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Effect of spatial sampling from European flux towers for estimating carbon and water fluxes with artificial neural networks

机译:欧洲通量塔空间采样对人工神经网络估算碳通量和水通量的影响

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摘要

Empirical modeling approaches are frequently used to upscale local eddy covariance observations of carbon, water, and energy fluxes to regional and global scales. The predictive capacity of such models largely depends on the data used for parameterization and identification of input-output relationships, while prediction for conditions outside the training domain is generally uncertain. In this work, artificial neural networks (ANNs) were used for the prediction of gross primary production (GPP) and latent heat flux (LE) on local and European scales with the aim to assess the portion of uncertainties in extrapolation due to sample selection. ANNs were found to be a useful tool for GPP and LE prediction, in particular for extrapolation in time (mean absolute error MAE for GPP between 0.53 and 1.56 gC m−2 d−1). Extrapolation in space in similar climatic and vegetation conditions also gave good results (GPP MAE 0.7–1.41 gC m−2 d−1), while extrapolation in areas with different seasonal cycles and controlling factors (e.g., the tropical regions) showed noticeably higher errors (GPP MAE 0.8–2.09 gC m−2 d−1). The distribution and the number of sites used for ANN training had a remarkable effect on prediction uncertainty in both, regional GPP and LE budgets and their interannual variability. Results obtained show that for ANN upscaling for continents with relatively small networks of sites, the error due to the sampling can be large and needs to be considered and quantified. The analysis of the spatial variability of the uncertainty helped to identify the meteorological drivers driving the uncertainty.
机译:经验建模方法经常用于将碳,水和能量通量的局部涡动协方差观测值提升到区域和全球尺度。这种模型的预测能力在很大程度上取决于用于参数化和识别输入-输出关系的数据,而对于训练域之外的条件的预测通常是不确定的。在这项工作中,人工神经网络(ANN)用于在本地和欧洲规模上预测总初级生产量(GPP)和潜热通量(LE),目的是评估由于样本选择而导致的外推不确定性部分。发现神经网络是用于GPP和LE预测的有用工具,特别是对于时间外推(GPP的平均绝对误差MAE在0.53和1.56 1.5gC m-2 d-1之间)。在类似的气候和植被条件下进行空间外推也得出了很好的结果(GPP MAE 0.7–1.41 gC m-2 d-1),而在具有不同季节周期和控制因素的区域(例如热带地区)进行外推显示出明显更高的误差(GPP MAE 0.8–2.09 gC m-2 d-1)。用于ANN训练的站点的分布和数量对区域GPP和LE预算中的预测不确定性及其年际变化具有显着影响。获得的结果表明,对于站点网络相对较小的大洲的ANN升频,由于采样引起的误差可能很大,需要加以考虑和量化。对不确定性的空间变异性的分析有助于确定驱动不确定性的气象驱动因素。

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