A Framework for Flexible Peak Storm Surge Prediction
Benjamin Pachev, Prateek Arora, Carlos del-Castillo-Negrete, Eirik, Valseth, Clint Dawson

TL;DR
This paper introduces a novel, computationally efficient surrogate model for peak storm surge prediction that accurately replicates high-fidelity ADCIRC model results and can predict for new locations, aiding risk assessment and emergency planning.
Contribution
The paper presents a multi-stage surrogate modeling framework that predicts storm surge levels at individual points, enabling fast and accurate predictions for new locations and real events.
Findings
Surrogate model matches ADCIRC predictions on synthetic and real storms.
Model significantly reduces computation time compared to ADCIRC.
Effective for diverse geographic regions and storm types.
Abstract
Storm surge is a major natural hazard in coastal regions, responsible both for significant property damage and loss of life. Accurate, efficient models of storm surge are needed both to assess long-term risk and to guide emergency management decisions. While high-fidelity regional- and global-ocean circulation models such as the ADvanced CIRCulation (ADCIRC) model can accurately predict storm surge, they are very computationally expensive. Here we develop a novel surrogate model for peak storm surge prediction based on a multi-stage approach. In the first stage, points are classified as inundated or not. In the second, the level of inundation is predicted . Additionally, we propose a new formulation of the surrogate problem in which storm surge is predicted independently for each point. This allows for predictions to be made directly for locations not present in the training data, and…
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Taxonomy
TopicsTropical and Extratropical Cyclones Research · Ocean Waves and Remote Sensing · Flood Risk Assessment and Management
