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A carbon sink-driven approach to estimate gross primary production from microwave satellite observations

机译:一种碳汇驱动方法来估计微波卫星观察的总初级生产

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Global estimation of Gross Primary Production (GPP) - the uptake of atmospheric carbon dioxide by plants through photosynthesis - is commonly based on optical satellite remote sensing data. This presents a source driven approach since it uses the amount of absorbed light, the main driver of photosynthesis, as a proxy for GPP. Vegetation Optical Depth (VOD) estimates obtained from microwave sensors provide an alternative and independent data source to estimate GPP on a global scale, which may complement existing GPP products. Recent studies have shown that VOD is related to aboveground biomass, and that both VOD and temporal changes in VOD relate to GPP. In this study, we build upon this concept and propose a model for estimating GPP from VOD. Since the model is driven by vegetation biomass, as observed through VOD, it presents a carbon sink driven approach to quantify GPP and, therefore, is conceptually different from common source-driven approaches. The model developed in this study uses single frequencies from active or passive microwave VOD retrievals from C-, X- and Ku-band (Advanced Scatterometer (ASCAT) and Advanced Microwave Scanning Radiometer for Earth Observation (AMSR-E)) to estimate GPP at the global scale. We assessed the ability for temporal and spatial extrapolation of the model using global GPP from FLUXCOM and in situ GPP from FLUXNET. We further performed upscaling of in situ GPP based on different VOD data sets and compared these estimates with the FLUXCOM and MODerate-resolution Imaging Spectroradiometer (MODIS) GPP products. Our results show that the model developed for individual grid cells using VOD and change in VOD as input performs well in predicting temporal patterns in GPP for all VOD data sets. For spatial extrapolation of the model, however, additional input variables are needed to represent the spatial variability of the VOD-GPP relationship due to differences in vegetation type. As additional input variable, we included the grid cell
机译:全球初级生产(GPP) - 通过光合作用植物对大气二氧化碳的摄取 - 通常基于光学卫星遥感数据。这提出了一种源驱动方法,因为它使用光合作用的主要驱动器的吸收光量,作为GPP的代理。从微波传感器获得的植被光学深度(VOD)估计提供了替代和独立的数据源来估计GPP在全球范围内,这可能会补充现有的GPP产品。最近的研究表明,VOD与上述生物量有关,并且VOD中的VOD和时间变化都与GPP相关。在这项研究中,我们建立在这个概念上,并提出了一种从VOD估算GPP的模型。由于该模型由植被生物量驱动,如通过VOD所观察到的,它呈现了量化GPP的碳汇驱动方法,因此概念性地不同于普通源驱动的方法。本研究开发的模型采用来自C-,X和Ku带(Advand Soutsometer(Accat)和高级微波扫描辐射计的主动或被动微波VOD检索的单频,用于接地观察(AMSR-E))来估算GPP全球范围。我们评估了使用Fluxcom的全球GPP和来自FluxNet的原位GPP模型的时间和空间外推的能力。我们进一步基于不同的VOD数据集进行了原位GPP的上升,并将这些估计与FLUXCOM和中频分辨率成像光谱仪(MODIS)GPP产品进行了比较。我们的结果表明,当所有VOD数据集预测GPP中的时间模式时,使用VOD和VOD变化为单个网格单元开发的模型。然而,对于模型的空间外推,需要额外的输入变量来表示由于植被类型的差异导致的VOD-GPP关系的空间可变性。作为额外的输入变量,我们包括网格单元格

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