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Statistical models for short- and long-term forecasts of snow depth

机译:短期和长期雪深预测的统计模型

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Forecasting of future snow depths is useful for many applications like road safety, winter sport activities, avalanche risk assessment and hydrology. Motivated by the lack of statistical forecasts models for snow depth, in this paper we present a set of models to fill this gap. First, we present a model to do short-term forecasts when we assume that reliable weather forecasts of air temperature and precipitation are available. The covariates are included nonlinearly into the model following basic physical principles of snowfall, snow aging and melting. Due to the large set of observations with snow depth equal to zero, we use a zero-inflated gamma regression model, which is commonly used to similar applications like precipitation. We also do long-term forecasts of snow depth and much further than traditional weather forecasts for temperature and precipitation. The long-term forecasts are based on fitting models to historic time series of precipitation, temperature and snow depth. We fit the models to data from six locations in Norway with different climatic and vegetation properties. Forecasting five days into the future, the results showed that, given reliable weather forecasts of temperature and precipitation, the forecast errors in absolute value was between 3 and 7cm for different locations in Norway. Forecasting three weeks into the future, the forecast errors were between 7 and 16cm.
机译:未来雪深的预测对于道路安全,冬季运动,雪崩风险评估和水文学等许多应用很有用。由于缺乏关于积雪深度的统计预测模型,本文提出了一套填补这一空白的模型。首先,当我们假设可获得可靠的气温和降水天气预报时,我们将提供一个模型进行短期预报。遵循降雪,雪老化和融化的基本物理原理,将协变量非线性地包含在模型中。由于雪深等于零的大量观测值,我们使用零膨胀伽玛回归模型,该模型通常用于类似降水的应用。我们还可以对积雪深度进行长期预报,并且比传统的温度和降水预报要远得多。长期预报是基于对降水,温度和雪深的历史时间序列的拟合模型。我们将模型拟合到来自挪威六个地点的,具有不同气候和植被特性的数据。预测未来五天的结果表明,给定可靠的温度和降水天气预报,挪威不同地区的绝对值预报误差在3至7厘米之间。预测在未来三周内,预测误差在7至16厘米之间。

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