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STARTER: A statistical GIS-based model for the prediction of snow avalanche susceptibility using terrain features—application to Alta Val Badia, Italian Dolomites

机译:入门:基于GIS的统计模型,可利用地形特征预测雪崩敏感性–应用于意大利白云岩Alta Val Badia

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摘要

This article describes a methodology to localise areas with high potential towards natural snowpack instability under particular meteorological conditions, at the scale of an Alpine valley. Localisation is based on statistically relating known release areas of past avalanche events to maps of: (1) slope inclination, (2) slope orientation (aspect), (3) elevation, (4) distance from crest lines, (5) terrain roughness and (6) concavities/convexities. The maps have been built using two different GIS softwares while the statistical analyses have been performed with a specific software handling also Fuzzy Set theory algorithms. The results of the statistical analyses have been verified on test release—areas which have not been used as input data for the statistical analyses. Verification allowed to quantify how reliably the susceptibility values were calculated, to compare the values obtained using different combinations of terrain features and to finally decide on the most efficient combination. The susceptibility maps were calculated and verified for three different meteorological scenarios (given by three classes of snow depth). Verification has shown that the accuracy of the susceptibility maps was between 67% and 82%. The three susceptibility maps show a remarkable difference in the spatial pattern of the highest susceptibility pixels suggesting that for different meteorological scenarios different classes of terrain features need to be considered. The possibility to make combinations of terrain features and to assess and verify their statistical relationship with release areas of past avalanche events is the major original step made by STARTER. Linking those release areas to meteorological scenarios is an attempt to include in the analysis the combined influence of terrain features and meteorological conditions towards snowpack instability.
机译:本文介绍了一种方法,可以在特定的气象条件下,将潜在的自然雪堆不稳定区域定位在高山峡谷的规模上。本地化是基于将过去雪崩事件的已知释放区域与以下地图进行统计相关:(1)坡度,(2)坡度方向(纵横比),(3)高程,(4)距峰顶线的距离,(5)地形粗糙度(6)凹凸。这些地图是使用两种不同的GIS软件构建的,而统计分析是使用特定的软件进行的,该软件还处理了模糊集理论算法。统计分析的结果已在测试版本中得到验证-尚未用作统计分析输入数据的区域。验证允许量化磁化率值的计算可靠性,比较使用地形特征的不同组合获得的值,并最终确定最有效的组合。针对三种不同的气象情景(通过三类降雪深度)计算并验证了敏感性图。验证表明,磁化率图的准确性在67%到82%之间。这三个磁化率图显示出最高磁化率像素的空间模式存在显着差异,这表明对于不同的气象场景,需要考虑不同类别的地形特征。 STARTER采取的主要措施是组合地形特征并评估和验证其与过去雪崩事件释放区域的统计关系。将这些释放区域与气象情景联系起来是一种尝试,在分析中包括地形特征和气象条件对积雪不稳定的综合影响。

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