4.5 Article

Optimizing Carbon Cycle Parameters Drastically Improves Terrestrial Biosphere Model Underestimates of Dryland Mean Net CO2 Flux and its Inter-Annual Variability

Journal

Publisher

AMER GEOPHYSICAL UNION
DOI: 10.1029/2021JG006400

Keywords

terrestrial biosphere modeling; drylands; carbon cycle; data assimilation

Funding

  1. U.S. Department of Energy's Office of Science
  2. USDA
  3. U.S. Department of Energy EPSCoR [DE-FG02-08ER46506]
  4. Department of Energy Ameriflux Management Project [7074628]
  5. Sevilleta Long Term Ecological Research site [NSF-DEB LTER 1440478]
  6. North American Carbon Program/USDA CREES NRI [2004-35111-15057, 2008-35101-19076]
  7. Science Foundation Arizona [CAA 0-203-08]
  8. Arizona Water Institute
  9. Mission Research Program, School of Forestry, Northern Arizona University (McIntire-Stennis/Arizona Bureau of Forestry)
  10. Indiana University Prepared for Environmental Change Grand Challenge
  11. NIFA [583681, 2008-35101-19076] Funding Source: Federal RePORTER

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By using a Bayesian data assimilation system and in situ dryland CO2 flux data, this study optimized the parameters of the ORCHIDEE TBM and found that calibration for dryland ecosystems is necessary for accurately simulating their vegetation and biogeochemical processes in order to understand their contributions to global carbon cycle variability and long-term carbon-climate feedbacks.
Drylands occupy similar to 40% of the land surface and are thought to dominate global carbon (C) cycle inter-annual variability (IAV). Therefore, it is imperative that global terrestrial biosphere models (TBMs), which form the land component of IPCC earth system models, are able to accurately simulate dryland vegetation and biogeochemical processes. However, compared to more mesic ecosystems, TBMs have not been widely tested or optimized using in situ dryland CO2 fluxes. Here, we address this gap using a Bayesian data assimilation system and 89 site-years of daily net ecosystem exchange (NEE) data from 12 southwest US Ameriflux sites to optimize the C cycle parameters of the ORCHIDEE TBM. The sites span high elevation forest ecosystems, which are a mean sink of C, and low elevation shrub and grass ecosystems that are either a mean C sink or pivot between an annual C sink and source. We find that using the default (prior) model parameters drastically underestimates both the mean annual NEE at the forested mean C sink sites and the NEE IAV across all sites. Our analysis demonstrated that optimizing phenology parameters are particularly useful in improving the model's ability to capture both the magnitude and sign of the NEE IAV. At the forest sites, optimizing C allocation, respiration, and biomass and soil C turnover parameters reduces the underestimate in simulated mean annual NEE. Our study demonstrates that all TBMs need to be calibrated for dryland ecosystems before they are used to determine dryland contributions to global C cycle variability and long-term carbon-climate feedbacks.

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