1 / 24

Aiding Severe Weather Forecasting

WDSS-II is an integrated set of tools for severe weather analysis, diagnosis, and prediction, including algorithms for hail, tornadoes, wind, lightning, and storm tracking. It provides a 4D display and allows for post-event validation and continuous learning.

giuseppec
Download Presentation

Aiding Severe 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. Aiding Severe Weather Forecasting Valliappa.Lakshmanan@noaa.gov National Severe Storms Laboratory Norman OK, USA http://www.wdssii.org/

  2. What is WDSS-II? • The Warning Decision Support System – Integration Information (WDSS-II) • An integrated set of loosely coupled tools for: • Severe weather diagnosis • A collection of meteorological algorithms for severe weather analysis, diagnosis and prediction • Hail, tornadoes, wind, lightning, storm tracking • Image processing • Statistical validation • Ground-truth verification • Users chain the tools together to accomplish their tasks. lakshman@ou.edu

  3. WDSS-II algorithms • WDSS-II algorithms are essentially data filters • Takes some data as input • Produces new data as output • One can specify the scientific/validation processing in the middle • Without having to worry about data ingest, data formats, notification, etc. • But provide a library of common computations on the typical data used. lakshman@ou.edu

  4. WDSS-II in the forecast office • How can WDSS-II help at the forecast office? • New algorithms • Interactive 4D display capabilities • Multi-sensor case studies • Post-event validation • Continuous learning • WDSS-II may not be the “official” solution • But the official solutions should draw on the lessons we have learnt. lakshman@ou.edu

  5. Single-radar/Multi-sensor algorithms • Some single-radar (multi-sensor) algorithms in WDSS-II lakshman@ou.edu

  6. Multi-radar/multi-sensor algorithms • A typical multi-radar deployment of WDSS-II lakshman@ou.edu

  7. WDSS-II in the forecast office • How can WDSS-II help at the forecast office? • New algorithms • Interactive 4D display capabilities • Multi-sensor case studies • Post-event validation • Continuous learning lakshman@ou.edu

  8. Display • The WDSS-II display • Provides 4D analysis capabilities • Interactive slicing and dicing • Can display all kinds of products • Configurable and extensible • Not tied to particular sites, product codes or times. • On Linux and Windows • WDSS-II tools exist for • Export to GIS, image and spread-sheet formats lakshman@ou.edu

  9. WDSS-II in the forecast office • How can WDSS-II help at the forecast office? • New algorithms • Interactive 4D display capabilities • Multi-sensor case studies • Clustering and storm tracking • Storm-attribute trends • Post-event validation • Continuous learning lakshman@ou.edu

  10. Motion Estimation • Uses K-Means clustering and Kalman filters 30 min 30 min Actual dBZ Forecast dBZ lakshman@ou.edu

  11. Need for new approach • Traditional centroid tracking • Accurate at small scales, but not at large scales • Inaccurate when storms merge or split • Possible to extract trends from the information • Flow-based tracking • Cross-correlation, Lagrangian methods, etc. • Are accurate at large scales, but not at small scales • Not useful in decision support because trends of storm properties can not be extracted lakshman@ou.edu

  12. K-Means clustering • K-Means clustering is a hybrid approach • Cluster the input data to find clusters • Like centroid-based tracking methods • But at different scales. • Track the clusters using flow-based methods (minimization of cost-functions) • Like flow-based methods • Does not involve cluster matching (e.g: Titan) lakshman@ou.edu

  13. Example clusters • Two different scales shown • Both scales are tracked lakshman@ou.edu

  14. Extrapolation • Smooth the motion estimates • spatially using OBAN techniques (Gaussian kernel) • temporally using a Kalman filter (assuming constant velocity) • Repeat at different scales and choose scale appropriate to extrapolation time period. lakshman@ou.edu

  15. WDSS-II in the forecast office • How can WDSS-II help at the forecast office? • New algorithms • Interactive 4D display capabilities • Multi-sensor case studies • Clustering and storm tracking • Storm-attribute trends • Post-event validation • Continuous learning lakshman@ou.edu

  16. Trends • The clusters can be used to extract trends of any gridded field. • Configurable to extract minimum, maximum, count, sum, time-delta, etc. of gridded fields within cluster • Even fuzzy combination of multiple fields • Extremely useful for warning decision making! • Statistical properties of storms • Which clusters are convective? • Trends in rain-rates … • Which storms intensified after a warning was issued? • Trends in cloud-top temperatures … lakshman@ou.edu

  17. WDSS-II in the forecast office • How can WDSS-II help at the forecast office? • New algorithms • Interactive 4D display capabilities • Multi-sensor case studies • Post-event validation • Continuous learning lakshman@ou.edu

  18. Polygon statistics • Using cluster trends is useful for deriving storm properties. • What about extracting statistics around a fixed location? • Validating probabilistic guidance • Maybe at areas of particular interest? • NASA launch sites • Sporting events • WDSS-II has a tool … lakshman@ou.edu

  19. Statistics of watch and warning polygons • WDSS-II can provide polygon statistics from any gridded field(s) • And these polygons can change with time • Watch and warning polygons • Improved validation of watches and warnings. • Does it help to say that 90% of the time that a tornado watch is issued, low-level shear greater than X is observed on radar within the watch area? lakshman@ou.edu

  20. Post-event • The polygons can be used to examine the decision-making process • Post-event • For case-studies • Easy to run through a whole bunch of data from various sensors • Examine the behavior of various gridded fields. • Compare to reports, radar observations, etc. • Export to GIS/image/spreadsheet formats • Move from anecdotal to statistical lakshman@ou.edu

  21. WDSS-II in the forecast office • How can WDSS-II address some of the issues at the forecast office? • New algorithms • Interactive 4D display capabilities • Multi-sensor case studies • Post-event validation • Continuous learning lakshman@ou.edu

  22. Continuous Learning • In real-time … • The polygons can be watched in real-time • The statistics updated in real-time • On observations that arrive in near real-time • Why not do the “post-event” analysis during the event? • Continuous feedback on existing watches • Forecasters can mark certain areas and indicate characteristics they are interested in. • And the automated monitoring can tell them if/when those characteristics are met. • More information to emergency managers • Based on polygons being “watched” for certain characteristics. lakshman@ou.edu

  23. Current uses of WDSS-II in the NWS • WDSS-II is a leading edge system • Provides capabilities not yet in the “official” National Weather Service systems. • But getting these capabilities in hasn’t been easy • The Storm Prediction Center • defines daily threat areas • launch a WDSS-II domain • automatically configures the data ingest and starts the algorithms. • HPCC project: WDSS-II products into GRIB2, GEMPAK and onto N-AWIPS • Pioneer grant: increase size of WDSS-II domain to near-CONUS scale • NWS forecast offices • WDSS-II products are converted into AWIPS format and piped to AWIPS displays in several NWS forecast offices. • But the AWIPS display is too restrictive. Therefore … • The 4D WDSS-II display can be implemented as a separate app on AWIPS but controlled from within D2D. • Consider WDSS-II concepts for next redesign of AWIPS? • Algorithm development capabilities • 4D visualization • Multi-sensor algorithms • Adaptive algorithms (forecaster-algorithm feedback loop) lakshman@ou.edu

  24. Summary • How can WDSS-II help in the forecast office? • New algorithms • Better guidance • Interactive 4D display capabilities • Improved analysis • Multi-sensor case studies • More science in the forecast office • Post-event validation • Better metrics • Continuous learning • Growing warning decision making expertise lakshman@ou.edu

More Related