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GIS-based landslide hazard zonation mapping using statistical approaches.

机译:使用统计方法的基于GIS的滑坡灾害分区图。

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摘要

Conventional approaches to solve slope failure problems involve using deterministic and probabilistic models to calculate the factor of safety for slopes. These models usually require a large amount of field and laboratory data on soil properties and slope geometry. This requirement makes the determination of conventional factors of safety highly unrealistic if they are required over large areas. An efficient screening methodology is to create a hazard zonation map in which regions are classified according to varying instability potential. This dissertation describes the process of using a database of slope failure details and the power of a GIS to analyze digital data for various causative factors of slope instability in order to create a landslide prediction model for Northwest Arkansas. First an extensive field investigation was performed to identify causative factors. Then data of all causative factors were obtained from remotely sensed imagery or publicly available database. The importance of each causative factor was evaluated by using statistical weighting techniques and a thematic map was created for each causative factor. A hazard zonation model was then created by overlaying all thematic maps together. All of this information was visualized and analyzed using a GIS. The model's general applicability was tested on another area with similar geoenvironmental conditions with good results.
机译:解决边坡破坏问题的常规方法包括使用确定性和概率模型来计算边坡的安全系数。这些模型通常需要大量有关土壤性质和边坡几何形状的现场和实验室数据。如果在大面积上需要常规安全因素,则确定常规安全因素非常不现实。一种有效的筛选方法是创建一个危险区划图,其中根据变化的潜在不稳定因素对区域进行分类。本文介绍了利用边坡破坏细节数据库和GIS的功能分析数字数据来分析各种边坡失稳原因的过程,以建立西北阿肯色州的滑坡预测模型。首先,进行了广泛的现场调查,以查明原因。然后从遥感影像或公共数据库中获取所有致病因素的数据。通过使用统计加权技术评估每个致病因素的重要性,并为每个致病因素创建一个专题图。然后,通过将所有专题图叠加在一起来创建危险区划模型。所有这些信息都使用GIS进行可视化和分析。该模型的一般适用性在具有相似地质环境条件的另一区域进行了测试,结果良好。

著录项

  • 作者

    Liao, Quanyan.;

  • 作者单位

    University of Arkansas.;

  • 授予单位 University of Arkansas.;
  • 学科 Engineering Civil.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 162 p.
  • 总页数 162
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;
  • 关键词

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