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On forecasting wet-snow avalanche activity using simulated snow cover data

机译:利用模拟的积雪数据预测湿雪崩活动

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Wet-snow avalanches are relatively poorly understood and difficult to forecast. By definition, water is required in the snow cover, thus assessing the liquid water content of the snow cover is of paramount importance for wetsnow avalanche forecasting. While evaluating wet-snow instability through field measurements is difficult, physically based snow cover models can be used to estimate the amount of liquid water within the snow cover using meteorological input. Recently, an index based on the liquid water content of the snow cover was suggested showing high potential to predict the onset of wet-snow avalanche activity. However, as the snow cover model was forced with data from automated weather stations (AWS) only a now-cast was possible. As snow cover conditions quickly change during snow melt, a forecast would be useful. For this study, we therefore force the 1-D physically based snow cover model SNOWPACK with data from the high-resolution numerical weather prediction model COSMO and investigate whether forecasting regional patterns of the onset of wet-snow avalanche activity is feasible. To validate the index, we compared simulations performed at the location of numerous AWS in the Swiss Alps with wet-snow avalanche observations from the corresponding region. Only by forcing SNOWPACK with data from automated weather stations up to the actual day and then adding the forecasted input data to produce a forecast led to results comparable to the simulations with station data only. While using this setup, the index was able to predict the onset of wet-snow avalanching with a probability of detection of> 80% for three winters between 2013 and 2016 and for two different climate regions in Switzerland. However, the false alarm ratio was high (up to 80%), suggesting that further refinements of the classification method are needed.
机译:湿雪崩的认识相对较差,很难预测。根据定义,积雪中需要水,因此评估积雪中的液态水含量对于湿雪崩预测至关重要。尽管很难通过野外测量来评估湿雪的不稳定性,但是可以使用基于物理的积雪模型通过气象输入来估算积雪内的液态水量。最近,有人提出了基于积雪中液态水含量的指数,显示出预测湿雪崩活动开始的高潜力。但是,由于积雪模型被来自自动气象站(AWS)的数据所强制,因此只能进行现在的预报。由于积雪在融雪期间迅速改变,因此进行预测将很有用。因此,对于本研究,我们使用来自高分辨率数值天气预报模型COSMO的数据强制基于一维物理的雪盖模型SNOWPACK,并研究预测湿雪崩活动的区域模式是否可行。为了验证该指数,我们将在瑞士阿尔卑斯山众多AWS地点进行的模拟与来自相应地区的湿雪崩观测相比较。仅通过使用来自自动气象站的数据强制SNOWPACK到实际日期,然后添加预测的输入数据以生成预测,才能得到与仅具有站数据的模拟结果相当的结果。在使用此设置时,该指数能够预测湿雪崩的发生,在2013年至2016年的三个冬季以及瑞士的两个不同气候区域中,检出雪的可能性> 80%。但是,误报率很高(高达80%),这表明需要对分类方法进行进一步的改进。

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