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Grid Point Models Surface Data
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Models: Types Spectral Models (AVN) Data is not represented on grid
Data represented by wave functions Resolution is a function of # waves used in model Computational errors generally less Not well-suited for mesoscale modeling
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Models: Types Hydrostatic Models (ETA, AVN, NGM)
Cannot produce vertical accelerations Vertical motions determined by the continuity equation Non-Hydrostatic Models (Some MM5) Can produce vertical accelerations Calculate Vertical Motions explicitly Used in mesoscale applications (conv)
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Models: The Basics Domain: Area covered by the model
IDD grids Regional vs. Global Nested models
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Models: The Basics Resolution: Distance between grid points
High and low resolution models
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Models: Resolution
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Model Resolution Should have 5 to 7 grid points to resolve feature
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Model Resolution Should have 5 to 7 grid points to resolve feature
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Models: The Basics What can’t models simulate? How’s a model to cope?
Processes neglected in simplified equations Processes unknown Processes that are sub-grid scale How’s a model to cope?
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Models: The Basics Parameterizations
Model’s attempt to ““simulate”” (incorporate) important sub-grid scale processes Examples: Convection Microphysical processes of precipitation Surface/Boundary layer fluxes
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Model Parameterizations: CONVECTION
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Model Parameterizations: CONVECTION
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Model Parameterizations: CONVECTION
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Model Parameterizations: CONVECTION
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Why are model forecasts imperfect?
Imperfect Initial Conditions Too few observations “Continuous atmosphere = Non-continuous sampling” some areas worse than others Bad observations instrument error Errors in the initialization procedure First guess & objective analysis “GI = GO”
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Imperfect Models: Accurate Ob = Good ob?
Good Observation Or Bad Observation?
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Why are model forecasts imperfect?
Imperfect Models Simplified equations many “unimportant” terms = 0 Neglected Processes that’s why we still have field projects! Resolution can’t simulate small scale stuff ‘good’ ob can be a bad ob
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Trend of Numerical Models
Resolution increasing! Run more frequently! More models! Computer power increasing Cost decreasing
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Trend of Numerical Models
Implications: Higher Resolution Improved initialization More small-scale effects will be predicted! Will these small-scale phenomena be correct? If terrain-forced weather phenomena = YES! Density obs VS. density grid points Heightened sensitivity to initial conditions
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Higher Resolution: Improves Initialization
Good Observation Or Bad Observation? Higher Resolution will help but not solve the problem!
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Model Resolution Should have 5 to 7 grid points to resolve feature
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Higher Resolution: Improves Terrain-forced weather!
Model Terrain vs. Actual Terrain
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Model Terrain ETA 80km ETA 32km ETA 10km Actual terrain
ETA 32km ETA 10km Actual terrain
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Orographic: Differential Heating
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Orographic: Differential Heating
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Density of OBS vs. Grid points
What if grid density (aka. model resolution) exceeds observation density?
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Sensitivity to Initial Conditions
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