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Relative Linkages of Canopy-Level CO_2 Fluxes with the Climatic and Environmental Variables for US Deciduous Forests

机译:美国落叶林冠层水平CO_2通量与气候和环境变量的相对联系

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We used a simple, systematic data-analytics approach to determine the relative linkages of different climate and environmental variables with the canopy-level, half-hourly CO_2 fluxes of US deciduous forests. Multi-variate pattern recognition techniques of principal component and factor analyses were utilized to classify and group climatic, environmental, and ecological variables based on their similarity as drivers, examining their interrelation patterns at different sites. Explanatory partial least squares regression models were developed to estimate the relative linkages of CO_2 fluxes with the climatic and environmental variables. Three biophysical process components adequately described the system-data variances. The 'radiation-energy' component had the strongest linkage with CO_2 fluxes, whereas the 'aerodynamic' and 'temperature-hydrology' components were low to moderately linked with the carbon fluxes. On average, the 'radiation-energy' component showed 5 and 8 times stronger carbon flux linkages than that of the 'temperature-hydrology' and 'aerodynamic' components, respectively. The similarity of observed patterns among different study sites (representing gradients in climate, canopy heights and soil-formations) indicates that the findings are potentially transferable to other deciduous forests. The similarities also highlight the scope of developing parsimonious data-driven models to predict the potential sequestration of ecosystem carbon under a changing climate and environment. The presented data-analytics provides an objective, empirical foundation to obtain crucial mechanistic insights; complementing process-based model building with a warranted complexity. Model efficiency and accuracy (R~2 = 0.55-0.81; ratio of root-mean-square error to the observed standard deviations, RSR = 0.44-0.67) reiterate the usefulness of multivariate analytics models for gap-filling of instantaneous flux data.
机译:我们使用一种简单,系统的数据分析方法来确定不同气候和环境变量与美国落叶林冠层水平半小时CO_2通量的相对联系。利用主成分和因子分析的多变量模式识别技术,基于它们作为驱动因素的相似性,对气候,环境和生态变量进行分类和分组,并检查它们在不同地点的相互关系。建立了解释性偏最小二乘回归模型,以估计CO_2通量与气候和环境变量的相对联系。三个生物物理过程组成部分充分描述了系统数据的差异。 “辐射能”成分与CO_2通量之间的联系最强,而“空气动力学”和“温度-水文学”成分与碳通量之间的联系程度较低或中等。平均而言,“辐射能”成分的碳通量链比“温度-水文学”和“空气动力学”成分的碳通量键强分别高5倍和8倍。不同研究地点之间观察到的模式的相似性(代表气候,冠层高度和土壤形成的梯度)表明,这些发现有可能转移到其他落叶林中。相似之处也突出了开发简约的数据驱动模型的范围,以预测在不断变化的气候和环境下生态系统碳的潜在隔离。提出的数据分析为获得关键的机械见解提供了客观的经验基础。保证了基于流程的模型构建的复杂性。模型的效率和准确性(R〜2 = 0.55-0.81;均方根误差与所观察到的标准偏差之比,RSR = 0.44-0.67)重申了多变量分析模型对瞬时通量数据的填补的有效性。

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