Bright Ryan M, Miralles Diego G, Poyatos Rafael, Eisner Stephanie
Department of Forests and Climate Division of Forestry and Forest Resources Norwegian Institute of Bioeconomy Research (NIBIO) Ås Norway.
Hydro-Climate Extremes Lab (H-CEL) Department of the Environment Ghent University Ghent Belgium.
Geophys Res Lett. 2022 Sep 28;49(18):e2022GL100100. doi: 10.1029/2022GL100100. Epub 2022 Sep 19.
Transpiration makes up the bulk of total evaporation in forested environments yet remains challenging to predict at landscape-to-global scales. We harnessed independent estimates of daily transpiration derived from co-located sap flow and eddy-covariance measurement systems and applied the triple collocation technique to evaluate predictions from big leaf models requiring no calibration. In total, four models in 608 unique configurations were evaluated at 21 forested sites spanning a wide diversity of biophysical attributes and environmental backgrounds. We found that simpler models that neither explicitly represented aerodynamic forcing nor canopy conductance achieved higher accuracy and signal-to-noise levels when optimally configured (rRMSE = 20%; = 0.89). Irrespective of model type, optimal configurations were those making use of key plant functional type dependent parameters, daily LAI, and constraints based on atmospheric moisture demand over soil moisture supply. Our findings have implications for more informed water resource management based on hydrological modeling and remote sensing.
在森林环境中,蒸腾作用构成了总蒸发量的大部分,但在景观到全球尺度上进行预测仍然具有挑战性。我们利用了来自共置的液流和涡度相关测量系统的每日蒸腾量的独立估计值,并应用三重配置技术来评估无需校准的大叶模型的预测。总共在21个具有广泛生物物理属性和环境背景的森林站点评估了608种独特配置的四个模型。我们发现,在优化配置时,既没有明确表示空气动力学强迫也没有表示冠层导度的更简单模型实现了更高的准确性和信噪比水平(相对均方根误差 = 20%;相关系数 = 0.89)。无论模型类型如何,最佳配置是那些利用关键植物功能类型相关参数、每日叶面积指数以及基于大气水分需求与土壤水分供应的约束条件的配置。我们的研究结果对基于水文模型和遥感的更明智的水资源管理具有启示意义。