Seth Linden and Jamie Wolff NCAR/RAL Evaluation of Selected Winter ’04/’05 Performance Results.

Slides:



Advertisements
Similar presentations
Slide 1ECMWF forecast User Meeting -- Reading, June 2006 Verification of weather parameters Anna Ghelli, ECMWF.
Advertisements

Slide 1ECMWF forecast products users meeting – Reading, June 2005 Verification of weather parameters Anna Ghelli, ECMWF.
Solar Energy Forecasting Using Numerical Weather Prediction (NWP) Models Patrick Mathiesen, Sanyo Fellow, UCSD Jan Kleissl, UCSD.
How do clouds form and precipitation types (Do not write what is in blue) RRB
Verification of the RWFS (Road Weather Forecast System) Ben C. Bernstein Jamie Wolff, Seth Linden NCAR/RAP Boulder, CO.
Mei Xu, Jamie Wolff and Michelle Harrold National Center for Atmospheric Research (NCAR) Research Applications Laboratory (RAL) and Developmental Testbed.
Report of the Q2 Short Range QPF Discussion Group Jon Ahlquist Curtis Marshall John McGinley - lead Dan Petersen D. J. Seo Jean Vieux.
MIT Lincoln Laboratory FHWA Review Robert Hallowell 10/20/2005 Road Condition and Treatment Module Overview, Upgrades, Examples and Limitations Robert.
March 17, 2011 Severe Weather Workshop Mike York (Forecaster / Winter Weather Program Leader)
MDSS Operational Issues 2003 MDSS Stakeholder Meeting Tuesday, June 17, 2003 Des Moines, Iowa Andy Stern Mitretek Systems FHWA Weather Team.
Operational Forecasting and Sensitivity-Based Data Assimilation Tools Dr. Brian Ancell Texas Tech Atmospheric Sciences.
An Update on the Stony Brook University Ensemble Forecast System        Brian A. Colle, Matthew Jones, Yanluan Lin, and Joseph B. Olson Institute.
Description and Preliminary Evaluation of the Expanded UW S hort R ange E nsemble F orecast System Maj. Tony Eckel, USAF University of Washington Atmospheric.
EMS ECAM 13 september 2011 GlamEps: Current and future use in operational forecasting at KNMI Adrie Huiskamp.
Application of Numerical Model Verification and Ensemble Techniques to Improve Operational Weather Forecasting. Northeast Regional Operational Workshop.
Reliability Trends of the Global Forecast System Model Output Statistical Guidance in the Northeastern U.S. A Statistical Analysis with Operational Forecasting.
MOS Developed by and Run at the NWS Meteorological Development Lab (MDL) Full range of products available at:
Hydrometeorological Prediction Center HPC Medium Range Grid Improvements Mike Schichtel, Chris Bailey, Keith Brill, and David Novak.
National Centers for Environmental Prediction (NCEP) Hydrometeorlogical Prediction Center (HPC) Forecast Operations Branch Winter Weather Desk Dan Petersen.
Brian Ancell, Cliff Mass, Gregory J. Hakim University of Washington
Transitioning unique NASA data and research technologies to the NWS 1 Evaluation of WRF Using High-Resolution Soil Initial Conditions from the NASA Land.
Verification of Numerical Weather Prediction systems employed by the Australian Bureau of Meteorology over East Antarctica during the summer season.
MOS Performance MOS significantly improves on the skill of model output. National Weather Service verification statistics have shown a narrowing gap between.
Ensemble Post-Processing and it’s Potential Benefits for the Operational Forecaster Michael Erickson and Brian A. Colle School of Marine and Atmospheric.
The March 01/02 Non-Winter Weather Event: Part 1 Michael W. Cammarata Anthony W. Petrolito.
1 Federal MDSS Prototype Update Federal MDSS Prototype Update Kevin R. Petty Bill P. Mahoney National Center for Atmospheric Research MDSS Stakeholder.
Radar Animation 9:30 AM – 7:00 PM CST November 10, 2006 …Excerpt from Meteorological Overview of the November 10, 2006 Winter Storm… Illustrate value of.
Jamie Wolff Jeff Beck, Laurie Carson, Michelle Harrold, Tracy Hertneky 15 April 2015 Assessment of two microphysics schemes in the NOAA Environmental Modeling.
MDSS Challenges, Research, and Managing User Expectations - Weather Issues - Bill Mahoney & Kevin Petty National Center for Atmospheric Research (NCAR)
A light snow event: Feb 2-4, /3/03 – 6Z (midnight) Small storm passes to the SE, cold front to the NW +
Lecture 10 (11/11) Numerical Models. Numerical Weather Prediction Numerical Weather Prediction (NWP) uses the power of computers and equations to make.
Towards the Usage of Post-processed Operational Ensemble Fire Weather Indices over the Northeast United States Michael Erickson 1, Brian A. Colle 1, and.
1 The Evolution of METRo in a Roadway DSS Seth K. Linden Sheldon D. Drobot National Center for Atmospheric Research (NCAR) SIRWEC 15 th International Road.
1 On the use of radar data to verify mesoscale model precipitation forecasts Martin Goeber and Sean Milton Model Diagnostics and Validation group Numerical.
Verification of a Blowing Snow Model and Applications for Blizzard Forecasting Jeff Makowski, Thomas Grafenauer, Dave Kellenbenz, Greg Gust National Weather.
Forecast Skill and Major Forecast Failures over the Northeastern Pacific and Western North America Lynn McMurdie and Cliff Mass University of Washington.
National Weather Service Model Flip-Flops and Forecast Opportunities Bernard N. Meisner Scientific Services Division NWS Southern Region Fort Worth, Texas.
CONSShort: an hourly short term ensemble for ESTF Jerry Wiedenfeld, ITO MKX Jeff Craven, SOO MKX CRGMAT/VTF NWS Milwaukee/Sullivan WI.
HOW DO CLOUDS FORM AND PRECIPITATION TYPES (DO NOT WRITE WHAT IS IN BLUE) RRB
1 The Historic Ice Storm of January 26-28, OUTLINE Brief review of the stormBrief review of the storm Review of the environment and forcing (Why.
Forecasting Streamflow with the UW Hydrometeorological Forecast System Ed Maurer Department of Atmospheric Sciences, University of Washington Pacific Northwest.
MDSS Lab Prototype: Program Update and Highlights Bill Mahoney National Center For Atmospheric Research (NCAR) MDSS Stakeholder Meeting Boulder, CO 20.
Mesoscale model support for the 2005 MDSS demonstration Paul Schultz NOAA/Earth System Research Laboratory Global Systems Division (formerly Forecast Systems.
Filling the Gaps in Weather Data for the Transportation Industry A View from the Private Sector’s Perspective Jeff Johnson, CCM DTN Meteorlogix.
Climatevs. Weather  Climate: Average weather conditions for an area over a long period of time.  Weather: condition of the atmosphere at any given time.
MODSCAG fractional snow covered area (fSCA )for central and southern Sierra Nevada Spatial distribution of snow water equivalent across the central and.
Climate and Weather What's the difference?. Weather  is the condition of the atmosphere which lasts over a short time period and for a small area  consists.
Model Post Processing. Model Output Can Usually Be Improved with Post Processing Can remove systematic bias Can produce probabilistic information from.
TEAM 4 POUNDER & LI. Mesoscale Discussion Valid for 1200UTC Thursday to 0000UTC Friday for the Chicago area A low pressure system is currently forming.
NWSRFS Snow Modeling Cold Regions Workshop November 2004 Andrea Holz NCRFC.
Use of Mesoscale Ensemble Weather Predictions to Improve Short-Term Precipitation and Hydrological Forecasts Michael Erickson 1, Brian A. Colle 1, Jeffrey.
Briefing by: Roque Vinicio Céspedes Finally Here! The MOST awaited briefing ever! February 16, 2011.
USWRP Multi-Agency Cool- Season QPF Workshop Co-Chairs Marty Ralph (NOAA/ETL) Bob Rauber (Univ. Illinois)
Ensemble variability in rainfall forecasts of Hurricane Irene (2011) Molly Smith, Ryan Torn, Kristen Corbosiero, and Philip Pegion NWS Focal Points: Steve.
Model Jumpiness and the Need for Ensembles Richard Grumm National Weather Service Office and Lance Bosart State Univesity of New York at Albany Richard.
An Investigation of the Mesoscale Predictability over the Northeast U.S.        Brian A. Colle, Matthew Jones, and Joseph Olson Institute for Terrestrial.
Seasons and Weather Earth’s Tilt –As the Earth revolves around the sun, it is tilted at a 23.5 degree angle in relation to the sun –Different parts of.
Weather Briefing for Pennsylvania March 2-3 Outlook Prepared 03/02/14 2:00 pm EST Prepared by: National Weather Service State College, PA
MOS and Evolving NWP Models Developer’s Dilemma: Frequent changes to NWP models… Make need for reliable statistical guidance more critical Helps forecasters.
An Overview of HPC Winter Weather Guidance for Three Warning Criteria Snowfall Events That Occurred During the Winter Season. A Review of the.
1 The Use of METRo (Model of the Environment and Temperature of the Roads) in Roadway Operation Decision Support Systems The Use of METRo (Model of the.
11 Short-Range QPF for Flash Flood Prediction and Small Basin Forecasts Prediction Forecasts David Kitzmiller, Yu Zhang, Wanru Wu, Shaorong Wu, Feng Ding.
Idaho Transportation Department Winter Maintenance Best Practices
Anthony P. Praino, Lloyd A. Treinish
An Investigation of the Skill of Week Two
Update on the Northwest Regional Modeling System 2013
Antecedent Environments Conducive to the Production of Extreme Temperature and Precipitation Events in the United States Andrew C. Winters, Daniel Keyser,
Forecasting Streamflow with the UW Hydrometeorological Forecast System
New Developments in Aviation Forecast Guidance from the RUC
Presentation transcript:

Seth Linden and Jamie Wolff NCAR/RAL Evaluation of Selected Winter ’04/’05 Performance Results

Weather Forecast Verification Consensus (RWFS) forecast is compared to individual model components Air-temperature, dewpoint, wind-speed and cloud- cover forecasts –18 UTC runs for the entire season (1 November 2004 to 15 April 2005) Error (RMSE) calculated for: –Colorado Plains: 176 sites –Mountains: 119 sites Blizzard of March 2003

Air temperature RMSE Colorado Plains RWFS Colorado Mountains

Dewpoint RMSE Colorado Plains Forward Error Correction Colorado Mountains Due to 3-hour MOS data

Wind Speed RMSE Colorado Plains Colorado Mountains

Colorado Plains Cloud Cover RMSE Colorado Mountains

The ensemble approach utilized by the RWFS does improve the predictions on average for all verifiable parameters No single model performs better for all parameters A blend of weather models will provide better results Summary/Recommendations

Forecast Model Weights Used by the RWFS System automatically weights forecasts based on skill Distribution of weight values per lead time for air-temperature, dewpoint, and wind- speed –18 UTC run on 3 May 2005 Weights looked at for two sites: –Denver International Airport –I-70 at Genesse Which models have the most skill?

Air Temperature Model Weights Denver Int. Airport ETA GFS MOS I-70 at Genesee RUC

Dewpoint Model Weights Denver Int. Airport I-70 at Genesee

Denver Int. Airport Wind Speed Model Weights MM5 I-70 at Genesee WRF

Insolation Weights No one model consistently outperforms the others MM5 and WRF forecast hourly instantaneous values, ETA forecasts 3-hour instantaneous values and GFS forecasts 3-hour averages Clear Conditions For MDSS static weights were applied: - 50/50 split between MM5 and WRF for the 0-23 hour forecast - All Eta for the hour forecast

QPF Weights ModelGFSEta MM5 2hr MM5 3hr MM5 4hr Total MM5 WRF 2 hr WRF 3hr WRF 4hr Total WRFRUC MAV- MOSTotal % TOTAL MM5+WRF Contribution QPF Weights (%) Due to a lack of quality precipitation observations static weights were applied Weights fixed based on expert opinion MM5 and WRF were given 80% of the total weight

Weight distribution reflects that the corrected (dynamic MOS) NWS models (ETA, GFS, and RUC) had the most overall skill No one model dominates for all parameters The limitation of the NWS models is their 3-hr temporal resolution WRF and MM5 were given the highest static weights for Insolation and QPF Summary/Recommendations

Road Temp Observation Variance T r variance across E-470 corridor –Shading by permanent structures or passing clouds –Make/model/installation/age of temperature sensors

E-470 Road/Bridge Sites Colorado Blvd Platte Valley (road and bridge) 6 th Ave Pkwy Plaza A Smokey Hill Rd (road and bridge)

SCTBKNOVC LOCAL TIME (19 = noon, 07 = midnight) 27 Nov Nov 2004

OVCCLRBKN SCT LOCAL TIME (19 = noon, 07 = midnight) 29 Nov Nov 2004

Summary/Recommendations Large variations in observed road and bridge temperatures –Over relatively small area (10s of miles) Makes prediction and verification of pavement temperatures very challenging –Difficult to establish ground truth

Road/Bridge Forecast Verification Road and bridge temperature forecasts –Using recommended treatments from MDSS Error (MAE) and bias calculated for: –For each lead time (0-48hrs) 18 UTC runs –E-470: 6 roads/2 bridge (1 Nov 2004 – 15 Apr 2005) –Mountains: 5 roads (1 Feb 2004 – 15 Apr 2005) East bound lane of I-70 at the summit of Vail Pass

Consistent low bias Lead Time (0 = 18 UTC = noon, 18 = 12 UTC = 6am) Peak insolation Morning hours E-470 road sites Perfect forecast

Lead Time (0 = 18 UTC ~ noon, 18 = 12 UTC ~ 6am) Shadowing? evening morning E-470 bridge sites

Lead Time (0 = 18 UTC = noon, 18 = 12 UTC = 6am) evening morning CDOT mountain road sites

Summary/Recommendations Larger T r differences during times of high solar insolation likely due to several factors: –Errors in measuring pavement skin temp –Mountain shading during low sun angle –Limitations in insolation prediction in models –Limitations in pavement heat balance model Simplified assumptions about pavement characteristics T b analysis compromised by: –Sensors shadowed by bridge rail –Bias results suggest tuning may be beneficial Overall Issue: –Actual/Recommended treatments not the same

Case Study Analysis 183 day demonstration –16 winter weather days 10 light snow 5 moderate snow 1 heavy snow

November 27-29, 2004 First significant snow storm of the season –5-8” in the Denver area Large variations in parameter predictions –Forecast vs. observations Denver International Airport Ta, Td, Wspd, Cloud Cover and Precipitation 12 UTC 28 th examined –Captured the start time of event

LOCAL TIME (19 = noon, 06 = midnight) 28 Nov C/14F diff 2C/4F diff Air Temperature Snow

LOCAL TIME (19 = noon, 06 = midnight) 28 Nov C/11F diff Dewpoint Temperature Snow

LOCAL TIME (19 = noon, 06 = midnight) 28 Nov 2005 Snow Wind Speed

FEC LOCAL TIME (19 = noon, 06 = midnight) 28 Nov 2005 Cloud Cover Snow

LOCAL TIME (19 = noon, 06 = midnight) 28 Nov 2005 Quantitative Precipitation Forecast Snow

March 13, 2005 Moderate Snow Event –4-6” along the E-470 corridor Warm air temps before start of snow –Dropped from 11C (52F) to -2C (29F) in 5 hours Large variations in parameter predictions –Forecast vs. observations Denver International Airport Ta, Wspd, Cloud Cover and Precipitation 00 UTC 13 March 2005 run examined –Captured both start and end times

LOCAL TIME (18 = noon, 07 = midnight) 13 March 2005 Air Temperature Snow

LOCAL TIME (18 = noon, 07 = midnight) 13 March 2005 Wind Speed Snow

LOCAL TIME (18 = noon, 07 = midnight) 13 March 2005 SCT - OVC Cloud Cover Snow

actualforecast Start time actualforecast End time LOCAL TIME (18 = noon, 07 = midnight) 13 March 2005 Quantitative Precipitation Forecast

April 10, and 18 UTC 10 April 2005 run –Capture start and end time of the event, respectively –QPF only presented Heavy snow event – 10-20” along E-470 – 15-25” along southern Denver CDOT routes – 20-30” along western Denver CDOT routes Air temps near freezing (-1C) throughout the event – Initial transition from rain to snow

10 April 2005 Act/Fore start time Nearly 3”!! LOCAL TIME (18 = noon, 06 = midnight) Quantitative Precipitation Forecast

10 April ” diff in total liquid equivalent precip 0.25” diff LOCAL TIME (18 = noon, 06 = midnight) Quantitative Precipitation Forecast

Summary/Recommendations Large discrepancies between weather models in predicting state weather parameters –All too dry for Td and cloud cover –Low wind speed bias during windy conditions –Overall, no ONE model outperforms => Ensemble approach key Supports probabilistic forecast presentation –Atmosphere is unpredictable –Best approach to present uncertainty to end users?

Thank You! Questions?