4.7 Article

Quantifying physical parameterization uncertainties associated with land-atmosphere interactions in the WRF model over Amazon

Journal

ATMOSPHERIC RESEARCH
Volume 262, Issue -, Pages -

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.atmosres.2021.105761

Keywords

Model physical parameterization uncertainty; ANOVA; Tukey's Test; Amazon region; L-A coupling strength

Funding

  1. National Natural Science Foundation of China [41905094, 41991285, 41825020]
  2. Beijing Natural Science Foundation [8204061]
  3. DOE Office of Science Biological and Environmental Research (BER) Atmospheric System Research (ASR) program
  4. U.S. DOE by Battelle Memorial Institute [DE-AC06-76RLO1830]

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The study proposes a framework to reduce model physical parameterization uncertainties related to surface fluxes and land-atmosphere coupling by utilizing an ensemble of WRF simulations over the Amazon region. Results show that different physical processes play varying roles in modulating land-atmosphere interactions, providing insights for improving model physics parameterizations.
The Weather Research and Forecasting (WRF) model can be used to diagnose regional land-atmosphere (L-A) coupling strength in the absence of sufficient observations but subjected to uncertainties associated with model physical parameterizations. In this study, we propose a framework to quantify and reduce model physical parameterization uncertainties associated with surface fluxes and L-A coupling. An ensemble of WRF simulations with different physical schemes is used to simulate surface fluxes and land-atmosphere coupling strength over the Amazon region. The physical parameterizations investigated include cloud microphysics (MP), land surface processes (LSM), planetary boundary layer (PBL), surface layer (SL), and cumulus (CU). We perform 120 ensemble simulations using the WRF model and different combinations of six MPs, three LSMs, six PBLs and SLs and three CUs. The measurements from the GoAMAZON field campaign and satellite data are used to evaluate model performance. A Multi-way analysis of variance (ANOVA) approach is applied to quantify the relative importance of different physics processes on L-A coupling. The Tukey's test is used to sort schemes that have no significant differences into one group. The suite of physics that result in the best simulations of the corresponding variables are selected based on the Taylor skill score. Results show that the relative importance of processes and their interaction vary with the variables of interest. For example, CU was the most important process in modulating soil moisture, 2 m-humidity, latent heat, and net radiation. LSM showed dominant effects on 2 mtemperature and also has the largest impact on sensible heat and the lifting condensation level. The best physical parameterization ensembles show much narrower ranges of the variables of interest than the priori ensemble. Results of this study show the roles of different physical processes in modulating L-A interactions, quantify model uncertainties from physical processes, and provide insights for improving the model physics parameterizations.

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