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Evaluation of Land–Atmosphere Coupling Processes and Climatological Bias in the UFS Global Coupled Model
by
Dirmeyer, Paul A.
, Barlage, Michael
, Ek, Michael
, Wei, Heiln
, Seo, Eunkyo
in
Air temperature
/ Atmosphere
/ Bias
/ Climate
/ Coupling
/ Energy limitation
/ Fluxes
/ Forecast errors
/ Forecasting models
/ Initial conditions
/ Land surface models
/ Moisture content
/ Physics
/ Precipitation
/ Prototypes
/ Radiation
/ Soil moisture
/ Soil surfaces
/ Surface fluxes
/ Surface temperature
/ Surface-air temperature relationships
/ Tower observations
/ Vegetation
2024
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Evaluation of Land–Atmosphere Coupling Processes and Climatological Bias in the UFS Global Coupled Model
by
Dirmeyer, Paul A.
, Barlage, Michael
, Ek, Michael
, Wei, Heiln
, Seo, Eunkyo
in
Air temperature
/ Atmosphere
/ Bias
/ Climate
/ Coupling
/ Energy limitation
/ Fluxes
/ Forecast errors
/ Forecasting models
/ Initial conditions
/ Land surface models
/ Moisture content
/ Physics
/ Precipitation
/ Prototypes
/ Radiation
/ Soil moisture
/ Soil surfaces
/ Surface fluxes
/ Surface temperature
/ Surface-air temperature relationships
/ Tower observations
/ Vegetation
2024
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Do you wish to request the book?
Evaluation of Land–Atmosphere Coupling Processes and Climatological Bias in the UFS Global Coupled Model
by
Dirmeyer, Paul A.
, Barlage, Michael
, Ek, Michael
, Wei, Heiln
, Seo, Eunkyo
in
Air temperature
/ Atmosphere
/ Bias
/ Climate
/ Coupling
/ Energy limitation
/ Fluxes
/ Forecast errors
/ Forecasting models
/ Initial conditions
/ Land surface models
/ Moisture content
/ Physics
/ Precipitation
/ Prototypes
/ Radiation
/ Soil moisture
/ Soil surfaces
/ Surface fluxes
/ Surface temperature
/ Surface-air temperature relationships
/ Tower observations
/ Vegetation
2024
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Evaluation of Land–Atmosphere Coupling Processes and Climatological Bias in the UFS Global Coupled Model
Journal Article
Evaluation of Land–Atmosphere Coupling Processes and Climatological Bias in the UFS Global Coupled Model
2024
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Overview
This study investigates the performance of the latter NCEP Unified Forecast System (UFS) Coupled Model prototype simulations (P5–P8) during boreal summer 2011–17 in regard to coupled land–atmosphere processes and their effect on model bias. Major land physics updates were implemented during the course of model development. Namely, the Noah land surface model was replaced with Noah-MP and the global vegetation dataset was updated starting with P7. These changes occurred along with many other UFS improvements. This study investigates UFS’s ability to simulate observed surface conditions in 35-day predictions based on the fidelity of model land surface processes. Several land surface states and fluxes are evaluated against flux tower observations across the globe, and segmented coupling processes are also diagnosed using process-based multivariate metrics. Near-surface meteorological variables generally improve, especially surface air temperature, and the land–atmosphere coupling metrics better represent the observed covariance between surface soil moisture and surface fluxes of moisture and radiation. Moreover, this study finds that temperature biases over the contiguous United States are connected to the model’s ability to simulate the different balances of coupled processes between water-limited and energy-limited regions. Sensitivity to land initial conditions is also implicated as a source of forecast error. Above all, this study presents a blueprint for the validation of coupled land–atmosphere behavior in forecast models, which is a crucial model development task to assure forecast fidelity from day one through subseasonal time scales.
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