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Estimating diurnal to annual ecosystem parameters by synthesis of a carbon flux model with eddy covariance net ecosystem exchange observations

机译:通过合成具有涡度协方差净生态系统交换观测值的碳通量模型,估算昼夜生态系统参数

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We performed a synthetic analysis of Harvard Forest net ecosystem exchange of CO2 (NEE) time series and a simple ecosystem carbon flux model, the simplified Photosynthesis and Evapo-Transpiration model (SIPNET). SIPNET runs at a half-daily time step, and has two vegetation carbon pools, a single aggregated soil carbon pool, and a simple soil moisture sub-model. We used a stochastic Bayesian parameter estimation technique that provided posterior distributions of the model parameters, conditioned on the observed fluxes and the model equations. In this analysis, we estimated the values of all quantities that govern model behavior, including both rate constants and initial conditions for carbon pools. The purpose of this analysis was not to calibrate the model to make predictions about future fluxes but rather to understand how much information about process controls can be derived directly from the NEE observations. A wavelet decomposition enabled us to assess model performance at multiple time scales from diurnal to decadal. The model parameters are most highly constrained by eddy flux data at daily to seasonal time scales, suggesting that this approach is not useful for calculating annual integrals. However, the ability of the model to fit both the diurnal and seasonal variability patterns in the data simultaneously, using the same parameter set, indicates the effectiveness of this parameter estimation method. Our results quantify the extent to which the eddy covariance data contain information about the ecosystem process parameters represented in the model, and suggest several next steps in model development and observations for improved synthesis of models with flux observations.
机译:我们对哈佛森林净生态系统的CO2交换(NEE)时间序列和简单的生态系统碳通量模型,简化的光合作用和蒸发蒸腾模型(SIPNET)进行了综合分析。 SIPNET每半天运行一次,有两个植被碳库,一个汇总的土壤碳库和一个简单的土壤湿度子模型。我们使用了随机贝叶斯参数估计技术,该技术提供了模型参数的后验分布,其条件是观测到的通量和模型方程式。在此分析中,我们估算了控制模型行为的所有数量的值,包括速率常数和碳库的初始条件。该分析的目的不是要校准模型以对未来的流量做出预测,而是要了解可以直接从NEE观察中获得多少有关过程控制的信息。小波分解使我们能够在从日到年代的多个时间尺度上评估模型性能。在每天到季节性的时间尺度上,模型参数受到涡流数据的最大限制,这表明该方法对计算年度积分没有用。但是,使用相同的参数集,模型能够同时拟合数据中的日变化和季节性变化模式的能力表明了该参数估算方法的有效性。我们的研究结果量化了涡度协方差数据包含有关模型中代表的生态系统过程参数的信息的程度,并提出了模型开发和观察中的几个后续步骤,以改进具有通量观测值的模型的综合。

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