August 12, 2020
Research Highlight

Toward Optimal Simulation Strategies for Understanding Model Biases and Sensitivities

Researchers carried out a comprehensive evaluation of various nudging methods in the E3SM atmosphere model

a view of the sunset above the clouds from an airplane

Sensitivity experiments performed in the Energy Exascale Earth System Model (E3SM) atmosphere model identify implementations of nudging that can provide sufficient constraints for numerical experiments without severely interfering with the simulations.

Photo by Zoltan Tasi on Unsplash

The Science

For the development and application of numerical weather and climate models, it is often useful to constrain a numerical experiment so that the evolution of the meteorological conditions follows a specific pathway. One of the techniques to apply such constraints is called nudging. A team of scientists led by researchers at the U.S. Department of Energy’s Pacific Northwest National Laboratory performed and analyzed a large set of sensitivity experiments carried out with the Energy Exascale Earth System Model (E3SM) atmosphere model to identify implementations of nudging that can provide sufficient constraints without severely interfering with the simulations.

The Impact

Results show that carefully configured nudging can allow the model to reproduce the characteristic evolution of observed weather events while maintaining the statistical properties of the unconstrained climate simulations. Such nudged simulations can facilitate process-based evaluations of model fidelity and allow for detailed analysis without requiring years of simulation data, thus providing a valuable experimentation strategy for the development of high-resolution models.

Summary

Quantifying, attributing, and reducing biases in global climate models is a very difficult task. Process interactions lead to nonlinear variabilities in the observed and simulated atmospheric states; this causes noise that can hinder signal detection, hide compensating errors, and complicate the comparison between model results and observational data. Constraining the simulated atmospheric circulation using methods like nudging can help alleviate these difficulties, providing an unprecedented opportunity to understand model biases and sensitivities at shorter time scales under specific meteorological conditions. However, if a model is constrained too hard, the simulated long-term mean results might not be representative of its own climate.

In this work, the researchers performed and analyzed sensitivity experiments with the E3SM atmosphere model (EAM) to identify best implementations of nudging that can provide skillful atmospheric hindcasts without severely interfering with the simulations. They showed that when the prescribed meteorological conditions are temporally interpolated to the model time to constrain the EAM's horizontal winds at each time step, a nudged simulation can reproduce the characteristic evolution of the observed weather events (especially in middle and high latitudes) as well as the model's longterm climatology. Compared to its predecessor model used in an earlier study, EAM is not as sensitive to temperature nudging but remains very sensitive to humidity nudging. Constraining humidity substantially improves the correlation between simulated and observed tropical precipitation but also leads to large changes in the longterm statistics of the simulated precipitation, clouds, and aerosol life cycles.

PNNL Contacts

Ruby Leung, Pacific Northwest National Laboratory, Ruby.Leung@pnnl.gov

Hui Wan, Pacific Northwest National Laboratory, hui.wan@pnnl.gov

Kai Zhang, Pacific Northwest National Laboratory, kai.zhang@pnnl.gov

Funding

This research was supported by the Energy Exascale Earth System Model (E3SM) project and the “ACMESM: A Global Climate Model Software Modernization Surge” project, funded by the U.S. Department of Energy (DOE), Office of Science, Office of Biological and Environmental Research (BER). This research used highperformance computing resources from the PNNL Research Computing, the National Energy Research Scientific Computing Center, a DOE Office of Science User Facility supported by the Office of Science of the U.S. Department of Energy, and the Laboratory Computing Resource Center at Argonne National Laboratory, provided by the BER Earth System Modeling program.

Published: August 12, 2020

J. Sun, K. Zhang, H. Wan, P.-L. Ma, Q. Tang, and S. Zhang, “Impact of nudging strategy on the climate representativeness and hindcast skill of constrained EAMv1 simulations.” Journal of Advances in Modeling Earth Systems, 11, 3911– 3933 (2019). DOI: 10.1029/2019MS001831

Research topics