The uncertainty analysis of the MODIS GPP product in global maize croplands

Frontiers of Earth Science in China(2018)

引用 11|浏览11
暂无评分
摘要
Gross primary productivity (GPP) is very important in the global carbon cycle. Currently, the newly released estimates of 8-day GPP at 500 m spatial resolution (Collection 6) are provided by the Moderate Resolution Imaging Spectroradiometer (MODIS) Land Science Team for the global land surface via the improved light use efficiency (LUE) model. However, few studies have evaluated its performance. In this study, the MODIS GPP products (GPP MOD ) were compared with the observed GPP (GPP EC ) values from site-level eddy covariance measurements over seven maize flux sites in different areas around the world. The results indicate that the annual GPP MOD was underestimated by 6%‒58% across sites. Nevertheless, after incorporating the parameters of the calibrated LUE, the measurements of meteorological variables and the reconstructed Fractional Photosynthetic Active Radiation (FPAR) into the GPP MOD algorithm in steps, the accuracies of GPP MOD estimates were improved greatly, albeit to varying degrees. The differences between the GPP MOD and the GPP EC were primarily due to the magnitude of LUE and FPAR. The underestimate of maize cropland LUE was a widespread problem which exerted the largest impact on the GPP MOD algorithm. In American and European sites, the performance of the FPAR exhibited distinct differences in capturing vegetation GPP during the growing season due to the canopy heterogeneity. In addition, at the DE-Kli site, the GPP MOD abruptly produced extreme low values during the growing season because of the contaminated FPAR from a continuous rainy season. After correcting the noise of the FPAR, the accuracy of the GPP MOD was improved by approximately 14%. Therefore, it is crucial to further improve the accuracy of global GPP MOD , especially for the maize crop ecosystem, to maintain food security and better understand global carbon cycle.
更多
查看译文
关键词
MODIS GPP, eddy covariance, maize cropland, validation, improvement
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要