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Operational Implementation of an Objective Annular Hurricane Index Andrea B. Schumacher 1 , John A. Knaff 2 , Thomas A. Cram 1 , Mark DeMaria 2 , James P. Kossin 3. 1 CIRA, Colorado State University, Fort Collins, CO 2 NOAA/NESDIS, Fort Collins, CO
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Operational Implementation of an Objective Annular Hurricane Index Andrea B. Schumacher1, John A. Knaff2, Thomas A. Cram1, Mark DeMaria2, James P. Kossin3 1CIRA, Colorado State University, Fort Collins, CO 2NOAA/NESDIS, Fort Collins, CO 3CIMSS, University of Wisconsin-Madison, Madison, WI
Overview • Annular hurricanes: structural characteristics • General environmental conditions • Intensity characteristics: Motivation for objective prediction scheme • Objectively determining annular structure: Annular Hurricane Index • Step 1: Screening • Step 2: Linear discriminant analysis • Verification • Operational example: Daniel 2006 (EP05)
Annular Hurricane Structure • Distinctly axisymmetric • Large circular eyes • Greatly reduced rainband activity • Lasts at least 3 hours • Rare, occur ~4% of the time Isabel (2003)
Environmental Conditions • Weak Easterly/Southeasterly Wind Shear • Weak Relative Eddy Flux Convergence • 200 hPa Easterlies • SSTs in a range 25.4 to 28.6 °C steady or decreasing. OR • Weak Easterly shear, under an upper ridge, over SST <28.6 °C ALSO • Intensity > 85 kt (Knaff et al. 2003)
Annular Hurricane Intensity Characteristics • Do not weaken rapidly after max intensity • Intensity is very close to 85% MPI wrt SST • Have large intensity biases & larger than normal intensity errors
Determining Annular Structure Yellow = Structure Blue = Environment
AHI Step 1: Screening +/- 3 standard deviations from means of AH’s (1995-2003) 976 (54 AH) cases (6h) > 84 kt intensity 241 cases after screening (53 AH) Hit Rate = 100%, False Alarm Rate = 19%
AHI Step 2: Linear Discriminant Analysis (Overview) • Graphical Interpretation of LDA for Case With 2 Predictors (x,y) and 2 Groups DF=0 DF = c0 + c1x + c2y Coordinate transformation that provides maximum separation of groups (From www.doe-mbi.ucla.edu) Refs: Wilks (2006), Hennon & Hobgood (MWR, 2003)
AHI Step 2: Linear Discriminant Analysis (cont…) • Only predictors with significant annular vs. non-annular differences in means were used** • SST • U200 – 200 hPa zonal winds • σc– azimuthal standard deviation of BTs at Rc • VAR –variance of azimuthally-averaged BTs from TC center to 600 km • ΔT eye- max difference between Rc and any azimuthally-averaged BT at smaller radius ** exceeds 95% confidence level using Student’s T test
Verification • Dependent Years (1995-2003) • Independent Years (2004-2006) STEP 1: Screening Reduced 941 (54) cases to 241 (53) FAR = 19% STEP 2: LDA “N” LDA “Y” Hit Rate ~ 87 % FA Rate ~ 6 % NAH AH STEP 1: Screening Reduced 387 (7) cases to 82 (7) FAR = 19% STEP 2: LDA “N” LDA “Y” Hit Rate ~ 100 % FA Rate ~ 4 % NAH AH
AHI Output & Interpretation • If case doesn’t pass screening, AHI set to 0. • If screening is passed, LDA function value is linearly scaled to obtain the Annular Hurricane Index, which ranges between 1 & 100. • AHI is displayed at the end of the SHIPS model output file. AHI = 0 No annular structure AHI = 1 Worst match to annular structure AHI = 100 Best match to annular structure
Example: Daniel 2006 7/20/06 0Z, vmax=95 kt AHI = 0 7/22/06 0Z vmax = 130 kt AHI = 100 7/21/06 0Z, vmax=120 kt AHI = 50
Summary • AHI is an objective algorithm that determines the likelihood of annular structure in an existing hurricane using SHIPS environmental predictors and 6-hr storm-centered GOES IR imagery • For the period 1995-2006, the AHI algorithm had a hit rate of 96% and a false alarm rate of 4% • The AHI will be tested in a real-time operational setting, running concurrently with the SHIPS model, at the National Hurricane Center during the 2007 hurricane season. • After the 2007 season, if evaluation of the algorithm is favorable the transition to an operational product will be pursued