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首页> 外文期刊>Biogeosciences >Constraining a global ecosystem model with multi-site eddy-covariance data
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Constraining a global ecosystem model with multi-site eddy-covariance data

机译:用多站点涡动协方差数据约束全球生态系统模型

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摘要

Assimilation of in situ and satellite data in mechanistic terrestrial ecosystem models helps to constrain critical model parameters and reduce uncertainties in the simulated energy, water and carbon fluxes. So far the assimilation of eddy covariance measurements from flux-tower sites has been conducted mostly for individual sites ("single-site" optimization). Here we develop a variational data assimilation system to optimize 21 parameters of the ORCHIDEE biogeochemical model, using net CO _2 flux (NEE) and latent heat flux (LE) measurements from 12 temperate deciduous broadleaf forest sites. We assess the potential of the model to simulate, with a single set of inverted parameters, the carbon and water fluxes at these 12 sites. We compare the fluxes obtained from this "multi-site" (MS) optimization to those of the prior model, and of the "single-site" (SS) optimizations. The model-data fit analysis shows that the MS approach decreases the daily root-mean-square difference (RMS) to observed data by 22%, which is close to the SS optimizations (25% on average). We also show that the MS approach distinctively improves the simulation of the ecosystem respiration (R _(eco)), and to a lesser extent the gross primary productivity (GPP), although we only assimilated net CO _2 flux. A process-oriented parameter analysis indicates that the MS inversion system finds a unique combination of parameters which is not the simple average of the different SS sets of parameters. Finally, in an attempt to validate the optimized model against independent data, we observe that global-scale simulations with MS optimized parameters show an enhanced phase agreement between modeled leaf area index (LAI) and satellite-based observations of normalized difference vegetation index (NDVI).
机译:在机械地球生态系统模型中对原位和卫星数据进行同化有助于限制关键模型参数并减少模拟的能量,水和碳通量的不确定性。到目前为止,通量塔位置的涡动协方差测量的同化主要是针对单个位置进行的(“单位置”优化)。在这里,我们使用12个温带落叶阔叶林站点的净CO _2通量(NEE)和潜热通量(LE)测量值,开发了一种变分数据同化系统,以优化ORCHIDEE生物地球化学模型的21个参数。我们评估模型的潜力,用一组反向参数模拟这12个地点的碳通量和水通量。我们将通过这种“多站点”(MS)优化获得的通量与现有模型和“单站点”(SS)优化的通量进行比较。模型数据拟合分析表明,MS方法将观测数据的每日均方根差(RMS)降低了22%,接近SS优化(平均25%)。我们还表明,尽管我们仅吸收了净CO _2通量,但MS方法显着改善了生态系统呼吸(R _(eco))的仿真,并在较小程度上提高了总初级生产力(GPP)。面向过程的参数分析表明,MS反演系统找到了唯一的参数组合,而不是不同SS参数集的简单平均值。最后,为了验证针对独立数据的优化模型,我们观察到使用MS优化参数进行的全球规模模拟显示,模型叶面积指数(LAI)与基于卫星的归一化差异植被指数(NDVI)观测值之间具有增强的相位一致性。 )。

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