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黄健: Landslide early warning, case studies from Southwest China
发布日期:2022-07-15 作者:黄健

编号:CDUT-2022-21

标题:Landslide early warning, case studies from Southwest China

入藏号:WOS:000597310200044

中国科学院文献情报中心期刊分区: 地球科学1区/TOP

本校作者:巨能攀;黄健* ;何朝阳;Van Asch, T. W. J. ;黄润秋;范宣梅;许强;肖洋;王珏

来源出版物:ENGINEERING GEOLOGY  卷: 279  文献号: 105917

出版年:2020

第一地址:成都理工大学

关键词:滑坡;预警模型预警系统预测

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摘要:Landslides are one of the commonly natural disasters triggered by rainfalls, earthquakes, and human activities, which cause fatalities, damage to properties, and economic losses in the world. Early warning method may predict landslide occurrence and reduce the risk. In this paper, we propose a self-developed site-specific landslide early warning system (LEWS), which has been progressively designed and accomplished over the past decade in Southwest China. The warning model for the prediction of slope instability is focused on multiple thresholds, including deformation rate, rate increment and tangential angle related to surface displacement measurement. The debris-flow initiation is determined by critical rainfall thresholds integrated with the topographic and geological conditions at a catchment scale. The recent Xingyi rockslide, Baige debris slide and debris flows in Zoumaling catchment are selected to explain the specific process of landslide early warning in a real-time operating system. The performance of the presented warning system is evaluated by comparison with the inverse-velocity model (INV) and gradient model (SLO) in the prediction of slope failure time. The Receiver Operator Characteristic (ROC) analysis is used to prove its feasibility and reliability in the debris-flow initiation prediction. The presented warning model and system can be applied to other regions in landslide early warning and to be useful to mitigate landslide losses and damages.

文章链接地址:https://www.sciencedirect.com/science/article/pii/S0013795220318147?via%3Dihub