Modeling soil CO<sub>2</sub> production and transport with dynamic source and diffusion terms: testing the steady-state assumption using DETECT v1.0
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Published:2018-05-28
Issue:5
Volume:11
Page:1909-1928
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ISSN:1991-9603
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Container-title:Geoscientific Model Development
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language:en
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Short-container-title:Geosci. Model Dev.
Author:
Ryan Edmund M.ORCID, Ogle Kiona, Kropp Heather, Samuels-Crow Kimberly E., Carrillo Yolima, Pendall EliseORCID
Abstract
Abstract. The flux of CO2 from the soil to the atmosphere (soil respiration,
Rsoil) is a major component of the global carbon (C) cycle.
Methods to measure and model Rsoil, or partition it into
different components, often rely on the assumption that soil CO2
concentrations and fluxes are in steady state, implying that
Rsoil is equal to the rate at which CO2 is produced by soil
microbial and root respiration. Recent research, however, questions the
validity of this assumption. Thus, the aim of this work was two-fold: (1) to
describe a non-steady state (NSS) soil CO2 transport and production
model, DETECT, and (2) to use this model to evaluate the environmental
conditions under which Rsoil and CO2 production are likely
in NSS. The backbone of DETECT is a non-homogeneous, partial differential
equation (PDE) that describes production and transport of soil CO2,
which we solve numerically at fine spatial and temporal resolution (e.g.,
0.01 m increments down to 1 m, every 6 h). Production of soil CO2 is
simulated for every depth and time increment as the sum of root respiration
and microbial decomposition of soil organic matter. Both of these factors can
be driven by current and antecedent soil water content and temperature, which
can also vary by time and depth. We also analytically solved the ordinary
differential equation (ODE) corresponding to the steady-state (SS) solution
to the PDE model. We applied the DETECT NSS and SS models to the six-month
growing season period representative of a native grassland in Wyoming.
Simulation experiments were conducted with both model versions to evaluate
factors that could affect departure from SS, such as (1) varying soil
texture; (2) shifting the timing or frequency of precipitation; and (3) with
and without the environmental antecedent drivers. For a coarse-textured soil,
Rsoil from the SS model closely matched that of the NSS model.
However, in a fine-textured (clay) soil, growing season Rsoil was
∼ 3 % higher under the assumption of NSS (versus SS). These
differences were exaggerated in clay soil at daily time scales whereby
Rsoil under the SS assumption deviated from NSS by up to 35 % on average in the 10 days
following a major precipitation event. Incorporation of antecedent drivers
increased the magnitude of Rsoil by 15 to 37 % for coarse- and
fine-textured soils, respectively. However, the responses of
Rsoil to the timing of precipitation and antecedent drivers did
not differ between SS and NSS assumptions. In summary, the assumption of SS
conditions can be violated depending on soil type and soil moisture status,
as affected by precipitation inputs. The DETECT model provides a framework
for accommodating NSS conditions to better predict Rsoil and
associated soil carbon cycling processes.
Funder
Agricultural Research Service Office of Science National Science Foundation
Publisher
Copernicus GmbH
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