Rapid Refresh Review – Hourly Updated Models NCEP Production Suite Review - 2011 NOAA/ESRL/GSD/AMB Stan Benjamin Steve Weygandt Ming Hu / Tanya Smirnova.

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Rapid Refresh Review – Hourly Updated Models NCEP Production Suite Review NOAA/ESRL/GSD/AMB Stan Benjamin Steve Weygandt Ming Hu / Tanya Smirnova Curtis Alexander / John M. Brown David Dowell / Joe Olson Bill Moninger / Haidao Lin Georg Grell/ David Dowell Patrick Hofmann / Eric James Tracy Smith/ Susan Sahm NCEP – Geoff Manikin, Geoff DiMego, Dennis Keyser, Julia Zhu, Xiaoxue Wang, EMC and NCO Wed 7 Dec 2011 Major topics: Rapid Refresh NCEP implementation planned 24 Jan 11 significant improvement over RUC major improvements in testing at ESRL for Rapid Refresh 2 (satellite, cloud, soil assimilation, WRFv3.3.1+) 3km April parent assimilation switched to ESRL Rapid Refresh from ESRL-RUC 2012 – improved surface/soil/cloud assimilation in ESRL-Rapid Refresh, upper boundary, revised radar assim

Hourly Updated NOAA NWP Models 13km Rapid Refresh 13km RUC RUC – current oper model, new 18h fcst every hour Rapid Refresh (RR) replaces RUC at NCEP WRF, GSI with RUC features

3 RUC Becomes Rapid Refresh RUC  Non-WRF RUC model  RUC 3DVAR analysis  24/Day = hourly update  Forecasts to 18 hours  13 km horizontal Rapid Refresh  WRF-based ARW  GSI analysis  Expanded 13 km Domain  ~2.8 times bigger  Includes Alaska  Experimental 3 km HRRR runs ONLY at ESRL currently RUC-13 CONUS domain Rapid Refresh domain RUC domain

Outline  Model description for Rapid Refresh  Data assimilation description for RR (RAP)  Output from RAP (grids, Unipost mods, RTMA, BUFR)  Partial cycling for Rapid Refresh, SST, land-surface grids  Verification statistics for RAP vs. RUC

WRF model enhancements for Rapid Refresh  WRF - ARW - v for initial RR  WRF v3.3 issued too late in April 2011 – NCEP code freeze  Benefited from ongoing community improvements to WRF  GSD improvements –  Digital filter initialization (DFI - allows quiet 1h forecasts)  DFI-radar  Grell 3-d cumulus  RUC LSM (now with snow LSM cycling on sea ice)  Use of rotated lat-lon grid - GSD was first to use ARW with RLL

NOAA Hourly Models ModelDomain Grid Points Projection Grid Spacing Vertical Levels Vertical Coordinate Height of Lowest Level Pressure Top RUCCONUS 451 x 337 Lambert conformal 13 km50 Sigma/ Isentropic 5 m hPa (500K) RAP North America 758 x 567 Rotated lat/lon 13 km50Sigma8 m10 hPa ModelRun at:Time-Step Forecast Length Initialized Boundary Conditions Run Time RUC NCEP oper 18 s18 hrs Hourly (cycled) NAM~25 min RAPGSD, EMC60 s18 hrs Hourly (cycled) GFS~25 min

Model physics comparison model Shortwave Radiation Cloud physics (# hydrometeor types) Cumulus parm Boundary layer (PBL) Shallow cumulus Land- surface model GFSRRTM Zhao-Carr (1) Simplified Arakawa- Schubert MRF – Troen- Mahrt Jongil Han Noah NAMGoddard Ferrier (1)Betts- Miller- Janjic Mellor- Yamada- Janjic BMJNoah RUCDudhia Thompson moment rain (4) Grell- Devenyi Burk- Thompson noneRUC (2003) Rapid Refres h Goddard Thompson – 2- moment rain (5) Grell-3DMellor- Yamada- Janjic GrellRUC – from WRFv3.3 7

Rapid Refresh GSI-based Hourly Assimilation Cycle Time (UTC) 1-hr fcst Background Fields Analysis Fields 1-hr fcst GSI Obs 1-hr fcst GSI Obs Cycle hydrometeor, soil temp/moisture/snow Hourly obs Data Type ~Number/hr Rawinsonde (12h) 120 NOAA profilers 21 VAD winds ~125 PBL – profiler/RASS ~25 Aircraft (V,temp) 2K-15K(avg 7K) WVSS (RH) 0-800(avg 520) Surface/METAR ~2500 Buoy/ship GOES cloud winds GOES cloud-top pres 10 km res GPS precip water ~260 Mesonet (temp, dpt) ~8000 (RRv2) Mesonet (wind) ~4000 (RRv2) METAR-cloud-vis-wx ~2000 AMSU-A/B/HIRS/etc. radiances GOES radiances - in testing – RRv2 Radar reflectivity 1km Lightning (proxy refl)(RRv2) Radar radial wind - in testing - RRv2 Nacelle/tower/sodar (future)

Diabatic Digital Filter Initialization Reduce noise in RUC and Rapid Refresh Noise parameter

Digital Filter-based reflectivity assimilation initializes ongoing precipitation regions Radar reflectivity assimilation Forward integration,full physics with radar-based latent heating -20 min -10 min Initial +10 min + 20 min RUC / RAP HRRR model forecast Backwards integration, no physics Initial fields with improved balance, storm-scale circulation + RUC/RAP Convection suppression

Rapid Refresh (GSI + ARW) reflectivity assimilation example Low-level Convergence Upper-level Divergence K=4 U-comp. diff (radar - norad) K=17 U-comp. diff (radar - norad) NSSL radar reflectivity (dBZ) 14z 22 Oct 2008 Z = 3 km

Outline  Model description for Rapid Refresh  Data assimilation description for RR (RAP)  Output from RAP (grids, Unipost mods, RTMA, BUFR)  Partial cycling for Rapid Refresh, SST, land-surface grids  Verification statistics for RAP vs. RUC

Rapid Refresh NCEP planned grid distribution RAP grid distribution from NCEP will include: 130 (13 km CONUS): pgrb, bgrb 252 (20 km CONUS): pgrb, bgrb 236 (40 km CONUS): pgrb 242 (11 km Alaska): one file with all needed parameters 221 (32 km nearly full domain): one file with all needed parameters (NOTE: Full NAM grid is also on 221 grid) 200 (12km Puerto Rico) - single output file Additional grid not to be distributed initially due to bandwidth limitation 83 (13km full Rapid Refresh domain on rotated lat/lon grid)

RR full Grid 83 RUC full Grid 130 AK grid Grid 242 NA grid Grid 221 PR Grid 200

Unipost options added for Rapid Refresh application Ceiling -includes NCAR code for effect of falling snow Visibility -includes RH component and updated coefficients from NCAR Now used by Binbin Zhou for SREF MAPS SLP reduction – more coherent SLP pattern over elevated terrain, matches RUC output SLP Precip-type – based on explicit qi/qc/qr/qs/qg Heights for ARW input Switch to virtual temp for CAPE/CIN, others All commits into NCEP Unipost repository

Other post-processing, NARRE-TL BUFR soundings Downscaling for RTMA background RAP replacing RUC GEMPAK grids for SPC, AWC, HPC Hourly updated regional ensemble with RAP and NAM time-lagged ensemble members Formerly known as VSREF (very short range) Official name – NARRE-TL – N. American Rapid Refresh Ensemble – Time-lagged

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Outline  Model description for Rapid Refresh  Data assimilation description for RR (RAP)  Output from RAP (grids, Unipost mods, RTMA, BUFR)  Partial cycling for Rapid Refresh, SST now using RTG_SST_HR-12km  Verification statistics for RAP vs. RUC

- Hourly cycling of land surface model fields - 6 hour spin-up cycle for hydrometeors, surface fields Rapid Refresh Partial Cycling RR Hourly cycling throughout the day RR spin-up cycle GFS model GFS model RR spin-up cycle 00z 03z 06z 09z 12z 15z 18z 21z 00z Observation assimilation Observation assimilation

RUC 18h RAP 18h 989 hPa 967 hPa Obs 15z Sat 27 Aug 2011 Hurricane Irene 952 hPa RAP partial cycling with GFS inserted 2x/day very helpful for tropical cyclones in RAP, which then spins down TCs to 13km horizontal resolution. RAP will be much better background for RTMA for TCs

Outline  Model description for Rapid Refresh  Data assimilation description for RR (RA)  Output from RAP (grids, Unipost mods, RTMA, BUFR)  Partial cycling for Rapid Refresh, SST now using RTG_SST_HR-12km  Case studies and verification statistics for RAP vs. RUC

mid-Atlantic post-frontal rain band - evening 16 Nov 2011 RAP handled vort max much better, so it had stronger forcing than the RUC in the mid-Atlantic and showed better potential for a rain band behind the sfc cold front

RUC RAP

RUC RAP

How a sequence of hourly RAP runs can help piece together a forecast issue: Location off but initial concept of event Location still off but heavier event now shown By 02z, starts to nail down location RUC RAP 00z run01z run02z run

12h fcst RUC RR 12h Wind – rms vector error 24Oct - 20Nov 2011 RAP RUC 12h Temp – rms error 24Oct - 20Nov 2011 Raob verification: RUC-NCEP vs. RAP-NCEP(EMC) RAPRUC RAP better RUC better RAP better RUC better

12h fcst RUC RR Height – rms 24Oct-20Nov11 Height –bias 24Oct-20Nov Height –bias 1 Mar – 19 Jul 11 Height – rms 1 Mar – 19 Jul 11 RAP RUC RAP RUC

Rapid Refresh prim ( ) vs. dev ( ) RR-dev has PBL-based pseudo-observations Later in 2012, Rapid Refresh 2, changes already running in ESRL RR/HRRR prim dev Residual mixed layer better depicted in RR-dev (w/ PBL pseudo-obs) Observed 00z 7 July 2011 Albany, NY sounding 23z 6 July 2011 RR sounding

Rapid Refresh prim ( ) vs. dev ( ) 24 Sept-15 Nov difference - RR-dev has soil adjustment starting 24 Sept Also in ESRL RR/HRRR - Soil moisture/temperature adjustment Soil adj added to RRdev Soil adjustment q’ soil - applied if T’(k=1) and q’(k=1) are of opposite sign Daytime No clouds Proportional to q’(k=1) Assumption – Bowen ratio error from soil moisture error Applied at top 2 levels in RUC LSM Used in RUC since 2005 Soil adj added to RRdev Soil adj also added to RRprim 2m dewpt bias

Historical database for each surface station, ob-fcst difference for 9 different wind direction bins – 24h RR cycle test 30 Coming this winter to ESRL RR/HRRR - surface ob wind correction O-B (ob-fcst) – vector diff All METAR stations No correction With correction O-B (ob-fcst) – speed bias All METAR stations No correction 00z With correction

RAP upgrades for RAP2 proposed for late 2012 (already successfully tested in ESRL) Moisture PBL-based pseudo-observations Soil adjustment from near-sfc temp/moisture analysis increment (Last 2 important for convective environment, both in RUC but not yet in NCEP RAP) MODIS land use, Assimilation of radial wind, lightning, mesonet data Starting now in testing in ESRL RAP WRFv3.3.1, improved vertical advection, upper boundary condition GOES radiances

Hourly Updated NOAA NWP Models 13km Rapid Refresh 13km RUC 3km HRRR RUC – current oper model, new 18h fcst every hour High-Resolution Rapid Refresh (HRRR) Experimental 3km nest inside RUC or RR, new 15-h fcst every hour Rapid Refresh (RR) replaces RUC at NCEP - WRF, GSI with RUC- based enhancements

RR and HRRR Model Descriptions ModelVersionAssimilation Radar DFI RadiationMicrophysics Cum Param PBLLSM RR WRF- ARW v3.2+ GSI- 3DVAR Yes RRTM/ Goddard Thompson G3 + Shallow MYJRUC HRRR WRF- ARW v3.2+ None: RR I.C. No RRTM/ Goddard Thompson None MYJRUC Model Grid Spacing Vertical Levels Vertical Coordinate Lowest Model Level Boundary Conditions Initialized RR13 km50Sigma~8 m AGLGFS Hourly (cycled) HRRR3 km50Sigma~8 m AGLRR Hourly (no-cycle) April 14, 2011: HRRR parent assimilation / model system switched from RUC to rapid Refresh April 14, 2011: HRRR parent assimilation / model system switched from RUC to rapid Refresh

Spring 2011 Hourly HRRR Initialization from RR Hourly RR Lateral Boundary Conditions Interp to 3 km grid Hourly HRRR 15-h fcst Initial Condition Fields 11 z 12 z 13 z Time (UTC) Analysis Fields 3DVAR Obs 3DVAR Obs Back- ground Fields 18-h fcst 1-hr fcst DDFI 1-hr fcst 18-h fcst 1-hr fcst Interp to 3 km grid 15-h fcst Use 1-h old LBC to reduce latency Use most recent IC (post-DFI) to get latest radar info Reduced Latency: ~2h for 2011

Radar-DFI is cycled on13-km RR (parent) grid No cycling or radar DA on 3-km HRRR (child) grid  Storms must “spin-up” within each HRRR run How effective is cycled “radar-DFI” procedure applied on mesoscale grid? -- for mesoscale “parent” grid? -- for storm-scale “child” grid? Reflectivity is assimilated, but used to modify velocity field RR radar assimilation and HRRR

| | | | | | | 0-h 2-h 4-h 6-h 8-h 10-h 12-h 25 dBZ 13-km Eastern US Matched Comparison 12,13,14,19 Aug All init times “parent” vs. “child” Reflectivity Verification | | | | | | | 0-h 2-h 4-h 6-h 8-h 10-h 12-h CSI (x 100) RR-HRRR radar RR-HRRR no radar  3-km fcsts improve upon parent 13-km forecasts  radar assim adds skill at both 13-km and 3-km RR radar RR no radar Forecast Lead Time RUC-HRRR radar RUC-HRRR no radar RUC radar RUC no radar CSI (x 100)

Reflectivity Convergence Cross-Section RR HRRR RADAR RR HRRR no radar 00z 12 Aug z init

Convergence Cross-Section Reflectivity RR HRRR RADAR RR HRRR no radar 01z 12 Aug h fcst

HRRR RADAR HRRR no radar Valid: 01z 12 Aug h fcsts

HRRR RADAR HRRR no radar Valid: 02z 12 Aug h fcsts

HRRR RADAR HRRR no radar Valid: 03z 12 Aug h fcsts

0-hr forecast HRRR-dev (RUC parent) HRRR (RR parent) Observed Reflectivity 00z 11 July 2011

3-hr forecast HRRR-dev (RUC parent) HRRR (RR parent) Observed Reflectivity 03z 11 July 2011

6-hr forecast HRRR-dev (RUC parent) HRRR (RR parent) Observed Reflectivity 06z 11 July 2011

9-hr forecasts HRRR-dev (RUC parent) HRRR (RR parent) Observed Reflectivity 09z 11 July 2011

12-hr forecasts HRRR-dev (RUC parent) HRRR (RR parent) Observed Reflectivity 12z 11 July 2011

8 hour HRRR model forecast Radar observations 20 UTC April 16, 2011

9 hour HRRR model forecast reflectivity Radar observations 22 UTC April 27, 2011

9 hour HRRR model forecast updraft helicity Radar observations 22 UTC April 27, 2011

Time-lagged ensemble Model Init Time Example: 15z + 2, 4, 6 hour HCPF Forecast Valid Time (UTC) 11z 12z 13z 14z 15z 16z 17z 18z 19z 20z 21z 22z 23z 13z+4 12z+5 11z+6 13z+6 12z+7 11z+8 13z+8 12z+9 11z+10 HCPF z 17z 16z 15z 14z 13z 12z 11z Model runs used model has 2h latency 50

Updraft helicity from four HRRR runs z (color coded by run) Tornado Reports HRRR Time-lagged Ensemble Tornado Outbreak KS/OK 10 May 2010 Severe Weather Application 13z HRRR 14z HRRR 15z HRRR 16z HRRR

Updraft helicity probability Four consecutive HRRR runs (13-16 UTC) Time-bracket of 2-hrs 45 km search radius HRRR Severe Weather Forecasts Tornado Outbreak KS/OK 10 May 2010

HRRR and HCPF Overlaying deterministic and probabilistic guidance Valid 23z 16 July 2010 HCPF Probabilities Most recent HRRR run (> 40 dBZ) Valid 23z 16 July 2010 Radar Observations

HRRR and HCPF Overlaying deterministic and probabilistic guidance HCPF Probabilities Three most recent HRRR runs (> 40 dBZ) Valid 23z 16 July 2010 Radar Observations

15-min output frequency (grib files) available for selected fields Comparison of HRRR forecast reflectivity (with 15-min output frequency) and observed reflectivity for hurricane Irene

Additional HRRR points HRRR useful for much more than convection  Surface wind forecasts, especially in the west  Terrain related features  Ceiling and visibility forecasts  County-scale details for many systems HRRR skill very dependant on Rapid Refresh  RR hourly assimilation of conventional obs key  RR radar-DFI is HRRR storm DA mechanism  RR Model biases greatly affect HRRR forecasts  RR improvements in these areas help HRRR HRRR development work areas  RR model (WRF-ARW) and data assimilation (GSI)  HRRR model and assimilation  HRRR output post-processing (special fields – NSSL, TL-ensemble probabilities, hourly soundings)

Ongoing / Future HRRR (and RR) work HRRR model changes  Update to WRF v3.3.1  Switch to 5 th order vertical advection  Switch to W-Raleigh damping for upper levels Radial velocity assimilation  Slight degradation in last 13-km test, expect for RR2  Experiments with 3-km radial velocity assimilation 3-km cloud analysis  Test GSI cloud analysis at 3-km with eventual 3-km cycling of cloud / hydrometeor and LSM fields Regional EnKF / hybrid work with OU/CAPS  Excellent progress for coarse resolution (40-km) system Storm-scale EnKF / hybrid assimilation  Collaboration with NSSL Warn On Forecast Project

CoSPA Operational Evaluation Periods 3 month running average HRRR Hourly Reliability (≥ 12 hr forecast) More Than Three Consecutive Missed/Incomplete Runs

HRRR computer reliability from NOAA Current – 1 computer running HRRR NOAA/ESRL – Boulder (jet) Current reliability: 97% for last 12h months (allowing up to 3h gaps) – 2 computers running HRRR – interim solution Boulder – computer 1 (jet) Fairmont, WV – computer 2 (zeus) – suggest NCO operations for HRRR on zeus Reliability goal - 99% In discussion: Fill in missing HRRR products with hourly 13km Rapid Refresh and 6-hourly 4km NAM-nest lower quality: can’t have storm-resolving resolution and hourly updating with radar assimilation outside of the HRRR 2015 – NCEP running HRRR NOAA/NCEP computing budget – will allow no increase before 2015 Cost of HRRR – 15-22% (!) of current NCEP computing for all operational models (GFS, NAM, RUC, ensembles) Computing acquisition for NOAA Research (e.g., HRRR processors funded by FAA and NOAA) has been very efficient Conclusion: Interim HRRR computing for

Future plans for advanced hourly NWP/DA Jan 2012 – Rapid Refresh operational at NCEP Late 2012-early RapidRefresh2 – cloud/surface/soil assimilation, GOES, sodar/tower/nacelle, updated GSI model – MODIS, cloud/PBL/numerical improvements, updated WRF 2013 – application of hybrid/EnKF assimilation to RR in real-time testing – improves, add Fairmont HRRR to reach 99% 2015 – High-Resolution Rapid Refresh operational at NCEP for CONUS Other improvements in init testing Add inline chem, chem DA 15-min radar assimilation Storm-scale radar assimilation N.American Rapid Refresh Ensemble NEMS-based NMM, ARW cores Hourly updating with GSI-hybrid EnKF Initially 6 members, 3 each core, physics diversity (RR, NAM, NCAR suites) Forecasts to 24-h NMM to 84-h 4x per day Rapid Refresh 2015 – Ensemble Rapid Refresh – NARRE w/ hybrid assim 2016 – Add operational Alaska HRRR 2017 – CONUS Ensemble HRRR – HRRRE HRRR

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Coordinated Meso- and Storm-scale ensembles The NARRE and the HRRRE (dependent on computer resources) N. American Rapid Refresh ENSEMBLE (NARRE) NEMS-based NMMB and ARW cores & GSI analysis (EnKF/hybrid RR development maturing – U.OK) Common NAM parent domain at km (even larger than initial Rapid Refresh domain) Initially ~6 member ensemble made up of equal numbers of NMMB- and ARW-based configurations Hourly updated with forecasts to 24 hours NMMB and ARW control assimilation cycles with 3 hour pre- forecast period (catch-up) with hourly updating NAM 84 hr forecasts are extensions of the 00z, 06z, 12z, and 18z runs.

Coordinated Meso- and Storm-scale ensembles The NARRE and the HRRRE 6 x HRRR – by ~2017 (?) High-Resolution Rapid Refresh Ensemble (HRRR E ) Each member of NARRE contains –3 km CONUS and Alaskan nests –Control runs initialized with radar data Positions NWS/NCEP/ESRL to –Provide NextGen enroute and terminal guidance –Provide hourly-updated storm-scale probability guidance –Improve assimilation capabilities with radar and satellite –Tackle Warn-on-Forecast as resolutions evolve towards ~1 km