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Decision tree-based detection of blowing snow events in the European Alps

机译:欧洲阿尔卑斯山区吹雪事件的决策树检测

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Blowing snow processes are crucial in shaping the strongly heterogeneous spatiotemporal distribution of snow and in regulating subsequent snowpack evolution in mountainous terrain. Although empirical formulae and constant threshold wind speeds have been widely used to estimate the occurrence of blowing snow in regions with sparse observations, the scarcity of in situ observations in mountainous regions contrasts with the demands of models for reliable observations at high spatiotemporal resolution. Therefore, these methods struggle to accurately capture the high local variability of blowing snow. This study investigated the potential capability of the decision tree model?(DTM) to detect blowing snow in the European Alps. The DTMs were constructed based on routine meteorological observations (mean wind speed, maximum wind speed, air temperature and relative humidity) and snow measurements (including in situ snow depth observations and satellite-derived products). Twenty repetitions of a random sub-sampling validation test with an optimal size ratio?(0.8) between the training and validation subsets were applied to train and assess the DTMs. Results show that the maximum wind speed contributes most to the classification accuracy, and the inclusion of more predictor variables improves the overall accuracy. However, the spatiotemporal transferability of the DTM might be limited if the divergent distribution of wind speed exists between stations. Although both the site-specific DTMs and site-independent DTM show great ability in detecting blowing snow occurrence and are superior to commonly used empirical parameterizations, specific assessment indicators varied between stations and surface conditions. Events for which blowing snow and snowfall occurred simultaneously were detected the most reliably. Although models failed to fully reproduce the high frequency of local blowing snow events, they have been demonstrated to be a promising approach requiring limited meteorological variables and have the potential to scale to multiple stations across different regions.
机译:吹雪过程对于塑造雪的强异性时滞分布以及调节山区地形中的随后的积雪演进来至关重要。尽管经验公式和恒定的阈值风速已被广泛用于估计稀疏观察区域的吹雪的发生,但山区地区的原位观测的稀缺性对比具有高时尚分辨率的可靠观察的模型的需求对比。因此,这些方法努力准确地捕捉吹雪的高局部变异性。本研究调查了决策树模型的潜在能力?(DTM)来检测欧洲阿尔卑斯山的吹雪。基于常规气象观测(平均风速,最大风速,空气温度和相对湿度)和雪测量(包括原位雪深度观察和卫星衍生产品)构建DTM。在训练和验证子集之间具有最佳尺寸比的随机子采样验证测试的二十重复,培训和验证子集之间被应用于培训和评估DTM。结果表明,最大风速对分类准确性的最大贡献贡献,并且包含更多的预测变量可以提高整体准确性。然而,如果在车站之间存在风速分布,则可以限制DTM的时空转移性。尽管站点特定的DTM和现场无关的DTM都表现出较高的检测吹雪发生的能力,但优于常用的经验参数,特定的评估指标在车站和表面条件之间变化。最可靠地检测到吹雪和降雪的事件。尽管模型未能完全再现本地吹雪事件的高频,但它们被证明是需要有限的气象变量的有希望的方法,并且具有跨越不同地区的多个站点的潜力。

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