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Quantile Regression and Clustering Models of Prediction Intervals for Weather Forecasts: A Comparative Study

机译:定量回归和天气预报预测间隔的聚类模型:比较研究

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Information about forecast uncertainty is vital for optimal decision making in many domains that use weather forecasts. However, it is not available in the immediate output of deterministic numerical weather prediction systems. In this paper, we investigate several learning methods to train and evaluate prediction interval models of weather forecasts. The uncertainty models of weather predictions are trained from a database of historical forecasts/observations. They are developed to investigate prediction intervals of weather forecasts using various quantile regression methods as well as cluster-based probabilistic forecasts using fuzzy methods. To compare and verify probabilistic forecasts, a novel score is developed that accounts for sampling variation effects on forecast verification statistics. The impact of various feature sets and model parameters in forecast uncertainty modeling is also investigated. The results show superior performance of the non-linear quantile regression models in comparison with clustering methods.
机译:关于预测不确定性的信息对于在使用天气预报的许多域中的最佳决策至关重要。但是,它在确定性数字天气预测系统的立即输出中不可用。在本文中,我们调查了若干学习方法来培训和评估天气预报的预测间隔模型。天气预报的不确定性模型从历史预测/观察数据库培训。他们开发了使用各种量子回归方法研究天气预报的预测间隔,以及使用模糊方法的基于集群的概率预测。为了比较和验证概率预测,开发了一种新的评分,用于对预测验证统计数据进行采样变化效应。还研究了各种特征集和模型参数对预测不确定性建模的影响。结果表明,与聚类方法相比,非线性分位数回归模型的优异性能。

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