Virtual Reality Enabled Flood Rescue Operations

Authors

  • Anukeerthana, Lekhasri S, Kiruthika E, Kiruthiga R, Subadaarani E Department of Electronics and Communication Engineering, AVS Engineering College, Salem, Tamil Nadu, India Author

DOI:

https://doi.org/10.15662/IJEETR.2026.0802363

Keywords:

Virtual Reality (VR), Flood Management, Disaster Response, Rescue Operations, Simulation, Emergency Planning, Real-Time Monitoring, Immersive Technology

Abstract

The Floods are one of the most destructive natural disasters, causing loss of life, property damage, and environmental disruption. Effective rescue operations during floods are often challenging due to limited visibility, unsafe conditions, and lack of real-time coordination.

 To overcome these challenges, a Virtual Reality (VR)-Based Flood Rescue Management System is proposed. This system uses VR technology to simulate real-time flood scenarios, allowing rescue teams to train, plan, and execute operations more efficiently. The system integrates sensors, geographic data, and real-time monitoring to create immersive environments for decision-making. 

The VR platform enables rescue personnel to visualize affected areas, identify safe routes, and coordinate actions without physically entering dangerous zones. By improving training, planning, and situational awareness, the system enhances rescue efficiency and reduces risks for both victims and responders.

To address these challenges, a Virtual Reality (VR)-Based Flood Rescue Management System is proposed. This system utilizes immersive VR technology to create realistic and interactive simulations of flood-affected areas. By integrating real-time data from sensors, geographical information systems (GIS), and environmental monitoring devices, the system provides an accurate representation of disaster scenarios.

 

 

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Published

2026-03-28

How to Cite

Virtual Reality Enabled Flood Rescue Operations. (2026). International Journal of Engineering & Extended Technologies Research (IJEETR), 8(2), 3607-3612. https://doi.org/10.15662/IJEETR.2026.0802363