Raczka, B., X. Huo, A. M. Fox, M. Gharamti, R. H. Reichle, D. Hagan, A. Holmes, Y. Sun, L. Kunik, J. Lin, and J. Anderson:
"Improving the Representation of Land Surface Processes using the Data Assimilation Research Testbed (DART)"
Presentation at the AIMES Workshop on Recent Technical Developments in Land Data Assimilation, Online, 2023.

Abstract:
The land surface is a critical part of the Earth system as processes related to water, carbon, energy and nitrogen cycling have important implications for climate forcing, air quality, water availability and seasonal atmospheric forecasting. Despite advances in land surface modeling, land surface model performance is often limited because of errors related to initial and boundary conditions, model structure, and parameters. Data assimilation (DA) techniques combined with an expanding network of Earth system observations present an opportunity to reduce these errors and improve simulations. Here, we emphasize the implementation of tools and approaches to overcome challenges related to land DA to constrain carbon and water cycling. In particular, we discuss the implementation of adaptive inflation to modify ensemble spread in response to time-varying networks of gridded observations. We also discuss methods to generate ensemble spread through boundary condition (meteorology) forcing that can be applied to site-level applications. Next, we describe the application of vertical localization upon surface soil moisture observations, and forward operators specifically designed for the assimilation of snow and solar-induced fluorescence observations. Finally, we discuss the potential benefit of a quantile conserving filter used to update bounded quantities (state or parameter values).


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NASA-GSFC / GMAO / Rolf Reichle