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Estimation of Terrestrial Global Gross Primary Production (GPP) with Satellite Data-Driven Models and Eddy Covariance Flux Data

机译:估计卫星数据驱动模型和EDDY协方差通量数据的地面全球初级生产(GPP)

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摘要

We estimate global terrestrial gross primary production (GPP) based on models that use satellite data within a simplified light-use efficiency framework that does not rely upon other meteorological inputs. Satellite-based geometry-adjusted reflectances are from the MODerate-resolution Imaging Spectroradiometer (MODIS) and provide information about vegetation structure and chlorophyll content at both high temporal (daily to monthly) and spatial (∼1 km) resolution. We use satellite-derived solar-induced fluorescence (SIF) to identify regions of high productivity crops and also evaluate the use of downscaled SIF to estimate GPP. We calibrate a set of our satellite-based models with GPP estimates from a subset of distributed eddy covariance flux towers (FLUXNET 2015). The results of the trained models are evaluated using an independent subset of FLUXNET 2015 GPP data. We show that variations in light-use efficiency (LUE) with incident PAR are important and can be easily incorporated into the models. Unlike many LUE-based models, our satellite-based GPP estimates do not use an explicit parameterization of LUE that reduces its value from the potential maximum under limiting conditions such as temperature and water stress. Even without the parameterized downward regulation, our simplified models are shown to perform as well as or better than state-of-the-art satellite data-driven products that incorporate such parameterizations. A significant fraction of both spatial and temporal variability in GPP across plant functional types can be accounted for using our satellite-based models. Our results provide an annual GPP value of ∼140 Pg C year - 1 for 2007 that is within the range of a compilation of observation-based, model, and hybrid results, but is higher than some previous satellite observation-based estimates.
机译:我们基于在简化的光使用效率框架内使用卫星数据的模型来估计全球地面总初级生产(GPP),这些模型不依赖于其他气象投入。基于卫星的几何调节反射率来自适度分辨率成像光谱辐射器(MODIS),并在高时(日常为每月)和空间(~1公里)分辨率下提供有关植被结构和叶绿素含量的信息。我们使用卫星衍生的太阳能诱导的荧光(SIF)来识别高生产率作物的区域,并评估使用较次尺寸的SIF来估计GPP。我们使用分布式涡流协方差磁通塔的子集(Fluxnet 2015),通过GPP估计进行了一套基于卫星基于卫星的模型。使用独立的FluxNet 2015 GPP数据描述培训模型的结果。我们展示了光利用效率(LUE)的变化,具有事件PAR是重要的,并且可以轻松地结合到模型中。与许多基于LUE的模型不同,我们的卫星基于卫星的GPP估计不使用明确的LUE参数化,从而降低其在温度和水胁迫下的限制条件下的电位最大值。即使没有参数化向下调节,我们的简化模型也被显示为执行,或者优于包含此类参数化的最先进的卫星数据驱动产品。可以考虑使用我们卫星的模型来计算跨植物功能类型的GPP中的空间和时间变异性的显着分数。我们的结果提供了2007年~140 pg C的年度GPP价值,即2007年,在汇编的基于观察,模型和杂种结果的范围内,但高于以前的基于卫星观测的估计值。

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