4.7 Article

A quasi-three-dimensional spring-deformable-block model for runout analysis of rapid landslide motion

期刊

ENGINEERING GEOLOGY
卷 185, 期 -, 页码 20-32

出版社

ELSEVIER
DOI: 10.1016/j.enggeo.2014.11.016

关键词

Landslides motion; Runout analysis; Sliding body; Deformable block model

资金

  1. Fundamental Research Funds for the Central Universities [CDJZR12205526, CDJZR200013]
  2. research fund of Key Laboratory of Tunneling Engineering
  3. Southwestern Jiaotong University [TTE2014-04]
  4. research fund for the Doctoral Program of Higher Education of China [20120191120048]

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Assessment of landslide hazard often requires a good knowledge of the landslide characteristics. To investigate the dynamic runout process of the landslide across a 3D terrain, a quasi-three-dimensional model using spring-deformable-block model is proposed. On the assumption that the motion of landslides is continuous and variable, the sliding body is divided into lots of columns. The model is based on a stability analysis of landslides and allows the deformation of sliding body. Considering the force and moment equilibrium of deformable columns and the principle of conservation of energy, a quasi-three-dimensional sliding body is simplified by a series of deformable blocks with different dimensions. Then, the sliding body acceleration, velocity and displacement formulas are established accordingly. Correlating relatively well with the discrete element method, the present results are satisfactory in describing the dynamic process of landslides and predicting the impact areas of the post-failure sliding body. Finally, the present model is applied to analyze the sliding time, the maximum velocity and displacement of the sliding body of Jiweishan landslide in Wulong, Chongqing Southern China. When comparing with distinct element method, the model shows generally good agreement with them. (C) 2014 Elsevier B.V. All rights reserved.

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