Why in the news?
- Japan recently released an AI-generated video of Mount Fuji erupting, to give people an idea of what to expect if the disaster strikes and how to prepare themselves.
AI in Disaster Prediction
- Applications of AI in Disaster Prediction
- Earthquake Prediction
- AI analyses seismic data to identify microtremors and fault-line stresses.
- Machine learning models improve short-term forecasts.
- Example: Google’s AI-powered earthquake alert system in California.
- Flood Prediction
- AI integrates satellite imagery, rainfall data, and river flow sensors to forecast floods.
- Real-time flood inundation maps help evacuation planning.
- Example: IIT Gandhinagar’s flood forecasting system for India using machine learning.
- Cyclones & Hurricanes
- AI predicts storm intensities, wind speeds, and landfall locations more accurately than traditional models.
- Helps in disaster readiness and evacuation.
- Example: IBM’s Deep Thunder project.
- Wildfire Prediction
- AI uses remote sensing data, vegetation maps, and weather patterns to detect fire-prone areas.
- Real-time fire spread models assist firefighting strategies.
- Example: NASA’s AI-based wildfire prediction model.
- Landslides & Avalanches
- AI integrates geological data, soil moisture, rainfall intensity, and terrain mapping.
- Predicts slope failures and risk-prone zones.
- Example: Indian Space Research Organisation (ISRO) landslide hazard mapping in Himalayan states.
- Pandemics & Biological Disasters
- AI analyses disease outbreak patterns using social media, health data, and mobility reports.
- Example: AI platforms like BlueDot predicted COVID-19 spread before WHO alerts.
- Earthquake Prediction
- Advantages
- Accuracy: Reduces false alarms by learning from past data.
- Speed: Provides real-time analysis for early warnings.
- Scalability: Works across diverse geographies and hazards.
- Integration: Combines multiple datasets (satellite, IoT, drones, climate models).
- Challenges
- Data Gaps: Developing countries often lack reliable datasets.
- Bias in Algorithms: AI predictions may be skewed if trained on limited or biased data.
- Infrastructure Dependence: Requires robust digital connectivity.
- Ethical Concerns: Risk of surveillance misuse and unequal access to AI benefits.
- Initiatives
- India
- C-DAC developing AI-enabled disaster warning systems.
- NIDM (National Institute of Disaster Management) incorporating AI in disaster training.
- ISRO’s Bhuvan platform uses AI/ML for hazard mapping.
- Global
- UNDRR (United Nations Office for Disaster Risk Reduction) encourages AI integration.
- Global Flood Awareness System (GloFAS) by EU uses AI-based modelling.
- India