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This research study analyzes the frequent large forecast errors in the northeastern Pacific and western North America, which have significant implications for weather predictability. The study also presents a feature-based approach to monitoring these errors and discusses the implications for THORPEX.
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Forecast Skill and Major Forecast Failures over the Northeastern Pacific and Western North America Lynn McMurdie and Cliff Mass University of Washington
Why the North Pacific Ocean? • The Pacific is one of the largest areas of sparse insitu observations in the world • Uncertainty over the Pacific has a large impact on predictability over the North American continent and beyond • There are often large initialization errors and short-term forecasts over the northern Pacific ocean. • One symptom of such problems is that short-term forecast skill on the western side of North America is worse than in other areas.
Eta 24-h 03 March 00UT 1999 Eta 48-h 03 March 00UT 1999 An example of a short-term forecast error
Eugene Register Guard Seattle Times
Some applicable research in the literature • Langland et al. (2002) – poor forecast of Jan 2000 storm on East Coast due in part to sensitivity over the Pacific. • Bosart et al. (2002) – lack of convection over the midwest not represented in forecasts due to poorly initialized trough along west coast • Schultz et al. (2005) – 70% of troughs arriving on the West Coast were underforecast, a portion of which continued to effect short-term forecasts across the North American continent. • McMurdie and Mass (2004) – documented forecast failures over the eastern Pacific.
This talk will … • Demonstrate that large initial condition and short-term forecast errors still occur over the eastern Pacific and downstream • Present a feature-based approach to monitoring errors in this region • Discuss implications for THORPEX
How frequent are large numerical forecast errors? • Approach: compare buoys/coastal observations of sea level pressure (SLP) to NCEP’s Eta and GFS 00, 24, 36 and 48 hr forecasts. • Error = Forecast SLP – Observed SLP • At each station, calculated average and absolute error and the standard deviation using winter (Oct – Mar) data. • Large Error = |Error| > (average error + 2 * SD)
Station Locations Tatoosh Is. Cape Arago
Large Errors Inter-annual variability 24 h Tatoosh Is., WA Cape Arago, OR
48-h Errors 48h errors much larger and more frequent than 24-h errors
GFSvs. Eta 24-h errors NCEP GFS better than Eta on average
48-h errors GFS over forecasts Eta under forecasts
GFS has more accurate SLP initializations and forecasts than Eta over the Northeast Pacific • For 00-h forecasts (initial conditions), GFS has smaller mean absolute error (MAE) and standard deviation (SD) than Eta at all 17 stations • For 24- and 36-h forecasts, GFS has smaller MAE and SD than Eta at 13/17 buoy and coastal stations • For 48-h forecasts, GFS has smaller MAE and SD than Eta at 12/17 stations.
Forecast Verification: The Need for Feature-Based Evaluation • Examining statistics at observing sites is not sufficient for understanding the problems. • Must also track features to gain an understanding of the deficiencies. • Case studies of major failures should reveal important information.
GFS What are these large forecast errors associated with?
How frequently do large forecast errors of synoptic events occur? Event = large error at 2 or more adjacent stations for 2 or more forecasts periods Data shown for Eta model only Number of Events/Season associated with Lows/Troughs/Highs Season Total Low Trough High 1999 – 2000 21 12 7 2 2000 – 2001 19 12 4 2 2001 – 2002 16 14 2 0 2002 – 2003 16 11 5 0 (from McMurdie and Mass 2004)
Of the forecast failures associated with lows, what are the central pressure and cyclone position errors? Ave SLP error = 3.4 mb SD = 8.7 mb Absolute error = 7.5 mb Ave position error = 453.8 km SD = 260 km
Recent examples of major forecast errors • February 2002 • October 2003 • February 2004 • November 2004 • April 2005 • May 2005
L996 L1004 L1008 L1010 An example of a recent high-impact, poorly forecast storm 7 – 8 February 2002 Cyclone • Power outages, large trees uprooted in Eugene, OR • Powerful, rapidly developing storm with strong winds (70 kts) • Very poor short-term numerical guidance
ETA AVN UKMO NOGAPS 48-hr Forecasts Valid 00 UTC 8 February 2002
AVN ETA UKMO NOGAPS 24-Hr Forecasts Valid 00 UTC 8 February 2002
Difference between UKMO and Eta 850 mb Temperature K Valid 00 UTC 7 February 2002 L1010 Solid = UKMO, Dashed = ETA, Shades, blue = differences
00hr GFS 24hr GFS 48hr GFS 00hr + 48hr GFS
GFS Forecasts of 12-hr Precipitation 36h Forecast 24h Forecast 48h Forecast 12h Forecast
Large Short Term Forecast Errors Still Occur • Number of slp errors > 10 mb continues to be 10 – 15 per winter (despite the ridge this year) • Vast majority of large errors due to mispositioned or under (or over) forecast low centers (see McMurdie and Mass, 2004) • For Feb 02 case, forecast errors were likely due to initial condition errors (McMurdie and Mass, 2004)
Some Unanswered Questions • What are the origins of these short-term forecast errors – initial condition/data assimilation errors, model errors? • Are there particular flow patterns (or regimes) where short-term (or longer term) forecasts are less accurate (e.g., E-T transitions)? • How do model sensitivity structures compare for major forecast failure cases? How do they project on obvious initialization problems? How do adjoint-based and ensemble-based sensitivities compare for such cases?
Unanswered Questions continued • What are the downstream implications for medium to long- range forecasts when initial condition errors are large over the Pacific? To what degree are downstream errors mitigated by greater data density over North America?
Implications for THORPEX • Major forecast failures still occur, even at the short-time ranges. So there is still work to be done! • It is important to monitor the quality of model initializations and forecasts to know how well we are doing and where the failures are. • Both statistical and feature-based approaches are needed to gain a full understanding of model failures. • Case studies can provide important insights into forecast failures
Recent trends in forecast accuracy From Simmons and Hollingsworth (2002) Hemispheric r.m.s. error of SLP Increased skill of 3-5 Day forecast skill of SLP (and 500 hghts) especially last 10 years. Unable to discern forecast skill of storm systems in particular locations from these statistics
Brief Outline • Show statistics of short term errors along West Coast • Highlight several examples of major forecast failures • Briefly discuss the effect of uncertainty over the Pacific on longer term forecasts
Adjoint Sensitivity wrt 850 mb Temperature Area of forecast error projected onto sensitivities Courtesy of Brian Ancell