Skewed logistic distribution for statistical temperature post-processing in mountainous areas

Q1 Mathematics
Manuel Gebetsberger, R. Stauffer, G. Mayr, A. Zeileis
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引用次数: 25

Abstract

Abstract. Nonhomogeneous post-processing is often used to improve the predictive performance of probabilistic ensemble forecasts. A common quantity used to develop, test, and demonstrate new methods is the near-surface air temperature, which is frequently assumed to follow a Gaussian response distribution. However, Gaussian regression models with only a few covariates are often not able to account for site-specific local features leading to uncalibrated forecasts and skewed residuals. This residual skewness remains even if many covariates are incorporated. Therefore, a simple refinement of the classical nonhomogeneous Gaussian regression model is proposed to overcome this problem by assuming a skewed response distribution to account for possible skewness. This study shows a comprehensive analysis of the performance of nonhomogeneous post-processing for the 2 m temperature for three different site types, comparing Gaussian, logistic, and skewed logistic response distributions. The logistic and skewed logistic distributions show satisfying results, in particular for sharpness, but also in terms of the calibration of the probabilistic predictions.
山区统计温度后处理的倾斜logistic分布
摘要非齐次后处理通常用于提高概率集合预测的预测性能。用于开发、测试和演示新方法的一个常见量是近地表空气温度,通常假设其遵循高斯响应分布。然而,只有几个协变量的高斯回归模型通常无法解释特定地点的局部特征,从而导致未校准的预测和偏斜的残差。即使包含了许多协变量,这种残余偏度仍然存在。因此,提出了一种对经典非齐次高斯回归模型的简单改进,通过假设一个偏斜的响应分布来解释可能的偏斜来克服这个问题。本研究对2 m温度,比较高斯、逻辑和偏斜的逻辑响应分布。逻辑和偏斜的逻辑分布显示出令人满意的结果,特别是在清晰度方面,但也在概率预测的校准方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advances in Statistical Climatology, Meteorology and Oceanography
Advances in Statistical Climatology, Meteorology and Oceanography Earth and Planetary Sciences-Atmospheric Science
CiteScore
4.80
自引率
0.00%
发文量
9
审稿时长
26 weeks
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