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Climatological tools for low visibility forecasting

机译:低能见度预报的气候学工具

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Forecasters need climatological forecasting tools because of limitations of numerical weather prediction models. In this article, using Finnish SYNOP observations and ERA-40 model reanalysis data, low visibility cases are studied using subjective and objective analysis techniques. For the objective analysis, we used an AutoClass clustering algorithm, concentrating on three Finnish airports, namely, the Rovaniemi in northern Finland, Kauhava in western Finland, and Maarianhamina in southwest Finland. These airports represent different climatological conditions. Results suggested that combining of subjective analysis with an objective analysis, e.g., clustering algorithms such as the AutoClass method, can be used to construct climatological guides for forecasters. Some higher level subjective "meta-clustering" was used to make the results physically more reasonable and easier to interpret by the forecasters.
机译:由于数值天气预报模型的局限性,预报员需要气候预报工具。在本文中,使用芬兰语SYNOP观测值和ERA-40模型重新分析数据,使用主观和客观分析技术研究了低能见度情况。为了进行客观分析,我们使用了AutoClass聚类算法,重点关注三个芬兰机场,即芬兰北部的Rovaniemi,芬兰西部的Kauhava和芬兰西南部的Maarianhamina。这些机场代表不同的气候条件。结果表明,可以将主观分析与客观分析相结合,例如AutoClass方法之类的聚类算法,可以用来为预报员构建气候指南。一些较高级别的主观“元聚类”被用来使结果在物理上更合理,并且更容易被预报员解释。

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