中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
A data-model fusion approach for upscaling gross ecosystem productivity to the landscape scale based on remote sensing and flux footprint modelling

文献类型:SCI/SSCI论文

作者Chen B. ; Ge Q. ; Fu D. ; Yu G. ; Sun X. ; Wang S. ; Wang H.
发表日期2010
关键词light-use efficiency evergreen needleleaf forest net primary productivity water-vapor exchange carbon-dioxide vegetation indexes spectral indexes boreal forest climate data long-term
英文摘要In order to use the global available eddy-covariance (EC) flux dataset and remote-sensing measurements to provide estimates of gross primary productivity (GPP) at landscape (10(1)-10(2) km(2)), regional (10(3)-10(6) km(2)) and global land surface scales, we developed a satellite-based GPP algorithm using LANDSAT data and an upscaling framework. The satellite-based GPP algorithm uses two improved vegetation indices (Enhanced Vegetation Index EVI, Land Surface Water Index - LSWI). The upscalling framework involves flux footprint climatology modelling and data-model fusion. This approach was first applied to an evergreen coniferous stand in the subtropical monsoon climatic zone of south China. The EC measurements at Qian Yan Zhou tower site (26 degrees 44'48 '' N, 115 degrees 04'13 '' E), which belongs to the China flux network and the LANDSAT and MODIS imagery data for this region in 2004 were used in this study. A consecutive series of LANDSAT-like images of the surface reflectance at an 8-day interval were predicted by blending the LANDSAT and MODIS images using an existing algorithm (ESTARFM: Enhanced Spatial and Temporal Adaptive Reflectance Fusion Model). The seasonal dynamics of GPP were then predicted by the satellite-based algorithm. MODIS products explained 60% of observed variations of GPP and underestimated the measured annual GPP (= 1879 g Cm(-2)) by 25-30%; while the satellite-based algorithm with default static parameters explained 88% of observed variations of GPP but overestimated GPP during the growing seasonal by about 20-25%. The optimization of the satellite-based algorithm using a data-model fusion technique with the assistance of EC flux tower footprint modelling reduced the biases in daily GPP estimations from about 2.24 gCm(-2) day(-1) (non-optimized, similar to 43.5% of mean measured daily value) to 1.18 gCm(-2) day(-1) (optimized, similar to 22.9% of mean measured daily value). The remotely sensed GPP using the optimized algorithm can explain 92% of the seasonal variations of EC observed GPP. These results demonstrated the potential combination of the satellite-based algorithm, flux footprint modelling and data-model fusion for improving the accuracy of landscape/regional GPP estimation, a key component for the study of the carbon cycle.
出处Biogeosciences
7
9
2943-2958
收录类别SCI
语种英语
ISSN号1726-4170
源URL[http://ir.igsnrr.ac.cn/handle/311030/24271]  
专题地理科学与资源研究所_历年回溯文献
推荐引用方式
GB/T 7714
Chen B.,Ge Q.,Fu D.,et al. A data-model fusion approach for upscaling gross ecosystem productivity to the landscape scale based on remote sensing and flux footprint modelling. 2010.

入库方式: OAI收割

来源:地理科学与资源研究所

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