Articles | Volume 30, issue 5
https://doi.org/10.5194/hess-30-1333-2026
https://doi.org/10.5194/hess-30-1333-2026
Research article
 | 
11 Mar 2026
Research article |  | 11 Mar 2026

Climate adaptation-aware flood prediction for coastal cities using Deep Learning

Bilal Hassan, Areg Karapetyan, Aaron Chung Hin Chow, and Samer Madanat

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Short summary
In this research, we developed an AI-driven framework that rapidly predicts floods in coastal areas, considering various shoreline protection strategies and a different sea-level rise scenarios. By combining data from two coastal cities, our lightweight model delivers near real-time flood projections under various adaptation strategies. This approach can guide policymakers in designing effective defenses, ultimately promoting safer coastal communities and infrastructure.
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