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Statistical methods for forecasting daily snow depths and assessing trends in inter-annual snow depth dynamics

机译:预测日常雪深度的统计方法,评估年度雪深度动态的趋势

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This paper introduces a time-varying parameter regression model for modeling, forecasting, and assessing inter-annual trends in daily snow depths. The time-varying parameter regression is written in a simple state-space representation and forecasted using a Kalman filter. The recursive Kalman filter algorithm updates the time-varying parameter sequentially when a new data point becomes available and is a flexible forecasting technique. The proposed method is applied to a time series of daily snow depth observations recorded over a 103 year period at a station in Napoleon, North Dakota. The forecasts of the final ten years of data perform well when compared to the actual daily snow depths. Inter-annual snow depth trends indicate an increase in mid-winter snow depths followed by an earlier spring ablation.
机译:本文介绍了用于建模,预测和评估日常雪深度的年度趋势的时变参数回归模型。 时变参数回归是用简单的状态空间表示和使用卡尔曼滤波器预测的。 递归卡尔曼滤波器算法在新数据点可用时顺序更新时变参数,并且是一个灵活的预测技术。 该方法应用于北达科他拿破仑站的103年期间的日常雪深度观测的时间序列。 与实际日常雪深度相比,最终十年数据的预测表现良好。 年间雪深度趋势表明中冬雪深度随后是早期的春季消融。

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