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A new model of gross primary productivity for North American ecosystems based solely on the enhanced vegetation index and land surface temperature from MODIS

机译:仅基于MODIS增强的植被指数和地表温度的北美生态系统总初级生产力的新模型

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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. (c) 2007 Elsevier Inc. All rights reserved.
机译:当前许多基于遥感的生态系统碳交换模型,例如称为MOD17的MODIS产品,仍需要来自地面气象测量的大量输入,并需要根据植被类型查找表。由于这些数据通常无法以与遥感影像相同的空间比例获得,因此它们可能将大量误差引入碳交换估算中。在这里,我们提出了完全基于遥感数据的总初级生产(GPP)模型的进一步开发。与仅基于增强植被指数(EVI)的早期模型相比,该模型称为温度和绿色(TG)模型,还包括MODIS的地表温度(LST)产品。 LST除与植被温度存在明显关系外,还与蒸气压不足和光合有效辐射相关。该模型中EVI和LST的组合大大改善了北美地区11种涡旋相关通量塔上11种涡旋相关通量塔的GPP预测值与实测值之间的相关性。在许多情况下,与MODIS GPP产品相比,TG模型提供的GPP预测要好得多。然而,这两种模型都导致对稀疏灌木生境的预测不佳,在稀疏灌木生境中,太阳角对遥感指数的影响很大。尽管有可能通过改善参数设置来改进MODIS GPP产品,但我们的结果表明,完全基于遥感的简单模型可以提供GPP的相同良好预测。 (c)2007 Elsevier Inc.保留所有权利。

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