1 / 37

Introduction to Weather Forecasting

Introduction to Weather Forecasting Cliff Mass Department of Atmospheric Sciences University of Washington The Stone Age Prior to approximately 1955, weather forecasting was basically a subjective art, and not very skillful.

emily
Télécharger la présentation

Introduction to Weather Forecasting

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Introduction to Weather Forecasting Cliff Mass Department of Atmospheric Sciences University of Washington

  2. The Stone Age • Prior to approximately 1955, weather forecasting was basically a subjective art, and not very skillful. • The technology of forecasting was basically subjective extrapolation of weather systems, in the latter years using the upper level flow (the jet stream). • Local weather details—which really weren’t understood-- were added subjectively.

  3. Upper Level Chart

  4. The Development of Numerical Weather Prediction (NWP) Vilhelm Bjerknes in his landmark paper of 1904 suggested that NWP--objective weather prediction-- was possible. • A closed set of equations existed that could predict the future atmosphere • But it wasn’t practical then because there was no reasonable way to do the computations and a sufficient 3-D description of the atmosphere did not exist.

  5. Numerical Weather Prediction One such equation is Newton’s Second Law: F = ma Force = mass x acceleration Mass is the amount of matter Acceleration is how velocity changes with time Force is a push or pull on some object (e.g., gravitational force, pressure forces, friction) Using observations we can determine the mass and forces, and thus can calculate the acceleration--giving the future

  6. NWP Becomes Possible • By the 1940’s an extensive upper air network was in place, plus many more surface observations. Thus, a reasonable 3-D description of the atmosphere was possible. • By the mid to late 1940’s, digital programmable computers were becoming available…the first..the ENIAC

  7. The Eniac

  8. 1955-1965: The Advent of Modern Forecasting • Numerical weather prediction became the cornerstone. • New observing technologies also had a huge impact: • Weather satellites • Weather radar

  9. Satellite and Weather Radars Provides a More Comprehensive View of the Atmosphere

  10. Camano Island Weather Radar

  11. Weather Prediction Steps • Data collection and quality control • Data assimilation: creating a physically realistic 3-D description of the atmosphere called the initialization. • Model integration. Solving the equations to produce future 3D descriptions of the atmosphere • Model output post-processing using statistical methods • Dissemination and communication

  12. Initialization Using a wide range of weather observations we can create a three-dimensional description of the atmosphere…

  13. Numerical Weather Prediction • The observations are interpolated to a 3-D grid where they are integrated into the future using a computer model--the collection of equations and a method for solving them. • As computer speed increased, the number of grid points could be increased. • More (and thus) closer grid points means we can simulate (forecast) smaller and smaller scale features. We call this improved resolution.

  14. Model Postprocessing in the U.S.: Model Output Statistics (MOS) • Main post-processing approach used by the National Weather Service • Based on linear regression: Y=a0 + a1X1 + a2X2+ a3X3 + … • MOS is available for many parameters and time and greatly improves the quality of most model predictions.

  15. Prob. Of Precip.– Cool Season(0000/1200 UTC Cycles Combined)

  16. Major Improvement Weather forecasting skill has substantially improved over the last 50 years. Really.

  17. Forecast Skill Improvement National Weather Service Forecast Error Better Year

  18. Why Large Improvement in Weather Forecast Skill? • As computers became faster, were able to solve the equations at higher resolution • Improved physics • New observational assets allowed a better initialization

  19. A More Basic Problem • There is fundamental uncertainty in weather forecasts that can not be ignored. • This uncertainty has a number of causes: • Uncertainty in initialization • Uncertainty in model physics • Uncertainties in how we solve the equations • Insufficient resolution to properly model atmospheric features.

  20. The Atmospheric is Chaotic • The work of Lorenz (1963, 1965, 1968) demonstrated that the atmosphere is a chaotic system, in which small differences in the initialization…well within observational error… can have large impacts on the forecasts, particularly for longer forecasts. • Not unlike a pinball game….

  21. Probabilistic Prediction • Thus, forecasts must be provided in a probabilistic framework, not the deterministic single answer approach that has dominated weather prediction during the last century. • Interestingly…the first public forecasts were probabilistic

  22. “Ol Probs” Cleveland Abbe (“Ol’ Probabilities”), who led the establishment of a weather forecasting division within the U.S. Army Signal Corps. Produced the first known communication of a weather probability to users and the public in 1869. Professor Cleveland Abbe, who issued the first public “Weather Synopsis and Probabilities” on February 19, 1871

  23. Ensemble Prediction • The most prevalent approach for producing probabilistic forecasts and uncertainty information…ensemble prediction. • Instead of making one forecast…make many…each with a slightly different initialization or varied model physics. • Possible to do now with the vastly greater computation resources that are now available.

  24. Verification The Thanksgiving Forecast 2001 42h forecast (valid Thu 10AM) SLP and winds • Reveals high uncertainty in storm track and intensity • Indicates low probability of Puget Sound wind event 1: cent 5: ngps 11: ngps* 8: eta* 2: eta 3: ukmo 6: cmcg 9: ukmo* 12: cmcg* 4: tcwb 7: avn 13: avn* 10: tcwb*

  25. Ensemble Prediction • Can use ensembles to provide a new generation of products that give the probabilities that some weather feature will occur. • Can also predict forecast skill. • It appears that when forecasts are similar, forecast skill is higher. • When forecasts differ greatly, forecast skill is less.

  26. Ensemble-Based Probabilistic Products

  27. Ensemble Post-Processing • To get the maximum benefits from ensembles, post-processing is needed, such as: • Correction for systematic bias • Optimal weighting of the various ensemble members--e.g., Bayesian Model Averaging

  28. The UW-MURI Project • Possibility the most advanced ensemble/postprocessing system in the world has been developed at the UW • Includes UW Atmospheric Sciences, Statistics, Psychology, and Applied Physics Lab • Remaining talks will describe some of the research and development completed by this effort.

  29. Providing forecast uncertainty information is good…. But you can have too much of a good thing…

  30. The END

More Related