Join CPAESS for a virtual seminar talk with Andrew Penny, CPAESS Scientist V, National Hurricane Center, Storm Surge Unit (NHC/SSU)

headshot of Andrew Penny

Improvements to the Wind Field used in the Operational Storm Surge Model at the National Hurricane Center

 

Date:  

Wednesday, April 15, 2026 at 11:00am MT (Virtual)

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Summary

To assess the storm surge risk during landfalling tropical cyclones, the Storm Surge Unit (SSU) at the National Hurricane Center (NHC) relies on probabilistic storm surge guidance (P-Surge), which is an ensemble of forecasts from the Sea, Lake, and Overland Surges from Hurricanes (SLOSH) model. While an accurate representation of the atmospheric forcing is vital for skillful storm surge forecasting, the parametric wind model currently used in SLOSH is relatively simple. This seminar will discuss recent efforts to improve the wind forcing used in SLOSH/P-Surge, including methods for providing a more accurate estimate of the radius of maximum winds (RMW), and recent efforts to integrate the Gridded Tropical Cyclone forecast/advisory Message (GTCM) wind model into SLOSH/P-Surge. These refinements in wind structure will help extend the lead time of skillful and reliable storm surge forecasts, which will provide additional time for the public and emergency managers to navigate important evacuation decisions prior to the onset of hazardous conditions.

About Andrew Penny

Andrew Penny is a UCAR/CPAESS scientist in the Storm Surge Unit (SSU) at the National Hurricane Center (NHC) who leads research and development efforts related to advancing the capabilities of the probabilistic guidance used for operational storm surge forecasting. More specifically, his work involves making improvements to the atmospheric forcing used in the storm surge model and testing new methods of addressing meteorological uncertainty within the ensemble modeling system. Andrew’s other responsibilities in the SSU include developing and managing the dataflow for real-time experimental guidance products.

For more information, visit the CPAESS Discovery Seminars page