dufrêne E., Pontailler J.Y., Delpierre N., Aubinet M., Caquet B., De Grandcourt A., Burban B., Flechard C., Granier A., Gross P., Heinesch B., Longdoz B., Moureaux C., Ourcival J.M., Rambal S., Saint André L., Soudani K.. 2013. Remote Sensing of Environment, 132 : p. 145-158.

DOI: 10.1016/j.rse.2013.01.010

Vegetation phenology is the study of the timing of seasonal events that are considered to be the result of adaptive responses to climate variations on short and long time scales. In the field of remote sensing of vegetation phenology, phenologicalmetrics are derived fromtime series of optical data. For that purpose, considerable effort has been specifically focused on developing noise reduction and cloud-contaminated data removal techniques to improve the quality of remotely-sensed time series. Comparative studies between time series composed of satellite data acquired under clear and cloudy conditions and from radiometric data obtainedwith high accuracy from ground-based measurements constitute a direct and effective way to assess the operational use and limitations of remote sensing for predicting the main plant phenological events. In the present paper, we sought to explicitly evaluate the potential use of MODerate resolution Imaging Spectroradiometer (MODIS) remote sensing data for monitoring the seasonal dynamics of different types of vegetation cover that are representative of the major terrestrial biomes, including temperate deciduous forests, evergreen forests, African savannah, and crops. After cloud screening and filtering, we compared the temporal patterns and phenological metrics derived from in situ NDVI time series and from MODIS daily and 16-composite products. We also evaluated the effects of residual noise and the influence of data gaps in MODIS NDVI time series on the identification of the most relevant metrics for vegetation phenology monitoring. The results show that the inflexion points of a model fitted to a MODIS NDVI time series allow accurate estimates of the onset of greenness in the spring and the onset of yellowing in the autumn in deciduous forests (RMSE?one week). Phenologicalmetrics identical to those providedwith theMODIS Global Vegetation Phenology product (MDC12Q2) are less robust to data gaps, and they can be subject to large biase

Mots-clés : végétation; forêt; phénologie; télédétection; changement climatique; variation saisonnière; modèle de simulation; modèle mathématique; écosystème; productivité primaire

Documents associés

Article (a-revue à facteur d'impact)