Accuracies of field CO2–H2O data from open-path eddy-covariance flux systems: assessment based on atmospheric physics and biological environment
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Published:2022-10-21
Issue:2
Volume:11
Page:335-357
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ISSN:2193-0864
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Container-title:Geoscientific Instrumentation, Methods and Data Systems
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language:en
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Short-container-title:Geosci. Instrum. Method. Data Syst.
Author:
Zhou Xinhua, Gao TianORCID, Zheng NingORCID, Yang Bai, Li Yanlei, Yu Fengyuan, Awada Tala, Zhu Jiaojun
Abstract
Abstract. Ecosystem CO2–H2O data measured by infrared
gas analyzers in open-path eddy-covariance (OPEC) systems have numerous
applications, such as estimations of CO2 and H2O fluxes in the
atmospheric boundary layer. To assess the applicability of the data for
these estimations, data uncertainties from analyzer measurements are needed.
The uncertainties are sourced from the analyzers in zero drift, gain drift,
cross-sensitivity, and precision variability. These four uncertainty sources
are individually specified for analyzer performance, but so far no methodology
exists yet to combine these individual sources into a composite uncertainty
for the specification of an overall accuracy, which is ultimately needed.
Using the methodology for closed-path eddy-covariance systems, this overall
accuracy for OPEC systems is determined from all individual uncertainties
via an accuracy model and further formulated into CO2 and H2O
accuracy equations. Based on atmospheric physics and the biological
environment, for EC150 infrared CO2–H2O analyzers, these
equations are used to evaluate CO2 accuracy (±1.22 mgCO2 m−3, relatively ±0.19 %) and H2O accuracy (±0.10 gH2O m−3, relatively ±0.18 % in saturated air at 35 ∘C and 101.325 kPa). Both accuracies are applied to conceptual
models addressing their roles in uncertainty analyses for CO2 and
H2O fluxes. For the high-frequency air temperature derived from
H2O density along with sonic temperature and atmospheric pressure, the
role of H2O accuracy in its uncertainty is similarly addressed. Among
the four uncertainty sources, cross-sensitivity and precision variability
are minor, although unavoidable, uncertainties, whereas zero drift and gain
drift are major uncertainties but are minimizable via corresponding zero and
span procedures during field maintenance. The accuracy equations provide
rationales to assess and guide the procedures. For the atmospheric
background CO2 concentration, CO2 zero and CO2 span
procedures can narrow the CO2 accuracy range by 40 %, from ±1.22 to ±0.72 mgCO2 m−3. In hot and humid weather, H2O
gain drift potentially adds more to the H2O measurement uncertainty,
which requires more attention. If H2O zero and H2O span procedures
can be performed practically from 5 to 35 ∘C, the H2O
accuracy can be improved by at least 30 %: from ±0.10 to ±0.07 gH2O m−3. Under freezing conditions, the H2O span
procedure is impractical but can be neglected because of its trivial
contributions to the overall uncertainty. However, the zero procedure for
H2O, along with CO2, is imperative as an operational and efficient
option under these conditions to minimize H2O measurement uncertainty.
Publisher
Copernicus GmbH
Subject
Atmospheric Science,Geology,Oceanography
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