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THE NESDIS TROPICAL CYCLONE FORMATION PROBABILITY PRODUCT: PAST PERFORMANCE AND FUTURE PLANS Andrea B. Schumacher, CIRA Mark DeMaria, NOAA/StAR John A.

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Presentation on theme: "THE NESDIS TROPICAL CYCLONE FORMATION PROBABILITY PRODUCT: PAST PERFORMANCE AND FUTURE PLANS Andrea B. Schumacher, CIRA Mark DeMaria, NOAA/StAR John A."— Presentation transcript:

1 THE NESDIS TROPICAL CYCLONE FORMATION PROBABILITY PRODUCT: PAST PERFORMANCE AND FUTURE PLANS Andrea B. Schumacher, CIRA Mark DeMaria, NOAA/StAR John A. Knaff, NOAA/StAR Daniel Brown, NOAA/NWS TPC 61 st Interdepartmental Hurricane Conference, 3.6.08

2 Motivation  Create a product that provides objective, real-time TC formation guidance  Current NHC TC formation guidance subjective Working on developing probabilistic forecasts of TC formation (although still relatively subjective) Benefit from objective guidance  What about models? As resolution gets finer, forecast models gets better at handling TC formation However, still bias towards over-prediction (Beven 1999)

3 Approach  Use what we already know about TC formation (i.e., environmental and convective parameters)  Use the statistical process of linear discriminant analysis (Perrone & Lowe 1986, Hennon & Hobgood 2003, Knaff et al. 2008)  Compute 24-hour probability of TC formation over all 5 x 5 lat/lon grid boxes in domain

4 Approach  Use what we already know about TC formation (i.e., environmental and convective parameters)  Use the statistical process of linear discriminant analysis (Perrone & Lowe 1986, Hennon & Hobgood 2003, Knaff et al. 2008)  Compute 24-hour probability of TC formation over all 5 x 5 lat/lon grid boxes in domain “A Needle in a Haystack” Ratio of TC formation to non- formation points ~ 1:2000 Maximum climatological formation probability ~1.8% (E. Pacific)

5 Datasets  NHC/DOD Best Tracks 1949-2005  Atlantic, E. Pacific, Central Pacific & W. Pacific  Subtropical/Extratropical cases excluded  Unnamed depressions included since 1989  NCEP Global Model Analyses 1995-2005  Reanalysis 1995-1999 (2.5 o grid)  Operational Analyses 2000-2005 (2.0 o grid)  Geostationary Satellite Water Vapor Imagery (16 km Re-mapped Mercator projection)  GOES-E 1995-2005  GOES-W 1998-2005  GMS-5 / GOES-9 / MTSAT-1R 2000-2005

6 Parameters ABBREVParameter DescriptionSource LATLatitude ( ° )ATCF PLAND% land coverage DSTRMDistance to nearest TC (km)ATCF CSSTClimatological sea surface temp ( ° C)Levitus VSHEAR850-200 hPa vertical shear (kt)NCEP GFS CIRC850 hPa circulation (kt)NCEP GFS THDEVVertical instability ( ° C)NCEP GFS HDIV850 hPa horizontal divergence (m/s)NCEP GFS PCCOLD% coverage by pixels colder than 40 CSat WV BTWARMAvg. cloud-cleared brightness temp ( ° C)Sat WV CPROBClimatological formation probabilityBest Track

7 Product Algorithm NCEP GFS Analyses Water Vapor Imagery Current TC Positions Screening StepLDA Step Probability of TC formation Remove all points from dataset for which TC formation is highly unlikely (< 5 % of TCG points removed) Use dependent dataset to determine probabilities associated with each discriminant function value

8 Recent Product Updates  Added 2004 & 2005 to dependent dataset  Expanded to cover Central and Western N. Pacific basins  Uses GOES-E, GOES-W and MTSAT-1R water vapor imagery, divides domain into 3 basins (below)  Added HDIV (850 hPa horiz. divergence) parameter  Scheduled to be operational Summer 2008

9 Parameter Contributions By Basin ABBREVATLCEPACWPAC LAT PLAND-0.21-0.27-0.20 DSTRM0.800.681.15 CSST VSHEAR-0.37-0.22-0.17 CIRC1.331.411.59 THDEV HDIV-0.22-0.39-0.33 PCCOLD0.630.290.56 BTWARM CPROB1.471.670.88

10 Product Performance

11 Reliability Diagrams  Both dependent years (orange) and independent years (green) show good agreement between predicted and observed TC formation probabilities  E. Pacific basin diagram suggests the actual TC formation probability may be greater than what the TCFP product predicts at higher probabilities – may need correction

12 Verification – Relative Operating Characteristic and Brier Scores  In this framework, TC formation is extremely rare (Ratio of TC form to non-form ~ 1:2000)  Typical metrics are not valid for such rare events. However, we can use metrics that compare TCFP product to climatology  Brier Skill Score: BSS = 1 - BS/BS ref  ROC Skill Score: RSS = ROC/ROC ref - 1 Brier Score, BS = 1/N Σ i=1,n (p i -o i ) 2, where p i and o i are the predicted and observed probability for case i, respectively ROC is the area under the plot of hit rate vs. false alarm rate for various probability thesholds.

13 Skill Scores & Interpretation  BSS positive but small  ???  RSS for E. Pacific much smaller than others  hard to beat climatology in that basin Dependent YearsIndependent Years Basin: ATLCEPACWPACATLCEPACWPAC BSS0.0120.0240.0250.0100.0320.021 All BSS > 0  skill over climatology RSS0.210.010.22.11.01.17 All RSS > 0  skill over climatology

14 Summary  TCFP has been

15 Future Plans & Improvements  Expand domain to include S. Hemisphere & Indian Ocean  Extend forecast period from 24 h to 48 h +  Use GFS forecast fields  Analyze global water vapor strip to identify upstream predictors, particularly convective signatures associated with tropical waves (Frank and Roundy 2006)  Identify new parameters to add to algorithm  TAFB invest locations and intensities (D. Brown)

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17 Definition of Formation  Practical Definition of TC Formation:  The first point in the best track  Excludes extratropical, subtropical, wave, remnant low, disturbance designations TC Formation Locations 1949-2005

18 Conditions playing role in TCG  Gray (1968), Simpson (1971), Hebert (1978)  Gray (1975, 1979), DeMaria, Knaff and Connell (2001)  Parameter for the tropical Atlantic, combining satellite data and model analyses  Perrone and Lowe (1986), Hennon and Hobgood (2003)  Linear discriminant analysis in disturbance-relative environment  Approach:  Generalize PL86 and HH03.  Create real-time product that estimates the probability of TC formation within the next 24 hours in each 5 o by 5 o lat/lon area in domain.

19 Step 2: Screen Data SCREENING PARAMETER ELIMINATION CRITERIA ATLCEPACWPAC Latitude (°N)<5.0 Land Coverage (%)≥100 Distance to Nearest TC (° lat/lon)<2.5 Max Climatological SST (°C)<21.0 200-850 hPa Vertical Shear (m s -1 )>25.215.919.5 850 hPa Circulation (m s -1 )<-1.5-1.2-0.9 Vertical Instability (°C)<-2.6-3.01.6 850 hPa Horizontal Divergence (x 10 -5 s -1 ) >1.00.70.5 Cold Pixel Count (%)<2.85.03.0 Avg. Cloud-Cleared Brightness Temp. (°C) >-25.4-23.1-27.8  Purpose: Remove all points from dataset for which TC formation is highly unlikely  Approximately 5% of TC formation cases removed, while 75-80% of non- formation cases removed  Ratio of TCG to NTCG cases ~ 1 to 300-600

20 LDA cont… ATLCEPACWPAC PLAND-0.21-0.27-0.20 CPROB1.471.670.88 VSHEAR-0.37-0.22-0.17 CIRC1.331.411.59 PCCOLD0.630.290.56 HCONV-0.22-0.39-0.33 DSTRM0.800.681.15  CPROB, CIRC and DSTRM are largest contributors in all 3 basins  Ratio of TCG to NTCG cases ~ 1 to 7-17, but also reduced hit rates to 9-15%.  LDA produces a binary prediction scheme, whereas a probabilistic scheme is desired Standardized LDA coefficients for each parameter, each basin

21 Step 3: Linear Discriminant Analysis All dependent data points belong to one of two groups: TC formation or non-formation cases. The goal of linear discriminant analysis is to distinguish which group a data point belongs to, based on its environmental & convective parameter values x 1,x 2,…,x k. This is done by solving for coefficient values a 1,a 2,…,a k so that LDA determines a 1,a 2,…,a k so as to maximize the distance between the group means for each parameter in standard deviation units. DF=0 Graphical Interpretation of LDA for Case With 2 Predictors (x,y) and 2 Groups (From www.doe-mbi.ucla.edu)

22 TC Formation Parameters  Algorithm required a set of parameters believed important to TC formation: ABBREVPARAMETER LATLatitude (°N) PLANDLand Coverage (%) DSTRMDistance to Nearest TC (° lat/lon) CSSTMax Climatological SST (°C) VSHEAR200-850 hPa Vertical Shear (m s -1 ) CIRC850 hPa Circulation (m s -1 ) THDEVVertical Instability (°C) HDIV850 hPa Horizontal Divergence (x 10 -5 s -1 ) PCCOLDCold Pixel Count (%) BTWARMAvg. Cloud-Cleared Brightness Temp. (°C) CPROBClimatological TC Formation Probability

23 The TCFP Algorithm  Step 1: Compute parameter values for each 5 ° x 5 ° sub-region in the analysis domain at each analysis time (0, 6, 12 and 18 UTC)  Due to temporal inconsistencies in satellite availability, algorithm was independently applied to each of the 3 basins (below). NCEP GFS Analyses + Water Vapor Imagery+ Current TC Positions Screening StepLDA Step Probability of TC formation

24 Product Development  To derive a probabilistic scheme, the LDA function values are related to probabilities using the dependent cases  Example: Atlantic basin Interval #f min f max # TCG# NTCGPROB (%) 1-18.099-8.11663153260.0209 2-8.11-6.70167571230.1173 3-6.701-5.83466193760.3406 4-5.834-4.85267141650.473 5-4.852-3.896786270.7766 6-3.89-3.1726642811.5417 7-3.172-2.1666742301.5839 8-2.166-0.8696631572.0906 9-0.8690.7396718323.6572 100.7397.1026711026.0799

25 Other Projects & Interests  Developing simple inner core SST cooling parameterization that uses translational speed, intensity and OHC  Update SHIPS param, which uses latitude and translational speed only  Societal impacts of landfalling hurricanes  Quick Response Grant, 2008  Hope to improve understanding of the needs of pet care professionals during disasters

26 Additional Slides… If Needed

27 Product Verification – Annual Integrated Probability

28 Super Typhoon Sepat  http://rammb.cira.colostate.edu/products/tc_realtime/storm.asp?storm_identifier=WP092007 http://rammb.cira.colostate.edu/products/tc_realtime/storm.asp?storm_identifier=WP092007


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