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Two-scale multi-model ensemble: is a hybrid ensemble of opportunity telling us more?

机译:两级多模型合奏:机会的混合合奏能告诉我们更多信息吗?

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摘要

In this study we introduce a hybrid ensemble consisting of air quality models operating at both the global and regional scale. The work is motivated by the fact that these different types of models treat specific portions of the atmospheric spectrum with different levels of detail, and it is hypothesized that their combination can generate an ensemble that performs better than mono-scale ensembles. A detailed analysis of the hybrid ensemble is carried out in the attempt to investigate this hypothesis and determine the real benefit it produces compared to ensembles constructed from only global-scale or only regional-scale models. The study utilizes 13 regional and 7 global models participating in the Hemispheric Transport of Air Pollutants phase 2 (HTAP2)–Air Quality Model Evaluation International Initiative phase 3 (AQMEII3) activity and focuses on surface ozone concentrations over Europe for the year 2010. Observations from 405 monitoring rural stations are used for the evaluation of the ensemble performance. The analysis first compares the modelled and measured power spectra of all models and then assesses the properties of the mono-scale ensembles, particularly their level of redundancy, in order to inform the process of constructing the hybrid ensemble. This study has been conducted in the attempt to identify that the improvements obtained by the hybrid ensemble relative to the mono-scale ensembles can be attributed to its hybrid nature. The improvements are visible in a slight increase of the diversity (4 % for the hourly time series, 10 % for the daily maximum time series) and a smaller improvement of the accuracy compared to diversity. Root mean square error (RMSE) improved by 13–16 % compared to G and by 2–3 % compared to R. Probability of detection (POD) and false-alarm rate (FAR) show a remarkable improvement, with a steep increase in the largest POD values and smallest values of FAR across the concentration ranges. The results show that the optimal set is constructed from an equal number of global and regional models at only 15 % of the stations. This implies that for the majority of the cases the regional-scale set of models governs the ensemble. However given the high degree of redundancy that characterizes the regional-scale models, no further improvement could be expected in the ensemble performance by adding yet more regional models to it. Therefore the improvement obtained with the hybrid set can confidently be attributed to the different nature of the global models. The study strongly reaffirms the importance of an in-depth inspection of any ensemble of opportunity in order to extract the maximum amount of information and to have full control over the data used in the construction of the ensemble.
机译:在这项研究中,我们介绍了一种混合集成,包括在全球和区域范围内运行的空气质量模型。这些不同类型的模型以不同的细节水平处理大气频谱的特定部分,因此可以进行这项工作,并且可以假设它们的组合可以产生比单尺度集合更好的集合。为了研究此假设并确定与仅基于全球规模或仅区域规模的模型构建的集成相比,混合集成进行了详细的分析,以尝试确定该组合所产生的实际收益。该研究利用了参与空气污染物半球运输第2阶段(HTAP2)–国际质量模型评估国际倡议第3阶段(AQMEII3)活动的13个区域和7个全球模型,并重点研究了2010年欧洲的表面臭氧浓度。 405个监测农村站用于评估合奏性能。分析首先比较所有模型的建模功率谱和实测功率谱,然后评估单尺度乐团的属性,尤其是其冗余级别,以告知构建混合乐团的过程。进行这项研究的目的是确定杂种合奏相对于单尺度合奏获得的改进可以归因于其杂种性质。与分集相比,分集的略微增加(每小时时间序列为4%,每日最大时间序列为10%)和准确性的较小提高是显而易见的。与G相比,均方根误差(RMSE)改善了13-16%,与R相比,均方根误差提高了2-3%。检测概率(POD)和虚警率(FAR)显示出显着改善,并且在整个浓度范围内,最大POD值和FAR最小值。结果表明,最佳集合是由仅15%的站点的相等数量的全局和区域模型构成的。这意味着在大多数情况下,区域范围的模型集决定了整体。但是,鉴于表征区域规模模型的高度冗余性,通过向其添加更多的区域模型,无法期望整体性能得到进一步的改善。因此,使用混合集获得的改进可以肯定地归因于全局模型的不同性质。该研究强烈重申对任何机会集合进行深入检查的重要性,以便提取最大数量的信息并完全控制用于集合建设的数据。

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