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https://dspace.iiti.ac.in/handle/123456789/14175
Title: | Integrating real-time sensor data for improved hydrogeotechnical modelling in landslide early warning in Western Himalaya |
Authors: | Gupta, Kunal Neelima Satyam, D. |
Keywords: | Hydrogeotechnical;Landslide;Machine learning;Modelling;Monitoring |
Issue Date: | 2024 |
Publisher: | Elsevier B.V. |
Citation: | Gupta, K., & Satyam, N. (2024a). Integrating real-time sensor data for improved hydrogeotechnical modelling in landslide early warning in Western Himalaya. Engineering Geology. https://doi.org/10.1016/j.enggeo.2024.107630 |
Abstract: | This study presents a comprehensive investigation into developing a real-time monitoring framework for a localized landslide early warning system (LEWS), focusing on the hydrological dynamics of an unsaturated slope near the Joshimath Badrinath Highway in Uttarakhand, India. Considering the steepness of the slope and its adjacency to the highway, continuous monitoring and stability assessment are crucial. The framework encompasses primary phases of monitoring, modelling, forecasting, and warning. Monitoring collected hydrological and meteorological data, used for modelling and calibration. Validation using Taylor diagrams ensured accuracy by comparing predicted and monitored data. The calibrated hydrological model guided slope stability modelling to identify instability factors. A machine learning algorithm detected potential instability. Forecasting predicted unstable periods, triggering warnings if the factor of safety (Fs) values drop below 1.5. The study provided important insights into slope stability, highlighting the significance of vegetation parameters in accurately assessing slope stability using the Fs. Calibration of the hydrogeological model, particularly considering rainfall, climate, and vegetation data, improved the alignment between predicted and observed volumetric water content (VWC), especially in shallower depths. However, modelling hydrological dynamics at greater depths remains challenging, emphasizing the need for refined approaches. Machine learning techniques, specifically a Random Forest model, achieve high accuracy in predicting Fs, identifying VWC at 0.3-m and 3-m depths as pivotal variables. Temporal evaluation suggests a 12-month simulation as optimal, showing consistent performance across depths. Overall, the study advances slope stability modelling and offers insights into sustainable slope management practices, highlighting the complex interplay between climate, vegetation, and hydrological dynamics in unsaturated slopes. This approach lays a foundation for effective LEWS in Indian Himalayan states. © 2023 |
URI: | https://doi.org/10.1016/j.enggeo.2024.107630 https://dspace.iiti.ac.in/handle/123456789/14175 |
ISSN: | 0013-7952 |
Type of Material: | Journal Article |
Appears in Collections: | Department of Civil Engineering |
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