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首页> 外文期刊>Monthly Weather Review >Statistical Downscaling of Extreme Precipitation Events Using Censored Quantile Regression
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Statistical Downscaling of Extreme Precipitation Events Using Censored Quantile Regression

机译:使用删减分位数回归的极端降水事件的统计缩减

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摘要

A statistical downscaling approach for extremes using censored quantile regression is presented. Conditional quantiles of station data (e.g., daily precipitation sums) in Germany are estimated by means of the large-scale circulation as represented by the NCEP reanalysis data. It is shown that a mixed discrete-continuous response variable, such as a daily precipitation sum, can be statistically modeled by a censored variable. Furthermore, a conditional quantile skill score is formulated to assess the relative gam of a quantile forecast compared with a reference forecast. Just like multiple regression for expectation values, quantile regression provides a tool to formulate a model output statistics system for extremal quantiles.
机译:提出了一种使用删减分位数回归的极端情况的统计缩减方法。通过NCEP再分析数据所代表的大规模环流,估算了德国站内数据的条件分位数(例如每日降水总和)。结果表明,混合的离散连续响应变量(例如每日降水量)可以通过审查变量进行统计建模。此外,制定了条件分位数技能得分,以评估分位数预测与参考预测相比的相对差距。就像对期望值进行多元回归一样,分位数回归提供了一种工具,可以为极值分位数制定模型输出统计系统。

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