University of Latvia Faculty of Geography and Earth Sciences, Rainis bvld 19, Riga, LV -1586, Latvia.
Finnish Meteorological Institute, Erik Palmenin aukio 1, 00560 Helsinki, Finland.
Sci Total Environ. 2018 Feb 15;615:228-239. doi: 10.1016/j.scitotenv.2017.09.061. Epub 2017 Sep 30.
The paper suggests a methodology for predicting next-year seasonal pollen index (SPI, a sum of daily-mean pollen concentrations) over large regions and demonstrates its performance for birch in Northern and North-Eastern Europe. A statistical model is constructed using meteorological, geophysical and biological characteristics of the previous year). A cluster analysis of multi-annual data of European Aeroallergen Network (EAN) revealed several large regions in Europe, where the observed SPI exhibits similar patterns of the multi-annual variability. We built the model for the northern cluster of stations, which covers Finland, Sweden, Baltic States, part of Belarus, and, probably, Russia and Norway, where the lack of data did not allow for conclusive analysis. The constructed model was capable of predicting the SPI with correlation coefficient reaching up to 0.9 for some stations, odds ratio is infinitely high for 50% of sites inside the region and the fraction of prediction falling within factor of 2 from observations, stays within 40-70%. In particular, model successfully reproduced both the bi-annual cycle of the SPI and years when this cycle breaks down.
本文提出了一种用于预测大区域来年季节性花粉指数(SPI,即每日平均花粉浓度的总和)的方法,并展示了其在北欧和东欧桦树花粉预测方面的性能。该统计模型使用前一年的气象、地球物理和生物学特征构建。通过对欧洲气传过敏原网络(EAN)多年数据的聚类分析,揭示了欧洲的几个大区,其观测到的 SPI 表现出相似的多年变化模式。我们为北部的站群构建了模型,涵盖了芬兰、瑞典、波罗的海国家、白俄罗斯的一部分,以及俄罗斯和挪威的部分地区,这些地区的数据不足,无法进行明确的分析。所构建的模型能够对 SPI 进行预测,部分站点的相关系数高达 0.9,区域内 50%站点的优势比无限高,预测值与观测值的比值在 2 倍以内的比例在 40-70%之间。特别是,该模型成功再现了 SPI 的两年周期和该周期中断的年份。