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452 NWP 2016
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Major Steps in the Forecast Process Data Collection Quality Control Data Assimilation Model Integration Post Processing of Model Forecasts Human Interpretation (sometimes) Product and graphics generation
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Data Collection Weather is observed throughout the world and the data is distributed in real time. Many types of data and networks, including: –Surface observations from many sources –Radiosondes and radar profilers –Fixed and drifting buoys –Ship observations –Aircraft observations –Satellite soundings –Cloud and water vapor track winds –Radar and satellite imagery
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Observation and Data Collection
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Atmospheric Moisture Vectors
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Weather Satellites Are Now 99% of the Data Assets Used for NWP Geostationary Satellites: Imagery, soundings, cloud and water vapor winds Polar Orbiter Satellites: Imagery, soundings, many wavelengths RO (GPS) satellites Scatterometers Active radars in space (GPM)
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Quality Control Automated algorithms and manual intervention to detect, correct, and remove errors in observed data. Examples: –Range check –Buddy check –Comparison to first guess fields from previous model run –Hydrostatic and vertical consistency checks for soundings. A very important issue for a forecaster--sometimes good data is rejected and vice versa.
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Eta 48 hr SLP Forecast valid 00 UTC 3 March 1999 3 March 1999: Forecast a snowstorm … got a windstorm instead
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Pacific Analysis At 4 PM 18 November 2003 Bad Observation
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Forecaster Involvement A good forecast is on the lookout for NWP systems rejecting bad data, particularly in data sparse areas. Quality control systems can allow models to go off to never never land. Less of a problem today due to satellite data everywhere.
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Objective Analysis/Data Assimilation Observations are scattered in three dimensions Numerical weather models are generally solved on a three-dimensional grid Need to interpolate observations to grid points and to ensure that the various fields are consistent and physically plausible (e.g., most of the atmosphere in hydrostatic and gradient wind balance).
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Objective Analysis Interpolation of observational data to either a grid (most often!) or some basis function (e.g., spectral components) Typically iterative (done in several passes)
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Objective Analysis/Data Assimilation Often starts with a “first guess”, usually the gridded forecast from an earlier run (frequently a run starting 6 hr earlier) This first guess is then modified by the observations. Adjustments are made to insure proper balance. Often iterative
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An early objective analysis scheme is the Cressman scheme
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3DVAR: 3D Variational Data Assimilation Used by the National Weather Service today for the GFS and NAM (called GSI) Tries to create an analysis that minimizes a cost function dependent on the difference between the analysis and (1) first guess and (2) observations Does this at a single time.
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3DVAR Covariances: Spreads Error in Space
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4DVAR: Four Dimension Variational Data Assimilation Tries to optimize analyses at MULTIPLE TIMES Tries to duplicate the observed evolution over time as well as the situation at initialization time. Uses the model itself as a data assimilation too.
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4DVAR Components Full non-linear model Tangent linear version of the full model (linearized version of the forecast model) Adjoint of the tangent linear model -which allows one to integrate the model backwards. Tells sensitivity of final state to the initial state.
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4DVAR Typical runs the model back and forth during an initialization period (6-12 hr), roughly ten times. Substantial computational cost. Need to have adjoint and TL version of the model. Currently used by ECMWF, CMC, UKMET, and US Navy. NOT NCEP.
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Many of the next generation data assimilation approaches are ensemble based Example: the Ensemble Kalman Filter (EnKF)
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Mesoscale Covariances Camano Island Radar|V 950 |-q r covariance 12 Z January 24, 2004
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Surface Pressure Covariance OceanLand
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An Attractive Option: EnKF Temperature observation 3DVAREnKF
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Hybrid Data Assimilation: Now Used in GFS Uses both 3DVAR and EnkF Uses EnkF covariances from GFS ensemble in 3DVAR.
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Next Advance ENVAR Use temporal covariances to spread impact of observations over TIME. Will go operational NEXT WEEK. Has some of the properties of 4DVAR (adjusts model evolution)
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Vertical Coordinates and Nesting
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Vertical Coordinate Systems Originally p and z: but they had a problem…BC when the grid hit terrain! Then eta, sigma p and sigma z, theta Increasingly use of hybrids– e.g., sigma- theta
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Sigma
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Sigma-Theta
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Nesting
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Why Nesting? Could run a model over the whole globe, but that would require large amounts of computational resource, particularly if done at high resolution. Alternative is to only use high resolution where you need it…nesting is one approach. In nesting, a small higher resolution domain is embedded with a larger, lower-resolution domain.
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Nesting Can be one-way or two way. In the future, there will be adaptive nests that will put more resolution where it is needed. And instead of rectangular grids, other shapes can be used.
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Next Generation Global Models Under Development! Will use different geometries
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MPAS: Hexagonal Shapes
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MPAS
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NOAA FIM Model
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Model Integration: Numerical Weather Prediction The initialization is used as the starting point for the atmospheric simulation. Numerical models consist of the basic dynamical equations (“primitive equations”) and physical parameterizations.
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“Primitive” Equations 3 Equations of Motion: Newton’s Second Law First Law of Thermodynamics Conservation of mass Perfect Gas Law Conservation of water With sufficient data for initialization and a mean to integrate these equations, numerical weather prediction is possible. Example: Newton’s Second Law: F = ma
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Major U.S. Models Overview Global Forecast System Model (GFS). Uses spectral representation rather than grids in the horizontal. Global, resolution equivalent to 13 km grid model. Run out to 384 hr, four times per day. Mesoscale Models NMM is the main NWS mesoscale model. They also use WRF-ARW (Advanced Research WRF, Weather Research Forecasting system). WR-ARW is the main mesoscale modeling system system that is used by the NWS and the university/research community. AFWA has run WRF. NMM is run at 12-km grid spacing, four times a day to 84h. Also smaller 4- km nests, single 1.3 km nest.
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Other U.S. Models COAMPS (Navy). The Navy mesoscale model..similar to WRF but coupled to ocean model.
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Major International NWP Centers ECMWF: European Center for Medium- Range Weather Forecasting. The Gold standard. Their global model is considered the best. UK Met Office: An excellent global model similar to GFS Canadian Meteorological Center Other lesser centers
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Global Forecast System (GFS) Model Previous called the Aviation (AVN) and Medium Range Forecast (MRF) models. Spectral global model and 64 levels Relatively primitive microphysics. Sophisticated surface physics and radiation Run four times a day to 384 hr (16 days!). Major increase in skill during past decades derived from using direct satellite radiance in the 3DVAR analysis scheme and other satellite assets. 13 km grid spacing equivalent over the first 10 days of the model forecast and 35 km from 10 to 16 days (384 hours). Thus, it now essentially a global mesoscale model
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GFS Vertical coordinates are hybrid sigma/pressure… sigma at low levels to pressure aloft.
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GFS Data Assimilation (GDAS) Has a later data cut-off time than the mesoscale models…and thus can get a higher percentage of data. Uses much more satellite assets..thus improve global analysis and forecasts. Major gains in southern hemisphere Hybrid Data assimilation based on 3DVAR (called GSI) and GFE ensemble (next slide) Every 6 hr.
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In addition to the high resolution GFS, there is a lower resolution GFS ensemble called GFE 34 km grid space equivalent 20 members Stochastic physics to help produce diversity 16 days
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GFS Hybrid Data Assimilation
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GFS is not the only global model and is not the best
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Higher Resolution Operational Models
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Major U.S. High-Resolution Mesoscale Models (all non-hydrostatic ) WRF-ARW (developed at NCAR) NMM-B (developed at NCEP Environmental Modeling Center) COAMPS (U.S. Navy) MM5 (NCAR, old, replaced by WRF) RAMS (Regional Atmospheric Modeling System, Colorado State) ARPS (Advanced Regional Prediction System): Oklahoma
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Operational Mesoscale Model History in US Early: LFM, NGM (history) Eta (mainly history) MM5: Still used by some, but mainly phased out NMM- Main NWS mesoscale model, updated Eta model. Sometimes called WRF-NMM and NAM. WRF-ARW: Heavily used by research and some operational communities. NMM replaced by NMM-B
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WRF and NMM
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History of WRF model An attempt to create a national mesoscale prediction system to be used by both operational and research communities during 1990s. A new, state-of-the-art model that would have good conservation characteristics (e.g., conservation of mass) and good numerics (so not too much numerical diffusion) A model that could parallelize well on many processors and easy to modify. Plug-compatible physics to foster improvements in model physics. Designed for grid spacings of 1-10 km
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NWS goes its own way ARW (Advanced Research WRF) developed at NCAR Non-hydrostatic Mesoscale Model (NMM) Core developed at NCEP NMM ARW
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The NCAR ARW Core Model: (See: www.wrf-model.org) Terrain following vertical coordinate two-way nesting, any ratio Conserves mass, entropy and scalars using up to 6 th order spatial differencing equ for fluxes. Very good numerics, less implicit smoothing in numerics. NCAR physics package ( converted from MM5 and Eta ), NOAH unified land-surface model, NCEP physics adapted too
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NWS NMM-B 1 —Used in the NAM RUN Run every six hours over N. American and adjacent ocean Run to 84 hours at 12-km grid spacing. Uses the Grid-Point Statistical Interpolation (GSI) data assimilation system (3DVAR) Start with GDAS (GFS analysis) as initial first guess at t-12 hour (the start of the analysis cycle) Runs an intermittent data assimilation cycle every three hours until the initialization time. 1-Non-hydrostatic mesoscale model, NAM: North American Mesoscale run
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NMM-B Hybrid sigma-pressure vertical coordinate 60 levels Betts-Miller-Janjic convective parameterization scheme Mellor-Yamada-Janji boundary layer scheme
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NMM-B Nests One-way nested forecasts computed concurrently with the 12-km NMM-B parent run for –CONUS (4 km to 60 hours) –Alaska (6 km to 60 hours) –Hawaii (3 km to 60 hours) –Puerto Rico (3 km to 60 hours) –For fire weather, moveable 1.33-km CONUS and 1.5-km Alaska nests are also run concurrently (to 36 hours). – Call them HRW-High Resolution Windows A change in horizontal grid from Arakawa- E to Arakawa-B grid, which speeds up computations without degrading the forecast
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NMMB 4-km Conus
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NCEP NAM Generally less skillful than GFS, even over U.S. Generally inferior to WRF-ARW at same resolution (more diffusion and smoothing, worse numerics)
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Navy COAMPS (Coupled Ocean/Atmosphere Mesoscale Prediction System) Sigma-Z Atmosphere And Ocean
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http://www.nrlmry.navy.mil/coa mps-web/web/home
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Accessing NWP Models The department web site (go to weather loops or weather discussion) provides easy access to many model forecasts. The NCEP web site is good place to start for NWS models. http://www.nco.ncep.noaa.gov/pmb/nwprod/analysis/ http://www.nco.ncep.noaa.gov/pmb/nwprod/analysis/ The Department Regional Prediction Page gets to the department regional modeling output. http://www.atmos.washington.edu/mm5rt/
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http://mag.ncep.noaa.gov/
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A Palette of Models Forecasters thus have a palette of model forecasts. They vary by: –Region simulated –Resolution –Model Physics –Data used in the assimilation/initialization process The diversity of models can be a very useful tool to a forecaster.
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Rapid Refresh NWP A Powerful Tool For Nowcasting
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Rapid Refresh (RR). AKA RUC A major issue is how to assimilate and use the rapidly increasing array of off-time or continuous observations (not a 00 and 12 UTC world anymore! Want very good analyses and very good short- term forecasts (1-3-6 hr) The RUC/RR ingests and assimilates data hourly, and then makes short-term forecasts Uses the WRF model…which uses a hybrid sigma/isentropic vertical coordinate Resolution: Rapid Refresh: 13 km and 50 levels, High Resolution Rapid Refresh (3 km)
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Rapid Refresh and HRRR NOAA hourly updated models NCEP Production Suite Review3-4 December 2013Rapid Refresh / HRRR 90 13km Rapid Refresh (RAP) (mesoscale) 3km HRRR (storm-scale) High-Resolution Rapid Refresh Scheduled NCEP Implementation Q3 2014 Version 2 – scheduled NCEP implementation Q2 (currently 28 Jan) RAP HRRR
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Hourly ObservationsRAP 2013 N. Amer Rawinsonde (T,V,RH)120 Profiler – NOAA Network (V)21 Profiler – 915 MHz (V, Tv)25 Radar – VAD (V)125 Radar reflectivity - CONUS1km Lightning (proxy reflectivity)NLDN, GLD360 Aircraft (V,T)2-15K Aircraft - WVSS (RH)0-800 Surface/METAR (T,Td,V,ps,cloud, vis, wx) 2200- 2500 Buoys/ships (V, ps)200-400 GOES AMVs (V)2000- 4000 AMSU/HIRS/MHS radiancesUsed GOES cloud-top press/temp13km GPS – Precipitable water260 WindSat scatterometer2-10K Observations Used
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GSI Hybrid ESRL/GSD RAP 2013 Uses GFS 80-member ensemble Available four times per day valid at 03z, 09z, 15z, 21z GSI Hybrid GSI HM Anx Digital Filter 18 hr fcst GSI Hybrid GSI HM Anx Digital Filter 1 hr fcst GSI HM Anx Digital Filter 18 hr fcst 13z 14z 15z 13 km RAP Cycle 1 hr fcst 80-member GFS EnKF Ensemble forecast valid at 15Z (9-hr fcst from 6Z) 18 hr fcst RAPv2 Hybrid Data Assimilation
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Rapid Refresh: 13 km and larger domain
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High-Resolution Rapid Refresh: 3 km, 1 hr, smaller domain
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http://www.spc.noaa.gov/exper/hrrr/
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RTMA (Real Time Mesoscale Analysis System) NWS Mesoscale Analysis System for verifying model output and human forecasts.
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Real-Time Mesoscale Analysis RTMA Downscales a short-term forecast to fine- resolution terrain and coastlines and then uses observations to produce a fine-resolution analysis. Performs a 2-dimensional variational analysis (2d-var) using current surface observations, including mesonets, and scatterometer winds over water, using short-term forecast as first guess. Provides estimates of the spatially-varying magnitude of analysis errors Also includes hourly Stage II precipitation estimates and Effective Cloud Amount, a GOES derived product Either a 5-km or 2.5 km analysis.
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RTMA The RTMA depends on a short-term model forecast for a first guess, thus the RTMA is affected by the quality of the model's analysis/forecast system CONUS first guess is downscaled from a 1- hour RR forecast. Because the RTMA uses mesonet data, which is of highly variable quality due to variations in sensor siting and sensor maintenance, observation quality control strongly affects the analysis.
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Why does NWS want this? Gridded verification of their gridded forecasts (NDFD) Serve as a mesoscale Analysis of Record (AOR) For mesoscale forecasting and studies.
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107 TX 2 m Temperature Analysis
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