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To Ski or Not to Ski: Estimating Transition Matrices to Predict Tomorrow's Snowfall Using Real Data

机译:滑雪或不滑雪:使用实际数据估算转换矩阵以预测明天的降雪量

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Using historical data from the Global Historical Climatology Network (GHCN)-Daily database, the use of Markov chain models is presented to predict a ‘Snow Day’ at eight national weather stations. This serves as a variation of the classic Markov chain precipitation example, predicting a significant snow depth tomorrow from today's snow depth conditions. Stations near Seattle WA, Denver CO, Milwaukee WI, Chicago IL, New York NY and Boston MA, were included as they represent major urban centers, while stations in Montana and North Dakota were added to improve geographical coverage. Estimates of the appropriate transition matrices (?_(i) ) are provided, as well as a sample of code in the R statistical programming language to enable construction of similar examples for other geographical areas.
机译:利用来自全球历史气候学网络(GHCN)每日数据库的历史数据,提出了使用马尔可夫链模型来预测八个国家气象站的“雪天”。这是经典马尔可夫链降水示例的变体,根据今天的降雪深度条件预测明天的降雪深度。由于它们代表了主要的城市中心,因此还包括华盛顿州西雅图市,丹佛市,威斯康星州密尔沃基市,芝加哥伊利诺伊州,纽约州纽约市和马萨诸塞州波士顿附近的站点,而蒙大拿州和北达科他州的站点则被添加以改善地理覆盖范围。提供了适当的过渡矩阵(?_(i))的估计,以及R统计编程语言中的代码示例,以能够为其他地理区域构造类似的示例。

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