Title: Lightning Studies at Florida State University
1Lightning Studies at Florida State University
- Scott D. Rudlosky
- Ph.D. Candidate, Florida State University
- Henry E. Fuelberg
- Professor of Meteorology, Florida State University
2Prof. Fuelbergs Lightning Team
- Alumni
- Dr. Phillip Shafer
- NWS/MDL - Silver Springs, MD
- Dr. Geoffrey Stano
- ENSCO/SPoRT - Huntsville, AL
- Geoffrey Wagner
- RS Information/NWS-MDL - Silver Springs, MD
- Jessica Stroupe
- NWS WFO - Slidell, LA
- Current Students
- Amanda Hansen Ph.D. Candidate
- Scott Rudlosky Ph.D. Candidate
- Holly Anderson Masters Candidate
- Pete Saunders Masters Candidate
-
3Outline
- Background
- Past Research
- NWS WFO Tallahassee
- Florida Power and Light Corp.
- Geographic Information System Applications (CSTAR
and FPL) - Total Lightning Studies (NASA - Kennedy Space
Center) - Current and Future Research
- NASA KSC
- NOAA - COMET
- NOAA/NESDIS
4NWS WFO Tallahassee
- CG climatologies by flow regime
- Jessica Stroupe (M.S.)
- Vector mean wind between 1000 -700 hPa
- For warm season months of May through September.
- First guess for daily convective activity
associated with the sea breeze. - Used as input for probability of precipitation
(PoP) grids.
5FPL Lightning Guidance
- Forecasts for the occurrence of CG Lightning
- Dr. Philip Shafer
- Originally for 13 individual FPL service areas
(roughly half the size of a county). - Earliest equations utilized morning rawindsonde
data - Focused on populated regions
- FPL shifted focus
- Developed spatial forecast guidance product for
CG across the entire state of Florida.
6Objectives
FPL Lightning Guidance
- Type A composite sea-level pressure
Type A frequency 1800-2059 Z
Type B composite sea-level pressure
Type B frequency 1800-2059 Z
7FPL Lightning Guidance
June 4, 2004 1800-2059 Z period
- Utilized perfect prognosis (PP) technique
-
- Create a high-resolution, gridded forecast
guidance product for warm season CG - Used data from the Rapid Update Cycle (RUC) model
and CG data from the National Lightning Detection
Network (NLDN). - Most important derived parameters create 3-hourly
spatial probability forecasts for - The occurrence of one or more CG flashes.
- Chance of exceeding flash count percentile
thresholds. - Binary logistic regression for one or more
flashes - Negative binomial (NB) model the amount of
lightning.
8Positive CG Lightning Study
- Characteristics of positive CG (CG) lighting in
Florida - Masters thesis for Scott Rudlosky
- Phase 5 of FPL research
- Climatologies of total CG and CG lightning
prepared - Equations to predict percentage of CG created
- Valid within 100 km radius of sounding locations
- Equations for CG had two steps
- Sounding parameters correlated with percentage of
positive strikes for overall relationship - Stepwise linear regression then utilized
9Positive CG Lightning Study
- Several conclusions possible
- Percentage Positive increases as...
- Freezing level height increases
- 1000 700 hPa wind speed increases
- Showalter Stability Index increases
- Theta E at 850 hPa increases
- Percentage Positive decreases as
- Mean mixing ratio in lowest 100 hPa increases
- Surface to 1 km shear increases
- Total Totals increases
- Pressure at -10 C increases
- Results agree with the literature in that
low-level moisture decreases the relative amount
of CG.
- Low level mean wind speed seems more influential
than shear magnitude.
10Misclassification of Cloud Pulses
- Prior to the 2002-2003 upgrade, a threshold of
10 kA was recommended. Afterwards, the
threshold was changed to 15 kA (Biagi et al
2007). - The (small) population of positive discharges
between 10-20 kA are a mix of CG and cloud
discharges (Cummins et al. 2006). - This population is far from small during the warm
season in Florida.
11Geographic Information System
- Geographic Information System (GIS) software
provides new approaches to analyze CG lightning
data. - GIS has many applications for lightning research
- Visualization of data
- Computation of cell statistics
- Locating/Analyzing strikes of interest
- Incorporation of elevation data sets
- Interrogation of multiple data sets within a
common framework - GIS Advantages
- Avoid complex Fortran gridding programs.
- Data analysis and visualization are in same
software.
12GIS Applications
- U.S. Park Service gridding tool is used to
produce a grid with the desired cell size and
spacing. - Individual strikes are joined to the grid (i.e.,
each flash is assigned a grid cell), and are then
summed and combined to produce flash densities.
22 km Grid
Individual CG Flashes
Sum of CG Flashes
13GIS Applications
- GIS files are easily manipulated for flash
densities and cell statistics. - GIS allows comparisons with other data sets
(i.e., precipitation, elevation, wildfires,
etc.). - Extremely fine grid spacing allows identification
of several grid cells with greater than 25
flashes km-2 year-1.
14GIS Applications
- Forecast equations for thunderstorm development
- By Masters Student Geoffrey Wagner
- For West Texas and New Mexico regions
- Utilize sounding, reanalysis, elevation and NLDN
data - This research differs from our previous studies
in that
- Topography is the dominant forcing mechanism.
- GIS computes the aspect ratio and slope for each
grid cell. - Study attempts to predict the initiation of
thunderstorms (i.e., the first CG flash) during a
specified time period.
Data from the United States Geological Survey
(USGS) National Elevation Dataset (NED)
15GIS Applications
- Binary Logistic Regression (BLR) techniques
developed statistical relations between lightning
initiation and candidate predictors. - Equations developed and employed to produce
deterministic and probabilistic forecasts for
thunderstorm initiation.
16GIS Applications
- Scott Rudlosky (Ph.D. Candidate) related
wildfires with CG flashes and precipitation
estimates. - Database contains the location of each wildfire,
statistics on CG within 2 km, and a 24 h
precipitation estimate. - Over 70 of all reported lightning initiated
wildfires during May, June, and July 2007 were
physically linked to CG lightning. - Positive lightning was associated with less than
7 of all lightning induced wildfires.
17Total Lightning Studies
- Our total lightning studies utilized the
Lightning Detection and Ranging (LDAR) network at
Kennedy Space Center (KSC).
- Dr. Geoffrey Stano employed a flash consolidation
algorithm to combine individual sparks into
flashes. (Murphy et al. 2000 McNamara 2002
Nelson 2002)
18Total Lightning Studies
- KSC is one of the few regions in the U.S. that
issues lightning advisories. - The U.S. Air Forces 45th Weather Squadron (45WS)
has a good record of forecasting the initiation
of lightning. - When should an advisory be canceled?
- Dr. Geoffrey Stano examined LDAR, CG, sounding,
and WSR-88D data to produce lightning cessation
guidelines.
19Current Research
2052 UTC 6 June 2007
- Continuing cessation studies
- Masters student Holly Anderson
- New techniques utilizing WDSS-II
Reflectivity at 0 C
30 dBZ Cluster
Reflectivity at -20 C
Reflectivity at -10 C
20Current Research
- Expanding CG forecast techniques to new locations
- Pete Saunders (Masters Student)
- Through COMET
- NWS WFO Pueblo, CO
- NWS WFO Pendleton, OR
- NWS WFO Sterling, VA
- Combining and applying earlier techniques
- Dr. Phil Shafer for Florida
- Geoffrey Wagner for West Texas New Mexico
Images courtesy of Steven Hodanish
21Current Research
- Ph.D. Candidate Scott Rudlosky is working on
Optimizing the Use of Lightning Data in Severe
Storm Warning Assessment. - Project relies heavily on newly developed WDSS
techniques and algorithms which have yet to be
created. - Data will include LMA/LDAR total lightning data,
NLDN CG lightning data, RUC-derived model data,
WSR-88D data, and new data sets as they become
available. - Our goal is procedures and/or guidelines to
optimally utilize total lightning data from the
GOES-R Global Lightning Mapper (GLM), thereby
leading to more accurate severe storm warnings.
22Conclusions
- The Fuelberg Lightning Group at Florida State
University continues to focus on operational
lightning research. - This approach has benefited both the public (NWS,
NASA, KSC, FDOF) and private (FPL) sectors. - Our research fits into four general categories
- Forecasting CG lightning in the 0-24 h time range
- Forecasting lightning cessation
- Analyzing the relationship between environmental
conditions and lightning patterns within severe
and non-severe storms - Relating lightning and precipitation to the
initiation of wildfires
23Conclusions
- Several key aspects include
- Newly developed GIS techniques
- Algorithm creation within the WDSS-II software
- Collaborations with the public and private
sectors - Innovative tools and procedures
- Preparing for new datasets to help ease
transition - Looking ahead to the GLM and polarimetric radar
- Will have the tools necessary to make optimal use
of these data
24References
- Lakshmanan, V., T. Smith, G. J. Stumpf, and K.
Hondl, 2007 The warning decision support system
- integrated information (WDSS-II). Weather and
Forecasting, 22, No. 3, 592-608. - Â
- Lericos, T. P., H. E. Fuelberg, A. I. Watson, and
R. L. Holle, 2002 Warm season lightning
distributions over the Florida peninsula as
related to synoptic patterns. Wea. Forecasting,
17, 83-98. - Â
- McNamara, T. M., 2002 The horizontal extent of
cloud-to-ground lightning over the Kennedy Space
Center, M.S. Thesis, Air Force Institute of
Technology, 114 pp. - Murphy, M. J., K. L. Cummins, and L. M. Maier,
2000 The analysis and interpretation of
three-dimensional lightning flash information.
16th Int. Conf. on IIPS for Meteorology,
Oceanography, and Hydrology, Long Beach, CA,
Amer. Meteorol. Soc., 102-105. - Nelson, L. A., 2002 Synthesis of 3-dimensional
lightning data and radar to determine the
distance that naturally occurring lightning
travels from thunderstorms, M.S. Thesis, Air
Force Institute of Technology, 85 pp. - Rudlosky, S.D., and H. E. Fuelberg, 2007
Characteristics of positive cloud-to-ground
lightning. M.S. Thesis, Florida State University. - Â
- ___, and ___, 2007 The relation between
lightning and wildfires in Florida, Third
Conference on Meteorological Applications of
Lightning Data, American Meteorological Society
(AMS), New Orleans, Louisiana, Jan 21 Jan 23,
2008, P2.6. - Â
Shafer, P. E., and H. E. Fuelberg, 2006 A
statistical procedure to forecast warm season
lightning over portions of the Florida peninsula.
Wea. Forecasting, 21, 851-868. Â ___, and ___,
2007 A perfect prognosis scheme for forecasting
warm season lightning over Florida. Accepted by
Mon. Wea. Rev. Â Smith, J. R., H. E. Fuelberg,
and A. I. Watson, 2005 Warm season lightning
distributions over the northern Gulf of Mexico
coast and their relation to synoptic-scale and
mesoscale environments. Wea. Forecasting, 20,
415-438. Â Stano, G. T., 2007 Developing
empirical lightning forecast guidance for the
Kennedy Space Center. Ph.D. Dissertation,
Florida State University. Â Wagner, G. A., H. E.
Fuelberg, D. Kann, R. Wynn, and S. Cobb, 2005 A
GIS-based approach to lightning studies for west
Texas and New Mexico. Second Conference on
Meteorological Applications of Lightning Data,
American Meteorological Society (AMS), Atlanta,
Georgia, Jan 30 Feb 1, 2006. Â Wolf, P., 2006
Anticipating the initiation, cessation, and
frequency of cloud-to-ground lightning utilizing
WSR-88D reflectivity data, available from the
author at NWS Jacksonville FL.
25- Lightning Parameterization Module
- WRF CHEM
- Accurately specify NOx produced by lightning
- Tropospheric ozone forecasts
- WDSS-II
- Relate storm parameters to lightning