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Improving model parameter estimation using coupling relationships between vegetation production and ecosystem respiration

机译:利用植被产量与生态系统呼吸之间的耦合关系改善模型参数估计

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Data assimilation techniques and inverse analysis have been applied to extract ecological knowledge from ecosystem observations. However, the number of parameters in ecosystem models that can be constrained is limited by conventional inverse analysis. This study aims to increase the number of parameters that can be constrained in parameter inversions by considering the internal relationships among ecosystem processes. Our previous study has reported thermal adaptation of net ecosystem exchange (NEE). Ecosystems tend to transfer from a carbon source to sink when the air temperature exceeds the mean annual temperature, and attain their maximum uptake when the temperature reaches the long-term growing season mean. Because NEE is the difference between gross primary production (GPP) and ecosystem respiration (ER), the adaptation of NEE indirectly indicates the coupling relationship between GPP and ER. Five assimilation experiments were conducted with (1) estimated GPP based on eddy flux measurements, (2) estimated GPP and coupling relationship between GPP and ER, (3) observed NEE measurements, (4) observed NEE measurements and internal relationship between GPP and ER and (5) observed NEE, estimated ER and GPP. The results show that the inversion method, using only estimated GPP based on eddy covariance towers, constrained 4 of 16 parameters in the terrestrial ecosystem carbon model, and the improved method using both GPP data and the internal relationship between GPP and ER allowed us to constrain 10 of 16 parameters. The improved method constrained the parameters for ER without additional ER observations, and accordingly improved the model performance substantially for simulating ER. Overall, our method enhances our ability to extract information from ecosystem observations and potentially reduces uncertainty for simulating carbon dynamics across the regional and global scales.
机译:数据同化技术和反分析已用于从生态系统观测中提取生态知识。然而,生态系统模型中可以约束的参数数量受到常规反分析的限制。这项研究旨在通过考虑生态系统过程之间的内部关系来增加可在参数反演中约束的参数数量。我们先前的研究报告了净生态系统交换(NEE)的热适应。当空气温度超过年平均温度时,生态系统倾向于从碳源转移到碳汇,而当温度达到长期生长季节的平均值时,生态系统将达到最大吸收。由于NEE是初级生产总值(GPP)和生态系统呼吸(ER)之间的差异,因此NEE的适应性间接表明GPP与ER之间存在耦合关系。进行了五次同化实验,其中(1)基于涡流测量值估计GPP,(2)估计GPP和GPP与ER之间的耦合关系,(3)观察到的NEE测量值,(4)观察到的NEE测量值以及GPP和ER之间的内部关系(5)观察到的NEE,估计的ER和GPP。结果表明,仅使用基于涡度协方差塔的估计GPP的反演方法约束了陆地生态系统碳模型中16个参数中的4个,并且使用GPP数据以及GPP与ER之间的内部关系对方法进行了改进,使我们能够进行约束16个参数中的10个。改进的方法在没有其他ER观测值的情况下约束了ER的参数,因此大大提高了用于仿真ER的模型性能。总体而言,我们的方法增强了我们从生态系统观测中提取信息的能力,并潜在地减少了在区域和全球范围内模拟碳动态的不确定性。

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