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Development of Multi-Hazard Inventory from Heterogeneous Sources

Dept/Center/Lab: Amrita Center for Wireless Networks and Applications (AWNA)

Project Incharge:Dr. Maneesha Vinodini Ramesh
Development of Multi-Hazard Inventory from Heterogeneous Sources

IoT Sensors

  1. News and web articles
  2. Planet and satellite images
  3. Crowd-sourced information.

For hazards such as:  Landslides , Floods , Glaciers , Glacial lake outburst floods , Avalanches Inclusion of hazard sequences and triggering relationships through questionnaires, media reports, PRA, etc.

Amrita Team Members : Ms Hari Chandana Ekkirala, Mr. Ramesh Gunta, Ms. Amrita Jayakumar

Name of the Indian Collaborators : KSNDMC, SSDMA, KSDMA

Name of the Industry Collaborators : ESRI, India

Product Details : IOS and Google Play Store app

Proposed Future Work Details

  1. Phase one: trigger and hazard sequence app with one data source- PRA/Questionnaire
  2. Phase two: linking data sources to the dynamic maps platform

Patent Details

  • Dynamic risk maps

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