校准 EMOS:应用于温度和风速预报

IF 3 4区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Carlo Gaetan, Federica Giummolè, Valentina Mameli
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引用次数: 0

摘要

从数值模式中获得的气象数量集合可用于预报天气变量。遗憾的是,这种集合往往存在偏差和分散不足,因此需要进行后处理。集合模式输出统计(EMOS)是一种广泛使用的后处理技术,用于减少数值模式集合的偏差和分散误差。在 EMOS 方法中,全概率预测以预测分布的形式给出,其参数取决于集合预测成员。然后对参数进行估计和替换,从而得到所谓的估计预测分布。然而,估算型分布在相应定量的覆盖概率方面可能表现不佳。这项工作建议在 EMOS 模型中使用基于自举法调整估计预测分布的预测分布。这些分布是经过校准的,这意味着与估算分布相比,相应的量化值提供了精确的覆盖概率。为 EMOS 引入自举校准程序是本研究的创新之处。建议的校准 EMOS 的性能在两项模拟研究中进行了评估,通过对数分数、连续排序概率分数和相应预测定量的覆盖率对不同的预测分布进行了比较。这些模拟研究的结果表明,建议的校准预测分布改善了估计解决方案,既降低了平均分数,又产生了具有精确覆盖水平的量化值。新的校准 EMOS 的良好性能在两个实际数据应用中得到了进一步强调,一个是关于威尼托地区(意大利)站点的最高日气温,另一个是关于德国气象站的风速预报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Calibrated EMOS: applications to temperature and wind speed forecasting

Calibrated EMOS: applications to temperature and wind speed forecasting

Ensembles of meteorological quantities obtained from numerical models can be used for forecasting weather variables. Unfortunately, such ensembles are often biased and under-dispersed and therefore need to be post-processed. Ensemble model output statistics (EMOS) is a widely used post-processing technique to reduce bias and dispersion errors of numerical ensembles. In the EMOS approach, a full probabilistic prediction is given in the form of a predictive distribution with parameters depending on the ensemble forecast members. Parameters are then estimated and substituted, thus obtaining a so-called estimative predictive distribution. Nonetheless, estimative distributions may perform poorly in terms of the coverage probability of the corresponding quantiles. This work proposes the use of predictive distributions based on a bootstrap adjustment of estimative predictive distributions, in the context of EMOS models. These distributions are calibrated, which means that the corresponding quantiles provide exact coverage probabilities, in contrast to the estimative distributions. The introduction of the bootstrap calibrated procedure for EMOS is the innovative aspect of this study. The performance of the suggested calibrated EMOS is evaluated in two simulation studies, comparing the different predictive distributions by means of the log-score, the continuous ranked probability score, and the coverage of the corresponding predictive quantiles. The results of these simulation studies show that the proposed calibrated predictive distributions improve estimative solutions, both reducing the mean scores and producing quantiles with exact coverage levels. The good performance of the new calibrated EMOS is further stressed in two real data applications, one about maximum daily temperatures at sites located in the Veneto region (Italy) and the other one about wind speed forecasts at weather stations over Germany.

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来源期刊
Environmental and Ecological Statistics
Environmental and Ecological Statistics 环境科学-环境科学
CiteScore
5.90
自引率
2.60%
发文量
27
审稿时长
>36 weeks
期刊介绍: Environmental and Ecological Statistics publishes papers on practical applications of statistics and related quantitative methods to environmental science addressing contemporary issues. Emphasis is on applied mathematical statistics, statistical methodology, and data interpretation and improvement for future use, with a view to advance statistics for environment, ecology and environmental health, and to advance environmental theory and practice using valid statistics. Besides clarity of exposition, a single most important criterion for publication is the appropriateness of the statistical method to the particular environmental problem. The Journal covers all aspects of the collection, analysis, presentation and interpretation of environmental data for research, policy and regulation. The Journal is cross-disciplinary within the context of contemporary environmental issues and the associated statistical tools, concepts and methods. The Journal broadly covers theory and methods, case studies and applications, environmental change and statistical ecology, environmental health statistics and stochastics, and related areas. Special features include invited discussion papers; research communications; technical notes and consultation corner; mini-reviews; letters to the Editor; news, views and announcements; hardware and software reviews; data management etc.
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