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Estimating the Net Ecosystem Carbon Exchange for a Deciduous Broadleaf Forest by Exclusive Use of MODIS Data

机译:利用MODIS数据估算落叶阔叶林的净生态系统碳交换

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Many current models of ecosystem carbon exchange based on remote sensing such as the MODIS17 product are complex and require considerable input variables from ground-based meteorological measurements. They can introduce substantial errors into the carbon exchange estimates because these data are often not available at the same spatial scale as the remote sensing imagery. Here we propose a new net ecosystem carbon exchange (NEE) model solely based on MODIS data. Presumed that NEE can be simulated 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 and land surface water index (LSWI) from MODIS. Site-specific data from the deciduous-dominated Harvard Forest AmeriFlux site were used. We analyzed 6 years (2001-2006) of CO2 flux data, the first four years used for model building and the others as validated set. The research showed that combination of the three parameters in the model could well reflect the correlation between predicted and measured NEE by eddy covariance technique at Harvard forest site. Furthermore, the TG model provided substantially better predictions of seasonal dynamics of NEE. Although it may be possible to improve the precision of various satellite-based production efficiency models through improved parameterization, our study suggests simpler empirical model based entirely on MODIS data could reliably estimate NEE.
机译:许多基于遥感的生态系统碳交换模型,如Modis17产品是复杂的,并且需要与地面的气象测量相当的输入变量。它们可以将大量误差引入碳交换估计数,因为这些数据通常不适用于与遥感图像相同的空间尺度。在这里,我们完全基于MODIS数据提出了新的净生态系统碳交换(NEE)模型。假设只有在增强型植被指数(EVI)上,可以模拟NEE,该模型称为温度和绿色(TG)模型,还包括来自MODIS的土地表面温度(LST)产品和陆地水指数(LSWI) 。使用来自落下主导的哈佛林Ameriflux站点的特定于站点的数据。我们分析了6年(2001-2006)的二氧化碳助焊数据,对于模型建筑的前四年和其他验证集。该研究表明,该模型中的三个参数的组合可以很好地反映在哈佛森林地点的涡流协方识技术的预测和测量NEE之间的相关性。此外,TG模型提供了对NEE季节动态的基本更好的预测。虽然可以通过改进的参数化提高各种卫星的生产效率模型的精度,但我们的研究表明,完全基于MODIS数据的更简单的经验模型可以可靠地估计NEE。

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