Litcius/Paper detail

Deep Sensing of Urban Waterlogging

Shi-Wei Lo, Jyh-Horng Wu, Jo-Yu Chang, Chien-Hao Tseng, Meng-Wei Lin, Fang‐Pang Lin

2021IEEE Access17 citationsDOIOpen Access PDF

Abstract

In the monsoon season, sudden flood events occur frequently in urban areas, which hamper the social and economic activities and may threaten the infrastructure and lives. The use of an efficient large-scale waterlogging sensing and information system can provide valuable near real-time disaster information to facilitate disaster management and enhance awareness of the general public to alleviate losses during and after flood disasters. Therefore, in this study, a visual sensing approach driven by deep neural networks and information and communication technology was developed to provide an end-to-end mechanism to realize waterlogging sensing and event-location mapping. The use of a deep sensing system in the monsoon season in Taiwan was demonstrated, and waterlogging events were predicted on the island-wide scale. The system could sense approximately 2379 vision sources through an internet of video things framework and transmit the event-location information in 5 min. The proposed approach can sense waterlogging events at a national scale and provide an efficient and highly scalable alternative to conventional waterlogging sensing methods.

Topics & Concepts

Waterlogging (archaeology)Computer scienceFlood mythEvent (particle physics)ScalabilityEmergency managementScale (ratio)Remote sensingFlooding (psychology)Computer securityData scienceEnvironmental scienceGeographyCartographyBiologyWetlandPolitical scienceLawArchaeologyPsychologyPsychotherapistQuantum mechanicsPhysicsDatabaseEcologyFlood Risk Assessment and ManagementTropical and Extratropical Cyclones ResearchUnderwater Vehicles and Communication Systems