Better practices for inferring ecosystem water use strategy from eddy covariance data

IF 5.7 1区 农林科学 Q1 AGRONOMY
Brandon P. Sloan , Xue Feng
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引用次数: 0

Abstract

Eddy covariance data are critical for inferring ecosystem water use strategies. Yet, such inferences are sensitive to a range of assumptions applied across studies, hindering our understanding of water use strategies within and across eddy covariance sites. A recent analysis across 151 FLUXNET2015 and AmeriFlux-FLUXNET datasets found that poor model performance was the key driver of non-robust inferences of ecosystem water use strategies. Here, we leverage this previous analysis to (i) identify the specific assumptions that improve inference model performance across most sites, (ii) explain the mechanisms behind the performance improvements, and (iii) check whether better performance improves water use inference. We find that the common practice of fitting a model to canopy conductance (Gc) derived from the evapotranspiration (ET) observations, rather than to observed ET itself, artificially amplifies data errors and degrades the model performance. Next, accounting for vegetation dynamics by applying a growing season filter or incorporating satellite LAI data improves performance, but the former practice may remove soil water stress periods. Lastly, using the leaf-to-air vapor pressure deficit (VPDl) derived from ET observations as a model input may artificially inflate performance. Based on these results, we recommend selecting observed ET (rather than derived Gc) as the response variable, carefully accounting for vegetation dynamics, and avoiding derived VPDl as a model input; these best practices improve model performance by c. 20% and robustness by c. 80% across all eddy covariance sites. Nevertheless, the performance improvements do not always correspond to more robust inference of water use strategies, as model parameter selection and surface energy budget closure corrections still strongly influence the ecosystem water use parameter estimation in a site-specific manner.
从涡动相关数据推断生态系统用水策略的最佳实践
涡动相关数据是推断生态系统用水策略的关键数据。然而,这样的推断对研究中应用的一系列假设很敏感,阻碍了我们对涡旋相关点内部和之间的用水策略的理解。最近对151个FLUXNET2015和AmeriFlux-FLUXNET数据集的分析发现,糟糕的模型性能是导致生态系统水资源利用策略推断不可靠的关键因素。在这里,我们利用之前的分析来(i)确定在大多数站点中提高推理模型性能的具体假设,(ii)解释性能改进背后的机制,以及(iii)检查更好的性能是否可以提高用水推理。我们发现,将模型拟合到蒸散发(ET)观测值的冠层电导(Gc)而不是观测到的ET本身,人为地放大了数据误差并降低了模型的性能。其次,通过应用生长季节过滤器或结合卫星LAI数据来考虑植被动态可以提高性能,但前一种做法可能会消除土壤水分胁迫期。最后,使用从ET观测得到的叶片对空气的蒸汽压差(VPDl)作为模型输入可能人为地夸大性能。基于这些结果,我们建议选择观测到的ET(而不是推导出的Gc)作为响应变量,仔细考虑植被动态,避免推导出的VPDl作为模型输入;这些最佳实践在所有涡动相关点将模型性能提高了约20%,鲁棒性提高了约80%。然而,由于模型参数选择和地表能量收支关闭修正仍然以特定的方式强烈影响生态系统用水参数估算,因此,性能改进并不总是与更可靠的用水策略推断相对应。
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来源期刊
CiteScore
10.30
自引率
9.70%
发文量
415
审稿时长
69 days
期刊介绍: Agricultural and Forest Meteorology is an international journal for the publication of original articles and reviews on the inter-relationship between meteorology, agriculture, forestry, and natural ecosystems. Emphasis is on basic and applied scientific research relevant to practical problems in the field of plant and soil sciences, ecology and biogeochemistry as affected by weather as well as climate variability and change. Theoretical models should be tested against experimental data. Articles must appeal to an international audience. Special issues devoted to single topics are also published. Typical topics include canopy micrometeorology (e.g. canopy radiation transfer, turbulence near the ground, evapotranspiration, energy balance, fluxes of trace gases), micrometeorological instrumentation (e.g., sensors for trace gases, flux measurement instruments, radiation measurement techniques), aerobiology (e.g. the dispersion of pollen, spores, insects and pesticides), biometeorology (e.g. the effect of weather and climate on plant distribution, crop yield, water-use efficiency, and plant phenology), forest-fire/weather interactions, and feedbacks from vegetation to weather and the climate system.
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