Mapping Global Floods with 10 Years of Satellite Radar Data
Amit Misra, Kevin White, Simone Fobi Nsutezo, William Straka, and Juan, Lavista

TL;DR
This paper presents a deep learning model utilizing Sentinel-1 SAR satellite data to produce a comprehensive, cloud-penetrating, 10-year global flood extent dataset, improving flood monitoring and response worldwide.
Contribution
The study introduces a novel deep learning flood detection model applied to 10 years of SAR data, creating a unique, longitudinal flood dataset unaffected by cloud cover.
Findings
Created a 10-year global flood extent dataset
Demonstrated real-time flood detection during Kenya's 2024 floods
Identified potential increasing trends in global flood extent
Abstract
Floods cause extensive global damage annually, making effective monitoring essential. While satellite observations have proven invaluable for flood detection and tracking, comprehensive global flood datasets spanning extended time periods remain scarce. In this study, we introduce a novel deep learning flood detection model that leverages the cloud-penetrating capabilities of Sentinel-1 Synthetic Aperture Radar (SAR) satellite imagery, enabling consistent flood extent mapping in through cloud cover and in both day and night conditions. By applying this model to 10 years of SAR data, we create a unique, longitudinal global flood extent dataset with predictions unaffected by cloud coverage, offering comprehensive and consistent insights into historically flood-prone areas over the past decade. We use our model predictions to identify historically flood-prone areas in Ethiopia and…
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Taxonomy
TopicsFlood Risk Assessment and Management · Climate variability and models
