학술논문

Bidirectional LSTM Model for Accurate and Real-Time Landslide Detection: A Case Study in Mawiongrim, Meghalaya, India
Document Type
Periodical
Source
IEEE Internet of Things Journal IEEE Internet Things J. Internet of Things Journal, IEEE. 11(3):3792-3800 Feb, 2024
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
Terrain factors
Predictive models
Soil
Monitoring
Sensors
Real-time systems
Data models
Artificial intelligence (AI)
landslides
long shortterm memory (LSTM)
real-time monitoring
slope detection
Language
ISSN
2327-4662
2372-2541
Abstract
This article presents a bidirectional long short-term memory (LSTM) model for the detection of landslides. Previous uses of machine learning (ML) in this setting have demonstrated its general potential, which necessitates the implementation of a suitable algorithm. Landslides are natural disasters that can cause significant destruction and disruption in the affected areas. Early detection is the key to minimizing the impact of landslides, so it is important to develop accurate and efficient models. An area selected for this study is located in Mawiongrim, Meghalaya, India, which is an active landslide zone. The proposed model uses a bidirectional LSTM to capture the temporal patterns of the input data collected from a long-term real-time monitoring system set up in the area. To evaluate the effectiveness of the predictions, the model is trained using a data set composed of various landslide-related characteristics, such as topography, rainfall, hydrological, and soil properties. The results show that the suggested model is capable of detecting landslides with greater accuracy and the lowest error value relative to other models. Additionally, the model is also able to provide a real-time warning system, making it a viable tool for early landslide detection. The research also highlights the prediction models for matric suction and groundwater level, which are crucial in determining slope stability.