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Explore the importance of probabilistic hurricane surge forecasts in decision-making processes for hurricane protection systems. Learn about the variability in thresholds and economic considerations affecting forecast accuracy. Gain insights into the advancements and challenges in predicting hurricane intensity, error margins, and the influence of track forecasts on landfall predictions. Delve into the statistical characteristics of forecasting errors and the significance of uncertainty in extreme weather events. Discover methods for integrating uncertainty into hurricane surge forecasts for better risk assessment.
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Probabilistic Forecasts of Hurricane Surges • Motivation – expensive but critical operations are (will be) made in Hurricane Protection System • Thresholds – depend on many factors and can vary significantly throughout a region • Economics – these decisions can be highly influenced by cost
Considerable progress in predicting hurricane intensity over the last 20 years – 50% over last 20 years.
Cross-track & Along-track Error Along track error std. dev is higher than cross track error. Avg error: Along track = 80 nmi Cross track = 65 nmi • The error envelope is really an ellipse, not a circle. • NHC is better at forecasting where a storm is heading than forecasting when it will get there. Hurricane Forecasting Errors | June 2010 GNOBR Meeting | Matt Barrows 3
Landfall error may be correlated with the variability of the predicted tracks from different models; but this relationship has not been quantified.
a) = 72 hour forecast b) = 48 hour forecast c) = 36 hour forecast d) = 24 hour forecast
BUT, little or no progress in predicting hurricane intensity over the last 10 years.
If we let xi be the probability of a parameter value given the deterministic forecast value, i.e. Then: yields a good estimate of the statistical forecasts characteristics
Special note: • The SELA area contains • 3 different types of • responses: • West-Bank type • East of delta type • L. Pontchartrain type Although the overall pattern has shown considerable organization in the “along-coast” direction (Resio, et al, 2008 – Nat. Haz; Irish et al., 2008, Nat Haz; Irish and Resio, 2010 – Ocean Engr), the residual variability is fairly high at individual points.
Also, as discussed in Niedoroda et al, 2010, the spacing between the storm tracks creates a (small) superficial pattern in the along- coast estimates in the statistical storm characteristics, To remove spurious variations along the coast, it is necessary to estimate maximum values between the 5 fixed values and to use a fine-scale integration variable. Fitted Maximum Value Linearly Interpolated Maximum Value Linearly interpolated values could be a as much as 1 to 2 feet lower than the “fitted” maximum values at points between tracks.
Overall method for obtaining “small-increment” estimates • of surges as a function of 5 parameters: • Along-coast function finds “fitted” max-s before interpolations • Radius to maximum wind function uses published function in extrapolations • (still interpolated between actual data points but should be adjusted for Lake Pontchartrain) • 3. Pressure deviation function is still taken as linear in interpolation/extrapolation • 4. Track angle function is fitted by regression • 5. Storm speed uses published adjustments for speed variations
IHNC 1 (Q305) Central Pressure = 955 mb Reference Longitude = 90 degrees
IHNC 1 (Q305) Central Pressure = 930 mb Reference Longitude = 90 degrees
IHNC 1 (Q305) Central Pressure = 905 mb Reference Longitude = 90 degrees
Deterministic Forecasts: 960 mb – 10.8 ft; 930 mb – 15.3 ft; 905 mb – 18.2 ft Percentage of Incorrect Decisions for a 15-ft Threshold Black denotes taking an action that should not have been taken. Red denotes not taking an action that should have been taken. Percentage of Incorrect Decisions for a 10-ft Threshold Black denotes taking an action that should not have been taken. Red denotes not taking an action that should have been taken.
Points • Significant gains can be made by developing fast-response methods for operations rather than traditional (slow) methods • Information without measures of uncertainty does not meet some critical needs for USACE • All factors that are important to accurate hindcasts for risk are important to forecasts which incorporate uncertainty
Incorporation of Uncertainty into Extreme Extremes • NRC-related work
Comparison of Estimated Central Pressures with and without Uncertainty