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首页> 外文期刊>Global change biology >Identification of vegetation and soil carbon pools out of equilibrium in a process model via eddy covariance and biometric constraints.
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Identification of vegetation and soil carbon pools out of equilibrium in a process model via eddy covariance and biometric constraints.

机译:通过涡度协方差和生物识别约束,在过程模型中识别植被和土壤碳库失衡。

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Assumptions of steady-state conditions in biogeochemical modelling are often invoked because knowledge on the development status of the modelling domain is generally unavailable. Here, we investigate the role of vegetation pool sizes on nonequilibrium conditions through model-data integration approaches for a set of sites using eddy covariance CO2 flux data. The study is based on the Carnegie-Ames-Stanford Approach (CASA) model, modified (CASAG) in order to evaluate the sensitivity of simulated net ecosystem production (NEP) fluxes to vegetation pool sizes. The experimental design is based on the inverse model optimization of different parameter vectors performed at the measurement site level. Each parameter vector prescribes different simulation dynamics that embody different model structural assumptions concerning (non)steady-state conditions in vegetation and soil carbon pools. We further explore the potential of assimilating biometric constraints through the cost function for sites where in situ information on aboveground biomass or wood pools is available. The integration of biometric data yields marked improvements in the simulation of vegetation C pools compared to single constraints with eddy flux data. Overall, it is necessary to relax both vegetation and soil carbon pools for consistency with the observed data streams. Multiple constraints approaches also leads to variable model performance among the different experimental setups and model structures. We identify and assess the limitations of various model structures and the role of multiple constraints approaches for tackling issues of equifinality. These studies emphasize the need for establishing consistent data sets of fluxes and biometric data for successful model-data fusion.
机译:由于通常无法获得有关建模领域发展状况的知识,因此经常会引用生物地球化学建模中的稳态条件的假设。在这里,我们通过模型数据集成方法,利用涡度协方差CO 2 通量数据,研究了一组地点的植被池大小在非平衡条件下的作用。这项研究基于修改后的(CASA G )卡内基-艾姆斯-斯坦福方法(CASA)模型,以评估模拟净生态系统生产(NEP)通量对植被库大小的敏感性。实验设计基于在测量站点级别执行的不同参数向量的逆模型优化。每个参数向量都规定了不同的模拟动力学,这些动力学体现了有关植被和土壤碳库中(非)稳态条件的不同模型结构假设。我们将进一步通过成本函数探索可获取有关地上生物量或木材池信息的站点的生物特征约束的潜力。与具有涡流数据的单个约束相比,生物特征数据的集成在植被C池的模拟中显着改善。总体而言,有必要放松植被和土壤碳库,以与观察到的数据流保持一致。多重约束方法还导致不同实验设置和模型结构之间模型性能的变化。我们确定并评估各种模型结构的局限性,以及多种约束方法在解决均等性问题中的作用。这些研究强调需要建立通量和生物特征数据的一致数据集,以成功进行模型数据融合。

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