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Development of Early Warning System for Slope Instability
Slope instability poses a significant threat to infrastructure, communities, and ecosystems worldwide. Timely detection and monitoring of slope movements are crucial for implementing effective mitigation measures and minimizing potential disasters. This research paper presents the development and implementation of an Early Warning System (EWS) designed to detect and predict slope instability. The proposed EWS integrates a combination of state-of- the-art sensors, geospatial technologies, and machine learning algorithms to continuously monitor and analyze slope conditions. Ground-based sensors, such as inclinometers and accelerometers, provide real-time data on slope deformation and ground movement. The collected data are processed and analyzed using advanced machine learning algorithms, which are trained to identify patterns indicative of slope instability. These algorithms consider various factors, including precipitation, temperature, soil composition, and historical slope behavior, to generate accurate predictions of potential instability events. The system is designed to adapt and improve its predictive capabilities over time through continuous learning from new data inputs following a feedback mechanism. To validate the effectiveness of the EWS, a case study is presented, demonstrating its successful deployment in a geotechnically challenging region. The results indicate that the system provides early and reliable warnings of slope instability, allowing for timely evacuation and the implementation of mitigation measures. Furthermore, the paper discusses the integration of the EWS into existing disaster management frameworks and its potential applications in diverse geological settings.
Development of Early Warning System for Slope Instability
Slope instability poses a significant threat to infrastructure, communities, and ecosystems worldwide. Timely detection and monitoring of slope movements are crucial for implementing effective mitigation measures and minimizing potential disasters. This research paper presents the development and implementation of an Early Warning System (EWS) designed to detect and predict slope instability. The proposed EWS integrates a combination of state-of- the-art sensors, geospatial technologies, and machine learning algorithms to continuously monitor and analyze slope conditions. Ground-based sensors, such as inclinometers and accelerometers, provide real-time data on slope deformation and ground movement. The collected data are processed and analyzed using advanced machine learning algorithms, which are trained to identify patterns indicative of slope instability. These algorithms consider various factors, including precipitation, temperature, soil composition, and historical slope behavior, to generate accurate predictions of potential instability events. The system is designed to adapt and improve its predictive capabilities over time through continuous learning from new data inputs following a feedback mechanism. To validate the effectiveness of the EWS, a case study is presented, demonstrating its successful deployment in a geotechnically challenging region. The results indicate that the system provides early and reliable warnings of slope instability, allowing for timely evacuation and the implementation of mitigation measures. Furthermore, the paper discusses the integration of the EWS into existing disaster management frameworks and its potential applications in diverse geological settings.
Development of Early Warning System for Slope Instability
Lecture Notes in Civil Engineering
Verma, Amit Kumar (Herausgeber:in) / Singh, T. N. (Herausgeber:in) / Mohamad, Edy Tonnizam (Herausgeber:in) / Mishra, A. K. (Herausgeber:in) / Gamage, Ranjith Pathegama (Herausgeber:in) / Bhatawdekar, Ramesh (Herausgeber:in) / Wilkinson, Stephen (Herausgeber:in) / Anand, Atul (Autor:in) / Sabri, Md Shayan (Autor:in) / Jaiswal, Amit (Autor:in)
International Conference on Geotechnical Issues in Energy, Infrastructure and Disaster Management ; 2024 ; Patna, India
01.12.2024
12 pages
Aufsatz/Kapitel (Buch)
Elektronische Ressource
Englisch
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