Flood Management System
DOI:
https://doi.org/10.63671/ijsssr.v2i4.362Keywords:
Monitoring in Real Time, Floods, Flood Regulation, Area And People SafetyAbstract
To gather vital environmental data, the suggested system uses a network of carefully positioned sensors, such as temperature, rainfall, and water level sensors. Through wireless connection technologies like the Internet of Things (IoT), these sensors continuously monitor hydrological factors and send the data to a centralized cloud-based platform. In order to forecast flood events and evaluate possible hazards in susceptible areas, the gathered data is further processed using sophisticated machine learning algorithms and hydrological models.
Among all natural catastrophes, floods are the most frequent and damaging, affecting millions of people worldwide. In light of this, floods are likely to become more regular and frequent due to climate change in a number of ways that affect both "Climate" and "Weather" [1]. The nature of water, which necessitates transboundary not integrated flood risk management cooperation, can make an already complex problem much more complicated.
Unfortunately, there are many barriers to effective Transboundary cooperation in general and cooperation on cross-border flood management in particular, thereby establishing a vulnerability to floods [2].
Up until October 2023, flood risk management strategies (FRMSs) are intended to increase the resilience of metropolitan areas that are at risk of flooding. This most likely necessitates adjustments to their institutional embedding.
The results of this study show that by offering precise, rapid, and useful flood risk estimates, a well-integrated flood monitoring system can greatly improve catastrophe resilience. When such a system is put in place, there may be fewer fatalities, less property damage, and better coordination of disaster response. Enhancing AI-based flood prediction models, integrating them with smart city infrastructure, and investigating blockchain technology for safe stakeholder data exchange are some future research avenues.
To sum up, this study offers a fresh, technologically advanced method of flood monitoring that successfully reduces flood risks by utilizing geospatial technologies, real-time data collection, and predictive analytics. The suggested method provides a scalable and dependable flood detection and early warning system by combining IoT, AI, and GIS. This study highlights the vital role that cutting-edge technology plays in disaster relief and helps build communities that are more resilient to the problems posed by flooding brought on by climate change.
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