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Improved estimate of global gross primary production for reproducing its long-term variation, 1982–2017

机译:改善了全球初级生产的估计,以便再现其长期变异,1982 - 2017年

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Satellite-based models have been widely used to simulate vegetation gross primary production (GPP) at the site, regional, or global scales in recent years. However, accurately reproducing the interannual variations in GPP remains a major challenge, and the long-term changes in GPP remain highly uncertain. In this study, we generated a long-term global GPP dataset at 0.05? latitude by 0.05? longitude and 8 d interval by revising a light use efficiency model (i.e., EC-LUE model). In the revised EC-LUE model, we integrated the regulations of several major environmental variables: atmospheric CO2 concentration, radiation components, and atmospheric vapor pressure deficit (VPD). These environmental variables showed substantial long-term changes, which could greatly impact the global vegetation productivity. Eddy covariance (EC) measurements at 95 towers from the FLUXNET2015 dataset, covering nine major ecosystem types around the globe, were used to calibrate and validate the model. In general, the revised EC-LUE model could effectively reproduce the spatial, seasonal, and annual variations in the tower-estimated GPP at most sites. The revised EC-LUE model could explain 71 % of the spatial variations in annual GPP over 95 sites. At more than 95 % of the sites, the correlation coefficients (R 2 ) of seasonal changes between tower-estimated and model-simulated GPP are larger than 0.5. Particularly, the revised EC-LUE model improved the model performance in reproducing the interannual variations in GPP, and the averaged R 2 between annual mean tower-estimated and model-simulated GPP is 0.44 over all 55 sites with observations longer than 5 years, which is significantly higher than those of the original EC-LUE model (R 2 = 0.36) and other LUE models (R 2 ranged from 0.06 to 0.30 with an average value of 0.16). At the global scale, GPP derived from light use efficiency models, machine learning models, and processbased biophysical models shows substantial differences in magnitude and interannual variations. The revised EC-LUE model quantified the mean global GPP from 1982 to 2017 as 106.2 ± 2.9 Pg C yr?1 with the trend 0.15 Pg C yr?1 . Sensitivity analysis indicated that GPP simulated by the revised EC-LUE model was sensitive to atmospheric CO2 concentration, VPD, and radiation. Over the period of 1982–2017, the CO2 fertilization effecton the global GPP (0.22 ± 0.07 Pg C yr?1) could be partly offset by increased VPD (?0.17 ± 0.06 Pg C yr?1).The long-term changes in the environmental variables could be well reflected in global GPP. Overall, the revisedEC-LUE model is able to provide a reliable long-term estimate of global GPP. The GPP dataset is available athttps://doi.org/10.6084/m9.figshare.8942336.v3 (Zheng et al., 2019).
机译:卫星的模型已被广泛用于在近年来在现场,区域或全球尺度的植被总生产(GPP)模拟。然而,准确地再现GPP的续集变化仍然是一个重大挑战,GPP的长期变化仍然非常不确定。在这项研究中,我们在0.05中生成了长期全球GPP数据集?纬度0.05?经度和8 d间隔通过修改轻使用效率模型(即Ec-Lue模型)。在修订的EC Lue模型中,我们综合了几种主要环境变量的规定:大气二氧化碳浓度,辐射分量和大气蒸气压缺损(VPD)。这些环境变量显示出大量的长期变化,这可能会影响全球植被生产率。来自FluxNet2015数据集的95座塔的EDDY协方差(EC)测量,覆盖全球九种主要生态系统类型,用于校准并验证模型。通常,修订后的EC-Lue模型可以在大多数地点有效地重现塔估计的GPP的空间,季节和年度变化。修订后的EC-Lue模型可以在95个网站上解释每年GPP的空间变化的71%。在超过95%的位点,塔估计和模型模拟GPP之间的季节变化的相关系数(R 2)大于0.5。特别是,修订的EC-Lue模型改善了在再现GPP的续集变化方面的模型性能,并且年平均塔估计和模型模拟GPP之间的平均R 2在所有55个站点超过5年的所有55个站点上,其中显着高于原始EC-LUE模型(R 2 = 0.36)和其他LUE模型(R 2的范围为0.06至0.30,平均值为0.16)。在全球范围内,GPP来自光使用效率模型,机器学习模型和流行的生物物理模型的幅度和依赖性变化的实质性差异。修订后的EC-LUE模型量化了1982年至2017年的平均全球GPP,为106.2±2.9 pg C YR?1,趋势0.15 pg C YR?1。灵敏度分析表明,经修订的EC-LUE模型模拟的GPP对大气CO 2浓度,VPD和辐射敏感。在1982 - 2017年期间,二氧化碳施肥效应子全局GPP(0.22±0.07 pg C YRα1)可以通过增加的VPD(?0.17±0.06 pg C YRα1)部分偏移。长期变化环境变量可能会在全球GPP中反映。总的来说,Revisedec-Lue模型能够提供全球GPP的可靠长期估计。可提供GPP数据集Athttps://doi.org/10.6084/m9.figshare.8942336.v3(Zheng等,2019)。

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