Title of article :
A new model of gross primary productivity for North American ecosystems based solely on the enhanced vegetation index and land surface temperature from MODIS
Author/Authors :
Sims، نويسنده , , Daniel A. and Rahman، نويسنده , , Abdullah F. and Cordova، نويسنده , , Vicente D. and El-Masri، نويسنده , , Bassil Z. and Baldocchi، نويسنده , , Dennis D. and Bolstad، نويسنده , , Paul V. and Flanagan، نويسنده , , Lawrence B. and Goldstein، نويسنده , , Allen H. and Hollinger، نويسنده , , David Y. and Misson، نويسنده , , Laurent and Monson، نويسنده , , Russell K. and ، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Pages :
14
From page :
1633
To page :
1646
Abstract :
Many current models of ecosystem carbon exchange based on remote sensing, such as the MODIS product termed MOD17, still require considerable input from ground based meteorological measurements and look up tables based on vegetation type. Since these data are often not available at the same spatial scale as the remote sensing imagery, they can introduce substantial errors into the carbon exchange estimates. Here we present further development of a gross primary production (GPP) model based entirely on remote sensing data. In contrast to an earlier model based only on the enhanced vegetation index (EVI), this model, termed the Temperature and Greenness (TG) model, also includes the land surface temperature (LST) product from MODIS. In addition to its obvious relationship to vegetation temperature, LST was correlated with vapor pressure deficit and photosynthetically active radiation. Combination of EVI and LST in the model substantially improved the correlation between predicted and measured GPP at 11 eddy correlation flux towers in a wide range of vegetation types across North America. In many cases, the TG model provided substantially better predictions of GPP than did the MODIS GPP product. However, both models resulted in poor predictions for sparse shrub habitats where solar angle effects on remote sensing indices were large. Although it may be possible to improve the MODIS GPP product through improved parameterization, our results suggest that simpler models based entirely on remote sensing can provide equally good predictions of GPP.
Keywords :
Flux tower , Surface temperature , Gross photosynthesis , Carbon modeling , GPP , Eddy covariance
Journal title :
Remote Sensing of Environment
Serial Year :
2008
Journal title :
Remote Sensing of Environment
Record number :
1575383
Link To Document :
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