TY - JOUR
T1 - Evaluation of remote sensing based terrestrial productivity from MODIS using regional tower eddy flux network observations
AU - Heinsch, Faith Ann
AU - Zhao, Maosheng
AU - Running, Steven W.
AU - Kimball, John S.
AU - Nemani, Ramakrishna R.
AU - Davis, Kenneth J.
AU - Bolstad, Paul V.
AU - Cook, Bruce D.
AU - Desai, Ankur R.
AU - Ricciuto, Daniel M.
AU - Law, Beverly E.
AU - Oechel, Walter C.
AU - Kwon, Hyojung
AU - Luo, Hongyan
AU - Wofsy, Steven C.
AU - Dunn, Allison L.
AU - Munger, J. William
AU - Baldocchi, Dennis D.
AU - Xu, Liukang
AU - Hollinger, David Y.
AU - Richardson, Andrew D.
AU - Stoy, Paul C.
AU - Siqueira, Mario B.S.
AU - Monson, Russell K.
AU - Burns, Sean P.
AU - Flanagan, Lawrence B.
PY - 2006/7
Y1 - 2006/7
N2 - The Moderate Resolution Spectroradiometer (MODIS) sensor has provided near real-time estimates of gross primary production (GPP) since March 2000. We compare four years (2000 to 2003) of satellite-based calculations of GPP with tower eddy CO 2 flux-based estimates across diverse land cover types and climate regimes. We examine the potential error contributions from meteorology, leaf area index (LAI)fPAR, and land cover. The error between annual GPP computed from NASA's Data Assimilation Office's (DAO) and tower-based meteorology is 28%, indicating that NASA's DAO global meteorology plays an important role in the accuracy of the GPP algorithm. Approximately 62% of MOD15-based estimates of LAI were within the estimates based on field optical measurements, although remaining values overestimated site values. Land cover presented the fewest errors, with most errors within the forest classes, reducing potential error. Tower-based and MODIS estimates of annual GPP compare favorably for most biomes, although MODIS GPP overestimates tower-based calculations by 20%-30%. Seasonally, summer estimates of MODIS GPP are closest to tower data, and spring estimates are the worst, most likely the result of the relatively rapid onset of leaf-out. The results of this study indicate, however, that the current MODIS GPP algorithm shows reasonable spatial patterns and temporal variability across a diverse range of biomes and climate regimes. So, while continued efforts are needed to isolate particular problems in specific biomes, we are optimistic about the general quality of these data, and continuation of the MOD17 GPP product will likely provide a key component of global terrestrial ecosystem analysis, providing continuous weekly measurements of global vegetation production.
AB - The Moderate Resolution Spectroradiometer (MODIS) sensor has provided near real-time estimates of gross primary production (GPP) since March 2000. We compare four years (2000 to 2003) of satellite-based calculations of GPP with tower eddy CO 2 flux-based estimates across diverse land cover types and climate regimes. We examine the potential error contributions from meteorology, leaf area index (LAI)fPAR, and land cover. The error between annual GPP computed from NASA's Data Assimilation Office's (DAO) and tower-based meteorology is 28%, indicating that NASA's DAO global meteorology plays an important role in the accuracy of the GPP algorithm. Approximately 62% of MOD15-based estimates of LAI were within the estimates based on field optical measurements, although remaining values overestimated site values. Land cover presented the fewest errors, with most errors within the forest classes, reducing potential error. Tower-based and MODIS estimates of annual GPP compare favorably for most biomes, although MODIS GPP overestimates tower-based calculations by 20%-30%. Seasonally, summer estimates of MODIS GPP are closest to tower data, and spring estimates are the worst, most likely the result of the relatively rapid onset of leaf-out. The results of this study indicate, however, that the current MODIS GPP algorithm shows reasonable spatial patterns and temporal variability across a diverse range of biomes and climate regimes. So, while continued efforts are needed to isolate particular problems in specific biomes, we are optimistic about the general quality of these data, and continuation of the MOD17 GPP product will likely provide a key component of global terrestrial ecosystem analysis, providing continuous weekly measurements of global vegetation production.
KW - AmeriFlux
KW - CO eddy covariance flux [net ecosystem exchange (NEE)]
KW - Gross primary production (GPP)
KW - Moderate Resolution Imaging Spectroradiometer (MODIS)
KW - Remote sensing
KW - Terra
UR - https://www.scopus.com/pages/publications/33746335642
U2 - 10.1109/TGRS.2005.853936
DO - 10.1109/TGRS.2005.853936
M3 - Article
AN - SCOPUS:33746335642
SN - 0196-2892
VL - 44
SP - 1908
EP - 1923
JO - IEEE Transactions on Geoscience and Remote Sensing
JF - IEEE Transactions on Geoscience and Remote Sensing
IS - 7
M1 - 1645290
ER -