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Hardness estimation and weak layer detection in simulated snow stratigraphy

机译:模拟雪地层的硬度估算和薄层检测

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Numerical modeling of snow cover stratigraphy with, for example, the 1-D snow cover model SNOWPACK has the potential to increase the spatial and temporal resolutions of snow stratigraphy information - data very much needed for avalanche forecasting. One of the key properties for interpreting snow stratigraphy in regard to stability is snow hardness. In manually observed snow profiles, differences in snow hardness between layers were found to be indicative of instability. We improved the hardness parameterization implemented in the snow cover model SNOWPACK. Hardness is estimated from the simulated snow density and grain type. Density thresholds for primary grain types and all hardness steps were calculated using ordinal logistic regression (on a data set of 14,522 manually observed layers). We thus implemented snow hardness as a discrete parameter in SNOWPACK. The new hardness parameterization observed agreed well with the simulated snow hardness. The structural stability index (SSI), and the threshold sum approach (TSA) were then used to detect potential weak layers in the simulated stratigraphy. We evaluated whether failure layers detected with compression tests (CT) in manually observed snow profiles corresponded to the potential weak layers found by either the SSI or TSA in the simulated stratigraphy. CT failure layers corresponded in about half of the cases to the potential weak layers detected with either the SSI or the TSA in the simulated stratigraphy. The agreement improved if only sudden collapse fractures were considered. These findings suggest that stability information can be derived from simulated snow stratigraphy in particular if the method for detecting weak layers is further improved.
机译:用一维积雪模型SNOWPACK进行积雪地层的数值模拟具有提高积雪地层信息的时空分辨率的潜力-雪崩预报非常需要这些数据。解释雪地层稳定性的关键特性之一是雪硬度。在人工观测的雪剖面中,发现各层之间的雪硬度差异表明存在不稳定性。我们改进了在积雪模型SNOWPACK中实施的硬度参数设置。硬度是根据模拟的雪密度和谷物类型估算的。使用序数逻辑回归(基于14,522个手动观察到的层的数据集)计算出原始晶粒类型和所有硬度阶跃的密度阈值。因此,我们在SNOWPACK中将雪硬度实现为离散参数。观察到的新的硬度参数设置与模拟的雪硬度非常吻合。然后,使用结构稳定性指数(SSI)和阈值总和法(TSA)来检测模拟地层中的潜在薄弱层。我们评估了在人工观测的雪剖面中通过压缩测试(CT)检测到的破坏层是否对应于由SSI或TSA在模拟地层中发现的潜在薄弱层。在大约一半的情况下,CT破坏层对应于用模拟地层中的SSI或TSA探测到的潜在薄弱层。如果仅考虑突然塌陷骨折,则协议会改善。这些发现表明,稳定性信息可以从模拟雪地层中得出,特别是如果进一步改进了检测薄弱层的方法。

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