Understanding and Reducing Warm and Dry Summer Biases in the Central United States: Analytical Modeling to Identify the Mechanisms for CMIP Ensemble Error Spread

Author:

Sun Chao12ORCID,Liang Xin-Zhong12

Affiliation:

1. a Department of Atmospheric and Oceanic Science, University of Maryland, College Park, College Park, Maryland

2. b Earth System Science Interdisciplinary Center, University of Maryland, College Park, College Park, Maryland

Abstract

Abstract Most climate models in phase 6 of the Coupled Model Intercomparison Project (CMIP6) still suffer pronounced warm and dry summer biases in the central United States (CUS), even in high-resolution simulations. We found that the cloud base definition in the cumulus parameterization was the dominant factor determining the spread of the biases among models and those defining cloud base at the lifting condensation level (LCL) performed the best. To identify the underlying mechanisms, we developed a physically based analytical bias model (ABM) to capture the key feedback processes of land–atmosphere coupling. The ABM has significant explanatory power, capturing 80% variance of temperature and precipitation biases among all models. Our ABM analysis via counterfactual experiments indicated that the biases are attributed mostly by surface downwelling longwave radiation errors and second by surface net shortwave radiation errors, with the former 2–5 times larger. The effective radiative forcing from these two errors as weighted by their relative contributions induces runaway temperature and precipitation feedbacks, which collaborate to cause CUS summer warm and dry biases. The LCL cumulus reduces the biases through two key mechanisms: it produces more clouds and less precipitable water, which reduce radiative energy input for both surface heating and evapotranspiration to cause a cooler and wetter soil; it produces more rainfall and wetter soil conditions, which suppress the positive evapotranspiration–precipitation feedback to damp the warm and dry bias coupling. Most models using non-LCL schemes underestimate both precipitation and cloud amounts, which amplify the positive feedback to cause significant biases.

Funder

National Science Foundation

U.S. Department of Agriculture

University of Colorado

National Center for Atmospheric Research

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference107 articles.

1. A surface energy perspective on climate change;Andrews, T.,2009

2. Interaction of a cumulus cloud ensemble with the large-scale environment, Part I;Arakawa, A.,1974

3. On the link between summer dry bias over the U.S. Great Plains and seasonal temperature prediction skill in a dynamical forecast system;Ardilouze, C.,2019

4. The importance of scale-dependent groundwater processes in land–atmosphere interactions over the central United States;Barlage, M.,2021

5. Objective calibration of regional climate models: Application over Europe and North America;Bellprat, O.,2016

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