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A Preliminary Verification of the National Hurricane Center’s Tropical Cyclone Wind Probability Forecast Product. Jackie Shafer Scitor Corporation Florida Institute of Technology – Department of Marine and Environmental Systems March 6, 2008. Overview. Introduction Methodology Results
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A Preliminary Verification of the National Hurricane Center’s Tropical Cyclone Wind Probability Forecast Product Jackie Shafer Scitor Corporation Florida Institute of Technology – Department of Marine and Environmental Systems March 6, 2008
Overview • Introduction • Methodology • Results • Conclusions • Questions
Introduction • Evaluate performance of Tropical Cyclone Wind Probability Forecast Product • Issued by National Hurricane Center • Related Study: Dr. John Knaff and Dr. Mark DeMaria • Entire Atlantic Basin for 2006 Hurricane Season • This Project: • 2004 – 2007 Hurricane Seasons • Florida East Coast: Jacksonville - Miami
Methodology • Data Collection • 2004 Hurricane Season • Provided by Dr. Mark DeMaria • 2005 – 2007 Hurricane Seasons • Provided by NHC
Determine if the wind speed criteria “occurred or “did not occur” during each forecast time interval for each event Methodology cont’d… • 12 h Forecast Interval: 0600z – 1800z on 09/04/2004 • ≥34Kt occurred in: • Cocoa Beach • Fort Pierce • West Palm Beach • Miami • ≥34Kt did not occur in: • Jacksonville • Daytona Beach
Methodology cont’d… • Classification of Probability Forecasts • “Hit”: Event Forecast to Occur, Event Occurred • “Miss”: Event Forecast Not to Occur, Event Occurred • “False Alarm”: Event Forecast to Occur, Event Did Not Occur • “Correct Negative”: Event Forecast Not to Occur, Event Did Not Occur Table 1: Contingency Table showing classification of each probability forecast
Methodology cont’d… • Probability of Detection (POD): The fraction of the observed events that were correctly forecast • Probability of False Detection (POFD) “False Alarm Rate”: A measure of the product’s ability to forecast non-events Range: 0 to 1; Perfect Score: 1 Range: 0 to 1; Perfect Score: 0
Methodology cont’d… Table 1: Contingency Table showing classification of each probability forecast Probability of Detection: Probability of False Detection; “False Alarm Rate”:
0% 8% “Optimal Threshold” 100%
Methodology cont’d… • Classification of Probability Forecasts • “Hit”: Event Forecast to Occur, Event Occurred • “Miss”: Event Forecast Not to Occur, Event Occurred • “False Alarm”: Event Forecast to Occur, Event Did Not Occur • “Correct Negative”: Event Forecast Not to Occur, Event Did Not Occur Table 1: Contingency Table showing classification of each probability forecast
Forecast Interval Threshold 12 h 5% 24 h 10% 36 h 10% 48 h 12% 72 h 9% 96 h 4% 120 h 2% Forecast Interval Threshold 12 h 1% 24 h 5% 36 h 10% 48 h 9% 72 h 4% 96 h 3% 120 h 1% Forecast Interval Threshold 12 h 2% 24 h 1% 36 h 4% 48 h 9% 72 h 2% 96 h 1% 120 h 1%
Statistics • Probability of Detection • Probability of False Detection • False Alarm Ratio • Threat Score • Bias Score • Accuracy • True Skill Statistic
Conclusions • The product performs well • Product shows high accuracy (0.98 to 0.66) between 12-Hr and 120-Hr, respectively • Product adequately distinguishes observed events from non-observed events: • TSS ranges from 0.97 to 0.25 for the 12-Hr to 120-Hr, respectively • Probabilities that may seem small or unimportant are actually significant
So What? • Results will be useful for: • Operational decisions at CCAFS and KSC • Shuttle Rollback • Payload Protection • Personnel Evacuation • Risk Management • Evaluating Cost-Risk-Benefit Ratios for evacuation decisions • Additional Areas of Interest: • Corpus Christi, TX • New Orleans, LA • Charleston, SC Questions?