Remote Sensing (Feb 2023)

A Method for Predicting Landslides Based on Micro-Deformation Monitoring Radar Data

  • Weixian Tan,
  • Yadong Wang,
  • Pingping Huang,
  • Yaolong Qi,
  • Wei Xu,
  • Chunming Li,
  • Yuejuan Chen

DOI
https://doi.org/10.3390/rs15030826
Journal volume & issue
Vol. 15, no. 3
p. 826

Abstract

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Mine slope landslides seriously threaten the safety of people’s lives and property in mining areas. Landslide prediction is an effective way to reduce losses due to such disasters. In recent years, micro-deformation monitoring radar has been widely used in mine slope landslide monitoring. However, traditional landslide prediction methods are not able to make full use of the diversified monitoring data from these radars. This paper proposes a landslide time prediction method based on the time series monitoring data of micro-deformation monitoring radar. Specifically, deformation displacement, coherence and deformation volume, and the parametric degree of deformation (DOD) are calculated and combined with the use of the tangent angle method. Finally, the effectiveness of the method is verified by using measured data of a landslide in a mining area. The experimental results show that our proposed method can be used to identify the characteristics of an imminent sliding slope and landslide in advance, providing monitoring personnel with more reliable landslide prediction results.

Keywords