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Global patterns of land-atmosphere fluxes of carbon dioxide, latent heat, and sensible heat derived from eddy covariance, satellite, and meteorological observations

机译:来自涡动协方差,卫星和气象观测的二氧化碳,潜热和敏感热的陆地 - 大气通量的全球模式

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摘要

We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale using the machine learning technique, model tree ensembles (MTE). We trained MTE to predict site-level gross primary productivity (GPP), terrestrial ecosystem respiration (TER), net ecosystem exchange (NEE), latent energy (LE), and sensible heat (H) based on remote sensing indices, climate and meteorological data, and information on land use. We applied the trained MTEs to generate global flux fields at a 0.5 degrees x 0.5 degrees spatial resolution and a monthly temporal resolution from 1982 to 2008. Cross-validation analyses revealed good performance of MTE in predicting among-site flux variability with modeling efficiencies (MEf) between 0.64 and 0.84, except for NEE (MEf = 0.32). Performance was also good for predicting seasonal patterns (MEf between 0.84 and 0.89, except for NEE (0.64)). By comparison, predictions of monthly anomalies were not as strong (MEf between 0.29 and 0.52). Improved accounting of disturbance and lagged environmental effects, along with improved characterization of errors in the training data set, would contribute most to further reducing uncertainties. Our global estimates of LE (158 +/- 7 J x 10(18) yr(-1)), H (164 +/- 15 J x 10(18) yr(-1)), and GPP (119 +/- 6 Pg C yr(-1)) were similar to independent estimates. Our global TER estimate (96 +/- 6 Pg C yr(-1)) was likely underestimated by 5-10%. Hot spot regions of interannual variability in carbon fluxes occurred in semiarid to semihumid regions and were controlled by moisture supply. Overall, GPP was more important to interannual variability in NEE than TER. Our empirically derived fluxes may be used for calibration and evaluation of land surface process models and for exploratory and diagnostic assessments of the biosphere.
机译:我们使用机器学习技术,模型树集成(MTE)将FLUXNET对二氧化碳,水和能量通量的观测值扩大到了全球范围。我们对MTE进行了培训,以根据遥感指数,气候和气象来预测站点一级的总初级生产力(GPP),陆地生态系统呼吸(TER),净生态系统交换(NEE),潜能(LE)和显热(H)。数据和土地使用信息。我们应用训练有素的MTE在1982年至2008年期间以0.5度x 0.5度的空间分辨率和每月的时间分辨率生成全局通量场。交叉验证分析显示,MTE在通过建模效率(MEf )介于0.64和0.84之间,但NEE(MEf = 0.32)除外。该性能还可以很好地预测季节模式(MEf在0.84至0.89之间,NEE(0.64)除外)。相比之下,对月度异常的预测并不那么强(MEf在0.29至0.52之间)。改进对干扰和滞后环境影响的解释,以及改进训练数据集中的错误特征,将最大有助于进一步减少不确定性。我们对LE(158 +/- 7 J x 10(18)yr(-1)),H(164 +/- 15 J x 10(18)yr(-1))和GPP(119 + / -6 Pg C yr(-1))与独立估计相似。我们的全球TER估计值(96 +/- 6 Pg C yr(-1))可能被低估了5-10%。碳通量年际变化的热点区域发生在半干旱至半湿润地区,并受水分供应的控制。总体而言,GPP对NEE的年际变化比TER更重要。我们根据经验得出的通量可用于陆地表面过程模型的校准和评估,以及对生物圈的探索性和诊断性评估。

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