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首页> 外文期刊>Engineering Geology >Data driven bivariate landslide susceptibility assessment using geographical information systems: a method and application to Asarsuyu catchment, Turkey
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Data driven bivariate landslide susceptibility assessment using geographical information systems: a method and application to Asarsuyu catchment, Turkey

机译:使用地理信息系统的数据驱动双变量滑坡敏感性评估:一种方法及其在土耳其阿萨苏尤流域的应用

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摘要

In the last decades, landslide hazard assessment has attracted many researchers' attention. A number of parameters are suggested to be responsible to quantitatively explain the mechanism of landslides; many of these parameters are very important and factual. However, some data types and models are site-specific and could not be applied to different locations. Furthermore, the data stored in continuous parameter maps are divided into a number of classes arbitrarily, depending on the vision of the expert. Basically, this division controls the result of bivariate analysis. Besides, the responsible portion of the parameter map controlling the mechanism is also weighted arbitrarily. Based on these two facts, the class boundaries put a prejudice on the produced susceptibility/hazard maps, which result in dependence on the knowledge of the user rather than being dependent on the data and the fact itself The aim of this study is to refine the previously defined methods in a more data-dependent trend. To achieve this goal, two new concepts: seed cells and percentile maps are introduced. Seed cells are the zones that are considered to represent the best undisturbed morphological decision rules (conditions before landslide occurs) and would be achieved by adding a buffer zone to the crown and flank areas of the landslide. To quantitatively classify the input parameter maps, the data distributions of seed cells in the parameter maps are divided into a number of classes on the basis of their distribution's percentile break-points upon which the parameter maps are directly dependent on the seed cell distributions, hence to the data itself.
机译:在过去的几十年中,滑坡灾害评估吸引了许多研究人员的注意力。建议使用许多参数来定量解释滑坡的机理。这些参数中的许多都是非常重要和实际的。但是,某些数据类型和模型是特定于站点的,因此无法应用于不同的位置。此外,取决于专家的视野,存储在连续参数图中的数据被任意地分为多个类别。基本上,该除法控制双变量分析的结果。此外,控制该机构的参数图的负责部分也被任意加权。基于这两个事实,类别边界对产生的易感性/危害图构成了偏见,这导致依赖于用户的知识而不是依赖于数据和事实本身。以前定义的方法,其数据依赖性更高。为了实现此目标,引入了两个新概念:种子细胞和百分位图。种子细胞是被认为代表了最佳的未扰动形态决策规则(滑坡发生之前的条件)的区域,可以通过在滑坡的顶面和侧面增加一个缓冲区来实现。为了对输入参数图进行定量分类,基于参数分布中种子细胞的数据分布的百分点,这些参数图直接取决于种子细胞分布,因此将种子细胞的数据分布分为多个类别。数据本身。

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