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Mapping Geospatial AI Flood Risk in National Road Networks

Seyed M. H. S. Rezvani, Maria João Falcão Silva, N. Almeida

2024ISPRS International Journal of Geo-Information25 citationsDOIOpen Access PDF

Abstract

Previous studies have utilized machine learning algorithms that incorporate topographic and geological characteristics to model flood susceptibility, resulting in comprehensive flood maps. This study introduces an innovative integration of geospatial artificial intelligence for hazard mapping to assess flood risks on road networks within Portuguese municipalities. Additionally, it incorporates OpenStreetMap’s road network data to study vulnerability, offering a descriptive statistical interpretation. Through spatial overlay techniques, road segments are evaluated for flood risk based on their proximity to identified hazard zones. This method facilitates the detailed mapping of flood-impacted road networks, providing essential insights for infrastructure planning, emergency preparedness, and mitigation strategies. The study emphasizes the importance of integrating geospatial analysis tools with open data to enhance the resilience of critical infrastructure against natural hazards. The resulting maps are instrumental for understanding the impact of floods on transportation infrastructures and aiding informed decision-making for policymakers, the insurance industry, and road infrastructure asset managers.

Topics & Concepts

Geospatial analysisFlood mythGeographyComputer scienceEnvironmental resource managementEnvironmental scienceCartographyRemote sensingArchaeologyFlood Risk Assessment and ManagementAnomaly Detection Techniques and ApplicationsInfrastructure Resilience and Vulnerability Analysis
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