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Uncertainty in simulating gross primary production of cropland ecosystem from satellite-based models

机译:Uncertainty in simulating gross primary production of cropland ecosystem from satellite-based models

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摘要

Accurate estimates of gross primary production (GPP) for croplands are needed to assess carbon cycle and crop yield. Satellite-based models have been developed to monitor spatial and temporal GPP patterns. However, there are still large uncertainties in estimating cropland GPP. This study compares three light use efficiency (LUE) models (MODIS-GPP, EC-LUE, and VPM) with eddy-covariance measurements at three adjacent AmeriFlux crop sites located near Mead, Nebraska, USA. These sites have different croprotation systems (continuous maize vs. maize and soybean rotated annually) and water management practices (irrigation vs. rainfed). The results reveal several major uncertainties in estimating GPP which need to be sufficiently considered in future model improvements. Firstly, the C4 crop species (maize) shows a larger photosynthetic capacity compared to the C3 species (soybean). LUE models need to use different model parameters (i.e., maximal light use efficiency) for C3 and C4 crop species, and thus, it is necessary to have accurate species-distribution products in order to determine regional and global estimates of GPP. Secondly, the 1 km sized MODIS fPAR and EVI products, which are used to remotely identify the fraction of photosynthetically active radiation absorbed by the vegetation canopy, may not accurately reflect differences in phenology between maize and soybean. Such errors will propagate in the GPP model, reducing estimation accuracy. Thirdly, the water-stress variables in the remote sensing models do not fully characterize the impacts of water availability on vegetation production. This analysis highlights the need to improve LUE models with regard to model parameters, vegetation indices, and water-stress inputs. (C) 2015 Elsevier B.V. All rights reserved.
机译:需要准确估算农田的初级总产值(GPP),以评估碳循环和作物产量。已经开发了基于卫星的模型来监视空间和时间GPP模式。但是,估计农田GPP仍存在很大的不确定性。这项研究将三个光利用效率(LUE)模型(MODIS-GPP,EC-LUE和VPM)与位于美国内布拉斯加州米德附近的三个相邻AmeriFlux作物场的涡动协方差测量进行了比较。这些地点的作物轮作制度不同(连续玉米与玉米和每年轮换的大豆)和水管理措施(灌溉与雨养)。结果揭示了估计GPP中的几个主要不确定性,这些不确定性在未来的模型改进中需要充分考虑。首先,与C3物种(大豆)相比,C4作物物种(玉米)显示出更大的光合作用能力。 LUE模型需要针对C3和C4作物物种使用不同的模型参数(即最大的光利用效率),因此,有必要具有准确的物种分布产品才能确定GPP的区域和全球估计。其次,用于远程识别植被冠层吸收的光合有效辐射部分的1 km大小的MODIS fPAR和EVI产品可能无法准确反映玉米和大豆之间物候的差异。这样的错误将在GPP模型中传播,从而降低估计准确性。第三,遥感模型中的水分胁迫变量不能完全表征水的可利用性对植被生产的影响。该分析强调了需要在模型参数,植被指数和水分胁迫输入方面改进LUE模型。 (C)2015 Elsevier B.V.保留所有权利。

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