Evaluation and uncertainty analysis of regional-scale CLM4.5 net carbon flux estimates
Modeling net ecosystem exchange (NEE) at the regional scale with land surface models (LSMs) is relevant for the estimation of regional carbon balances, but studies on it are very limited. Furthermore, it is essential to better understand and quantify the uncertainty of LSMs in order to improve t...
Main Authors: | , , , , , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2018-01-01
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Series: | Biogeosciences |
Online Access: | https://www.biogeosciences.net/15/187/2018/bg-15-187-2018.pdf |
Summary: | Modeling net ecosystem exchange (NEE) at the regional scale with land
surface models (LSMs) is relevant for the estimation of regional carbon
balances, but studies on it are very limited. Furthermore, it is essential
to better understand and quantify the uncertainty of LSMs in order to improve
them. An important key variable in this respect is the prognostic leaf area
index (LAI), which is very sensitive to forcing data and strongly affects the
modeled NEE. We applied the Community Land Model (CLM4.5-BGC) to the Rur
catchment in western Germany and compared estimated and default ecological
key parameters for modeling carbon fluxes and LAI. The parameter estimates
were previously estimated with the Markov chain Monte Carlo (MCMC) approach
DREAM<sub>(zs)</sub> for four of the most widespread plant functional types in the
catchment. It was found that the catchment-scale annual NEE was strongly
positive with default parameter values but negative (and closer to
observations) with the estimated values. Thus, the estimation of CLM
parameters with local NEE observations can be highly relevant when
determining regional carbon balances. To obtain a more comprehensive picture
of model uncertainty, CLM ensembles were set up with perturbed meteorological
input and uncertain initial states in addition to uncertain parameters.
C<sub>3</sub> grass and C<sub>3</sub> crops were particularly sensitive to the perturbed
meteorological input, which resulted in a strong increase in the standard
deviation of the annual NEE sum (<i>σ</i><sub> <mo form="infix">∑</mo> NEE</sub>) for the different
ensemble members from ∼ 2 to 3 g C m<sup>−2</sup> yr<sup>−1</sup> (with
uncertain parameters) to ∼ 45 g C m<sup>−2</sup> yr<sup>−1</sup> (C<sub>3</sub> grass)
and ∼ 75 g C m<sup>−2</sup> yr<sup>−1</sup> (C<sub>3</sub> crops) with perturbed
forcings. This increase in uncertainty is related to the impact of the
meteorological forcings on leaf onset and senescence, and enhanced/reduced
drought stress related to perturbation of precipitation. The NEE uncertainty
for the forest plant functional type
(PFT) was considerably lower (<i>σ</i><sub> <mo form="infix">∑</mo> NEE</sub> ∼ 4.0–13.5 g C m<sup>−2</sup> yr<sup>−1</sup> with perturbed parameters,
meteorological forcings and initial states). We conclude that LAI and NEE
uncertainty with CLM is clearly underestimated if uncertain meteorological
forcings and initial states are not taken into account. |
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ISSN: | 1726-4170 1726-4189 |