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Forest water use and water use efficiency at elevated CO2: a model-data intercomparison at two contrasting temperate forest FACE sites

机译:CO2浓度升高时的森林用水和水分利用效率:两个相对温带森林FACE站点的模型数据比对

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Predicted responses of transpiration to elevated atmospheric CO2 concentration (eCO2) are highly variable amongst process-based models. To better understand and constrain this variability amongst models, we conducted an intercomparison of 11 ecosystem models applied to data from two forest free-air CO2 enrichment (FACE) experiments at Duke University and Oak Ridge National Laboratory. We analysed model structures to identify the key underlying assumptions causing differences in model predictions of transpiration and canopy water use efficiency. We then compared the models against data to identify model assumptions that are incorrect or are large sources of uncertainty. We found that model-to-model and model-to-observations differences resulted from four key sets of assumptions, namely (i) the nature of the stomatal response to elevated CO2 (coupling between photosynthesis and stomata was supported by the data); (ii) the roles of the leaf and atmospheric boundary layer (models which assumed multiple conductance terms in series predicted more decoupled fluxes than observed at the broadleaf site); (iii) the treatment of canopy interception (large intermodel variability, 215%); and (iv) the impact of soil moisture stress (process uncertainty in how models limit carbon and water fluxes during moisture stress). Overall, model predictions of the CO2 effect on WUE were reasonable (intermodel =approximately 28%+/- 10%) compared to the observations (=approximately 30%+/- 13%) at the well-coupled coniferous site (Duke), but poor (intermodel =approximately 24%+/- 6%; observations =approximately 38%+/- 7%) at the broadleaf site (Oak Ridge). The study yields a framework for analysing and interpreting model predictions of transpiration responses to eCO2, and highlights key improvements to these types of models.
机译:在基于过程的模型中,蒸腾对大气中二氧化碳浓度升高(eCO2)的预测响应变化很大。为了更好地理解和限制模型之间的这种可变性,我们对11种生态系统模型进行了比较,这些模型应用于杜克大学和橡树岭国家实验室的两次森林自由空气二氧化碳富集(FACE)实验的数据。我们分析了模型结构,以确定导致蒸发量和冠层水分利用效率的模型预测差异的关键基础假设。然后,我们将模型与数据进行比较,以确定不正确或不确定性很大的模型假设。我们发现模型间和模型间观测的差异是由四个关键的假设集合引起的,即:(i)气孔对CO2升高的响应的性质(数据支持光合作用和气孔之间的耦合); (ii)叶片和大气边界层的作用(假设一系列串联电导项的模型预测的解耦通量比在阔叶部位观察到的多); (iii)遮篷的处理(模型间差异较大,为215%); (iv)土壤水分胁迫的影响(模型在水分胁迫期间如何限制碳和水通量的过程不确定性)。总体而言,与耦合良好的针叶林地点(杜克大学)的观测值(=大约30%+ /-13%)相比,模型对CO2对WUE的影响的预测是合理的(模型间=大约28%+ /-10%),但在阔叶部位(橡树岭)较差(模型间=大约24%+ /-6%;观测值=大约38%+ /-7%)。该研究提供了一个框架,用于分析和解释蒸腾对eCO2响应的模型预测,并重点介绍了对这些类型的模型的关键改进。

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