Published on: December 30, 2025
MACHINE LEARNING SYSTEM TO PREDICT LANDSLIDES IN WESTERN GHATS
MACHINE LEARNING SYSTEM TO PREDICT LANDSLIDES IN WESTERN GHATS
NEWS – Researchers at the National Institute of Technology Karnataka (NITK), Surathkal have developed an advanced, machine learning–based early warning framework to predict landslides in the Western Ghats—one of India’s most landslide-prone regions.
HIGHLIGHTS
Why It Matters?
- Western Ghats account for ~60% of reported landslides in India
- Most are triggered by intense and prolonged rainfall
- Recent incidents (e.g., 2024 Wayanad landslide) exposed limitations of rainfall-only alert systems
- Need for accurate, site-specific and reliable warning mechanisms
About the New System
Slope Vulnerability and LandSlide Assessment (SVALSA)
- Developed using:
- Rainfall analysis
- Real-time soil behaviour monitoring
- Surface deformation tracking
- Machine learning
- Designed to:
- Reduce false alarms
- Provide reliable community alerts
Beyond Rainfall Threshold Systems
- Traditional alerts rely only on rainfall levels
- SVALSA integrates:
- Hydrological data
- Soil strength parameters
- Sub-surface deformation signals
- More than 90% landslides in Western Ghats occur in residual soils, where soil moisture & suction critically influence slope stability
How the System Works
- Funded by Department of Science & Technology (DST), IMPRINT, and National Technical Textiles Mission
- Uses a three-stage warning mechanism
- Powered by Python-based processing
- Employs K-Nearest Neighbour (KNN) machine learning model
- Currently under patent application
Significance
- Enhances disaster preparedness
- Strengthens community resilience
- Supports government decision-making
- Aligns with climate risk adaptation strategies
