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Application of Short Range Ensemble Forecasts to Convective Aviation Forecasting David Bright NOAA/NWS/Storm Prediction Center Norman, OK Southwest Aviation Weather Safety Workshop October 23-24, 2008 Where Americas Climate and Weather Services Begin
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Outline Introduction Short Range Ensemble Forecasts (SREF) Future Aviation Ensemble Applications
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Outline Introduction –The SPC, predictability, and ensembles Short Range Ensemble Forecasts (SREF) Future Aviation Ensemble Applications
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Hail, Wind, Tornadoes Fire Weather Winter Weather Excessive Rainfall STORM PREDICTION CENTER LOCALIZED HIGH IMPACT WEATHER
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So what’s the deal with these ensembles?
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- Ensemble forecasting can be formally traced to the discovery of the "Butterfly Effect" (Lorenz 1963, 1965)… -The atmosphere is a non-linear, non-periodic, dynamical system such that tiny errors grow... resulting in forecast uncertainty that increases with time resulting in limited predictability -“Does the flap of a butterfly’s wings in Brazil set off a tornado in Texas?” (Lorenz 1972) -Or, does the formation of an isolated storm over the Mogollon Rim set off a flash flood near Phoenix? -Predictability is a function of temporal and spatial scales: e.g., thunderstorms are inherently less predictable than synoptic scale cyclones The Butterfly Effect
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What are the Sources of These Tiny Errors? Observations –Data gaps –Error –Representative –QC Analysis Models LBCs, etc. Satellite Aircraft and Land Observations, Assimilation, and Models
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One model forecast Reality
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- Numerical weather models... - All forecasts contain errors that increase with time - Doubling time of small initial errors ~1 to 2 days - Maximum large-scale (synoptic to planetary) predictability ~10 to 14 days - Ensembles… - A collection of models that provide information on the range of plausible forecasts, statistical measures of confidence, and extend predictability - Scales to the problem of interest - Increasing in popularity - Requires “tools” to view the large number of models using a slightly different approach (statistical) Weather forecasting: It’s impossible to be perfectly correct all of the time!
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Outline Introduction Short Range Ensemble Forecasts (SREF) –Currently available through the SPC website Future Aviation Ensemble Applications
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Ensemble Guidance at the SPC Develop specialized guidance for the specific application (convection, severe storms, fire weather, winter weather) Design guidance that… –Help blend deterministic and ensemble approaches –Provide guidance for uncertainty/probabilistic forecasts –Provide guidance that aids confidence (i.e., better deterministic forecasts) –Illustrates plausible scenarios –Allows for diagnostic analysis – not just a statistical black-box
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NWS/NCEP Short Range Ensemble Forecast (SREF) EMC SREF system (21 members) –87 hr forecasts four times daily (03, 09, 15, 21 UTC) –North American domain –Model grid lengths 32-45 km –Multi-model: Eta, RSM, WRF-NMM, WRF-ARW –Multi-analysis: NAM, GFS initial and boundary conds. –IC perturbations and physics diversity –Recently added bias-correction to some fields (not covered and not available on the SPC webpage) Ensembles Available at the SPC: SREF
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http://www.spc.noaa.gov/exper/sref/ All example products available on the SPC webpage http://w1.spc.woc.noaa.gov/exper/sref/frames.php?run=case_2007060803
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Basic Overview [MN]: = Mean [SP]: = Spaghetti [MNSD]: = Mean/SD [MAX]: Max value at each grid point
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SREF 500 mb Mean Height, Wind, Temp
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Instability [MN]: = Mean [PR]: Probability [MDXN]: Median/union & intersect [SP]: = Spaghetti [MNSD]: = Mean/SD
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SREF Pr[MUCAPE > 1000 J/kg] & Mean MUCAPE=1000 (dash)
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Winds and Vertical Shear [MN]: = Mean [SP]: = Spaghetti [MNSD]: = Mean/SD [MDXN]: Median/union & intersect [MAX]: Max value at each grid point
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SREF Pr[ESHR > 30 kts] & Mean ESHR=30 kts (dash) “Effective Shear” (ESHR; Thompson et al. 2007, WAF) is the bulk shear in the lower half of the convective cloud
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Precipitation [MN]: = Mean [SP]: = Spaghetti [MNSD]: = Mean/SD [MDXN]: Median/union & intersect [MAX]: Max value at each grid point
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SREF Pr[C03I >.01”] and Mean C03I =.01” (dash) C03I = 3hr Convective Precipitation
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Severe Weather [MN]: = Mean [SP]: = Spaghetti [MNSD]: = Mean/SD [MDXN]: Median/union & intersect [MAX]: Max value at each grid point
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SREF Combined or Joint Probability Pr [MUCAPE > 1000 J/kg] X Pr [ESHR > 30 kts] X Pr [C03I > 0.01”] Probability of convection in moderate CAPE, moderate shear environment
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Post-Processed Guidance [PR]: = Probability (Calibrated)
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SREF 3h Calibrated Probability of a Thunderstorm Thunderstorm = > 1 CG Lightning Strike in 40 km grid box (Bright et al., 2005) http://ams.confex.com/ams/pdfpapers/84173.pdf
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Perfect Forecast No Skill Calibrated SREF Thunder Reliability Calibrated Thunder Probability Climatology Frequency [0%, 5%, …]
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SREF 3h Calibrated Probability of a Severe Thunderstorm Severe Thunderstorm = > 1 CG Lightning Strike in 40 km grid box and Wind > 50 kts or Hail > 0.75” or Tornado (Bright and Wandishin, 2006) http://ams.confex.com/ams/pdfpapers/98458.pdf
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Hail >.75”Wind > 50 ktsTornado 21 UTC F039 24h forecasts from 15 April to 15 October 2005 SevereVerification (24h Fcst: F39, 21Z only) 21 UTC SREF only ROC Area=.86 Ave Hit = 15% Ave Miss= 3%
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Aviation Guidance [MN]: = Mean [MD]: Median/union & intersect [MAX]: Max value at each grid point [CPR]: Conditional probability [PR]: Probability
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SREF Median Convective Cloud Top
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SREF Conditional Probability Convective Cloud Top > 37 KFt
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SREF Probability Convective Cloud Top > 37 KFt
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Test Version: 03Z SREF Day 1 ENH Guidance (Summer 2008) Probability Echo Tops >= 35KFT
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Severe Weather on June 9, 2007 107 total severe reports in CONUS –3 tornadoes over nrn New Mexico (~22 UTC)
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Outline Introduction Short Range Ensemble Forecasts (SREF) Future Aviation Ensemble Applications –Applications and calibration under development One hourly SREF thunderstorm guidance (through F036) * Calibration of potential impacts of convection in SREF ^ Rapid Refresh Ensemble Forecast (RREF) – 1hr updates, RUC based * Storm scale (e.g., supercells, squall lines) applications being evaluated * Not discussed today ^ Collaborating with John Huhn, Mitre Corp.
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Gridded Flight Composite (20 km) December 2007 to August 2008 – Above 250 KFT 20 km Grid (AWIPS 215) Data from John Huhn, Mitre Probability (%) aircraft is inside grid box
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Gridded Flight Composite (40 km) December 2007 to August 2008 – Above 250 KFT Probability (%) aircraft is inside grid box 40 km Grid (AWIPS 215) Data from John Huhn, Mitre
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Gridded Flight Composite (40 km) December 2007 to August 2008 21 UTC Composite < 10 KFT21 UTC Composite > 25 KFT Probability (%) aircraft is inside grid box at exactly 21 UTC
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Example of Potential Impacts Probability Thunderstorm X Gridded Composites SREF F036: 3h Calibrated Probability of a T-storm Valid: 21 UTC 8 June 2007 SREF F036: Impact Potential Below 10 KFT Valid: 21 UTC 8 June 2007 SREF F036: Impact Potential Above 25 KFT Valid: 21 UTC 8 June 2007
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Future Applications: Storm Scale Ensembles (SSEF) NOAA Hazardous Weather Testbed (HWT) HWT Spring Experiment Focused on experimental high-res WRF forecasts since 2004 (dx ~2-4 km) 2003 Spring Experiment
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ARW2BREF NMM4ARW4 0500 UTC 29 April 2005: 29 hr simulated reflectivity, NEXRAD BREF “Storm Scale” WRF Simulated Reflectivity: 3 Convection Allowing WRFs (Same initial & valid time)
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Future Applications: Storm Scale Ensemble (SSEF) NOAA Hazardous Weather Testbed (HWT) HWT Spring Experiment Focused on experimental high-res WRF forecasts since 2004 (dx ~2-4 km) Convection allowing ensemble forecasts (2007-2009) to address uncertainty 10 WRF members 4 km grid length over 3/4 CONUS Major contributions from: SPC, NSSL, OU/CAPS, EMC, NCAR Resolving convection explicitly in the model Evaluate the ability of convection allowing ensembles to predict: Convective mode (i.e., type of severe wx) Magnitude of severe type (e.g., peak wind) Aviation impacts (e.g., convective lines/tops) QPF/Excessive precipitation Year 1 Objective (2007): Assess the role of physics vs. initial condition uncertainty at high resolution 2003 Spring Experiment
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Probability Updraft Helicity > 50 m 2 /s 2 Probability of Supercell Thunderstorms F026: Valid 02 UTC 22 Apr 2008 UH > 50 + 25 mi
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Observed Radar Radar BREF 0142 UTC 22 Apr 2008
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Probability Updraft Helicity > 50 m 2 /s 2 View of the left split looking south from Norman, OK (0145 UTC 22 Apr 2008) (Numerous large hail reports up to 2.25”) Jack Hales
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Convective Mode: Linear Detection Determine contiguous areas exceeding 35 dbZ Estimate mean length-to-width ratio of the contiguous area; search for ratios > 5:1 Flag grid point if the length exceeds: –200 miles
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Probability Linear Mode Exceeding 200 miles Squall Line Detection F024: Valid 00 UTC 18 Apr 2008 Linear mode + 25 miles
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Probability Linear Mode Exceeding 200 miles Squall Line Detection F026: Valid 02 UTC 18 Apr 2008 Linear mode + 25 miles
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Squall Line Detection Probability Linear Mode Exceeding 200 miles F028: Valid 04 UTC 18 Apr 2008 Linear mode + 25 miles
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Linear Convective Mode: Impacts Aviation impacts ~ 01 UTC 18 April 2008 Image provided by Jon Racy
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Summary: Ensemble Applications in Convective/Aviation Forecasting Ensemble approach to forecasting has many similarities to the deterministic approach – Ingredients based inputs – Diagnostic and parameter evaluation Ensembles contribute appropriate levels of confidence to the forecast process –Ability to view diagnostics and impacts in probability space Calibration of ensemble output can remove systematic biases and improve the spread Ensemble techniques scale to the problem of interest (weeks, days, or hours) Ensemble systems are here to stay…and will evolve downscale toward high-impact forecasting
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SPC SREF Products on WEB http://www.spc.noaa.gov/exper/sref/ Questions/Comments… david.bright@noaa.gov
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