Integrating State Data Assimilation and Innovative Model Parameterization Reduces Simulated Carbon Uptake in the Arctic and Boreal Region

Author:

Huo Xueli12ORCID,Fox Andrew M.34,Dashti Hamid5,Devine Charles1ORCID,Gallery William1,Smith William K.1,Raczka Brett6,Anderson Jeffrey L.6,Rogers Alistair78,Moore David J. P.1ORCID

Affiliation:

1. School of Natural Resources and the Environment University of Arizona Tucson AZ USA

2. Department of Atmospheric Sciences University of Utah Salt Lake City UT USA

3. Global Modeling and Assimilation Office NASA Goddard Space Flight Center Greenbelt MD USA

4. GESTAR‐II Morgan State University Baltimore MD USA

5. Global Change Research Laboratory University of Wisconsin‐Madison Madison WI USA

6. Data Assimilation and Research Section NCAR Boulder CO USA

7. Climate and Ecosystem Sciences Division Lawrence Berkeley National Laboratory Berkeley CA USA

8. Environmental and Climate Sciences Department Brookhaven National Laboratory Upton NY USA

Abstract

AbstractModel representation of carbon uptake and storage is essential for accurate projection of the response of the arctic‐boreal zone to a rapidly changing climate. Land model estimates of LAI and aboveground biomass that can have a marked influence on model projections of carbon uptake and storage vary substantially in the arctic and boreal zone, making it challenging to correctly evaluate model estimates of Gross Primary Productivity (GPP). To understand and correct bias of LAI and aboveground biomass in the Community Land Model (CLM), we assimilated the 8‐day Moderate Resolution Imaging Spectroradiometer (MODIS) LAI observation and a machine learning product of annual aboveground biomass into CLM using an Ensemble Adjustment Kalman Filter (EAKF) in an experimental region including Alaska and Western Canada. Assimilating LAI and aboveground biomass reduced these model estimates by 58% and 72%, respectively. The change of aboveground biomass was consistent with independent estimates of canopy top height at both regional and site levels. The International Land Model Benchmarking system assessment showed that data assimilation significantly improved CLM's performance in simulating the carbon and hydrological cycles, as well as in representing the functional relationships between LAI and other variables. To further reduce the remaining bias in GPP after LAI bias correction, we re‐parameterized CLM to account for low temperature suppression of photosynthesis. The LAI bias corrected model that included the new parameterization showed the best agreement with model benchmarks. Combining data assimilation with model parameterization provides a useful framework to assess photosynthetic processes in LSMs.

Funder

National Aeronautics and Space Administration

Publisher

American Geophysical Union (AGU)

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