Local Intrinsic Dimensionality of Ground Motion Data for Early Detection of Complex Catastrophic Slope Failure
Yuansan Liu, Antoinette Tordesillas, James Bailey

TL;DR
This paper introduces a novel spatiotemporal LID framework that enhances landslide failure detection by integrating velocity, spatial, and temporal information, significantly improving early warning accuracy.
Contribution
It extends existing LID techniques by incorporating velocity, spatial Bayesian fusion, and long-term temporal modeling into a unified approach for complex landslide detection.
Findings
stLID outperforms existing methods in detection precision
significantly improves early warning lead-time
effectively captures complex spatial-temporal failure patterns
Abstract
Local Intrinsic Dimensionality (LID) has shown strong potential for identifying anomalies and outliers in high-dimensional data across a wide range of real-world applications, including landslide failure detection in granular media. Early and accurate identification of failure zones in landslide-prone areas is crucial for effective geohazard mitigation. While existing approaches typically rely on surface displacement data analyzed through statistical or machine learning techniques, they often fall short in capturing both the spatial correlations and temporal dynamics that are inherent in such data. To address this gap, we focus on ground-monitored landslides and introduce a novel approach that jointly incorporates spatial and temporal information, enabling the detection of complex landslides and including multiple successive failures occurring in distinct areas of the same slope. To be…
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Taxonomy
TopicsLandslides and related hazards · Seismology and Earthquake Studies · earthquake and tectonic studies
