1 / 35

The Need for and Feasibility of a Global Lightning Detection Network

The Need for and Feasibility of a Global Lightning Detection Network. Frederick R. Mosher NWS/NCEP Aviation Weather Center. Potential Users of Global Convection Information. Aviation (safety and routing)

alessa
Download Presentation

The Need for and Feasibility of a Global Lightning Detection Network

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. The Need for and Feasibility of a Global Lightning Detection Network Frederick R. Mosher NWS/NCEP Aviation Weather Center

  2. Potential Users of Global Convection Information • Aviation (safety and routing) • Initialization of Numerical Models (storms in right places; redistribution of energy and mass) • Precipitation Monitoring (hydrology, agriculture) • General Circulation and Climate Studies (redistribution of mass and energy)

  3. SIGMETs • A SIGMET (SIGnificant METeorological Information) advises of weather potentially hazardous to all aircraft. Hazards covered are: • Significant convection • Severe icing • Severe or extreme turbulence • Duststorms and sandstorms lowering visibilities to less than three statute miles • Volcanic Ash

  4. US Areas of International SIGMET Responsibilities

  5. Convective Hazard Detection • Geostationary satellite infrared images traditionally used to monitor convection over the oceans. • Experimental Vaisala Long Range Lightning Detection Network used to supplement satellite images within 2000-3000 km of US/Canada.

  6. Methods for Geostationary Monitoring of Convection • Infrared Temperature of Clouds • Multi-channel feature identification • Channel differences (GCD)

  7. GCD Identification of Updrafts • For deep convective clouds, updraft brings cloud particles and water vapor to top of cloud. (IR and Water Vapor temperature are the same) • Clouds drifting away from lift will allow cloud particles to fall. Water Vapor will remain at original level. (IR and WV temperatures will be different)

  8. GCD Thunderstorm Detection Tir=Twv Tir>Twv

  9. Algorithm Processing • IR-Water Vapor temperatures differences in original satellite projections. • Temperature differences mapped into 10 km global latlon equidistance projection with parallax correction for 10 km high cloud. • Data limited to within 65 degrees of satellite subpoint. • Most timely data on top for data overlaps.

  10. Algorithm Processing (cont) • Temperature difference of 1 degree or less are considered convective. • Lifted index (from AVN) of +1 or less used to eliminate any detection from non convective clouds (such as cirrus from ageostrophic lifting).

  11. GCD vs IR <-55C

  12. GCD vs Lightning

  13. GCD (red) World View

  14. GCD Verification • National Convective Weather Diagnostic (NCWD) used as ground truth • NCWD generated from radar and lightning data over the US (see http://cdm.aviationweather.noaa.gov/ncwf/ for real time NCWD) • Verification done using FSL Real Time Verification System (RTVS). • http://www-ad.fsl.noaa.gov/fvb/rtvs/conv/index.html

  15. GCD vs. NCWD 9/7/01 22:15Z

  16. Verification Summary • GCD PODy=.44 • GCD PODn=.99 • GCD Bias=2.78 • For comparison: • Conv. SIGMET PODy=.44 (0 hr) • Conv. SIGMET PODn=.99 • Conv. SIGMET BIAS=1.39

  17. FAA Sponsored Ocean Weather Product Development Team (PDT) • Focus on techniques for detecting and forecasting convective hazards to aircraft over the oceans. • Several different satellite techniques have been developed and intercomparison efforts are attempting to determine the strengths and weaknesses of each method.

  18. Utilization of NASA TRMM Satellite Information to Evaluate OW Algorithm Products Lightning Imaging Sensor (LIS) not shown

  19. Observations of TRMM PR data thundercloud profile cumulonimbus cloud profile

  20. 10 June 2002 OW Product Performance

  21. Summary of 1st Inter-comparison • Distinctions made between thunderstorms and cumulonimbus clouds using TRMM LIS data • Satellite products perform well at identifying both types of clouds but unable to make distinctions between the two

  22. 2nd Inter-comparison: 26-31 March 2003 Pacific sector 20N – 0N, 150W – 120W (area: 6.94x106 km2) 21:00 – 03:00 UTC South American sector 10N – 20S, 80W – 50W (area: 10.91x106 km2) 18:00 – 00:00 UTC • Sectors selected based on high likelihood of air mass thunderstorms over land and deep convection in ITCZ • Analysis performed during TRMM intersects – Pacific (14) South America (8)

  23. Overall Assessment of Inter-comparisons • In terms of satellite product performance: • All perform well at identifying continental convection but exaggerate presence of maritime convection • All perform well at identifying the clouds posing the greatest hazard to aviation, i.e. thunderstorms • NRL cloud class more responsive at detecting convective cells in early developmental stage • False alarm/hit ratios are dramatically higher over ocean vs. land • Reflectivity profiles of oceanic events indicate that most are weakly developed in the mixed phase region

  24. Implications of Intercomparisons • Satellites image techniques can not distinguish between hazardous thunderstorms and non hazardous convective clouds. • Lightning detection data is needed to identify thunderstorm hazards over the oceans.

  25. Thunderstorms Require Charge Separation • Thunderstorm charge separation typically requires existence of graupel. • Graupel formation requires an updraft speed of 7-10 m/sec. • Thunderstorm Project observed aircraft severe turbulence for updrafts > 10m/sec • Existence of lightning can be used distinguish convective updrafts >7-10m/sec.

  26. Vaisala Maritime Data

  27. Long Range Lightning Detection Vaisala VLF/LF sensors (IMPACT and LPATS) are very responsive to ionospherically-propagated electromagnetic signals, in the VLF frequency range. Thus, they are able to detect remote lightning events that occur at great distances. During the daytime, the long-range lightning data is generally available out to 1200-2400 NM (2000-4000 km) from the sensors with a DE of 10-20%. At night the range increases to 2400-4800 NM (4000-8000 km) and the DE to 10-30%.

  28. PacNet Configuration • Employs Five (5) IMPACT ESP Long Range VLF Sensors: • Hawaiian Islands [Kauai and Midway Islands] • Dutch Harbor, Alaska • Kwajalein Atoll • Other Pacific islands • Also Employs Long-Range Data Detected by the: • National Lightning Detection Network • Canadian Lightning Detection Network • Data Processed at Vaisala-GAI Network Control Center-Tucson • Will begin operations early 2004.

  29. Median Detection Efficiency - NALDN + PacNet Projection Based on Long-range Configuration

  30. Median Location Accuracy NALDN + PacNet Projection Based on Long-range Configuration

  31. MINIMUM CARIBNET DE W/7 VLF SENSORS

  32. Potential Network- NORTH ATLANTIC

  33. Global Coverage • 80-100 VLF sensors would be needed for global coverage. • Projected total cost of CARIBNET was $400K/yr for 7 sensor network. • Extrapolated cost of global network would be $5M per year. • Comparable in extend and cost to NLDN for US coverage.

  34. Complimentary data source:NASA Lightning Mapper May Fly on upcoming GOES-R (2012)

  35. Conclusions • Advanced satellite thunderstorm detection algorithms have not been able to demonstrate the ability to distinguish thunderstorms from weaker convection over the oceans. • Lightning data is needed over the oceans to identify thunderstorms hazardous to aviation. • Technology exists that could be utilized for global lightning detection if funding sources could be identified ($5M/yr) .

More Related