6533b7d3fe1ef96bd12601d5

RESEARCH PRODUCT

A statistical model for predicting the inter-annual variability of birch pollen abundance in Northern and North-Eastern Europe

ÅSlög DahlI. SaulienePilvi SiljamoAgneta EkebomMikhail SofievLucie HoebekeHallvard RamfjordAnnika SaartoElena SeverovaOlga RitenbergaValentina Shalaboda

subject

Baltic StatesEnvironmental EngineeringRepublic of Belarus010504 meteorology & atmospheric sciencesMeteorologyCorrelation coefficientta1172Birch pollen010501 environmental sciencesSeasonal pollen indexmedicine.disease_causeDisease cluster01 natural sciencesPollen forecastingAnnan biologiRussiaAbundance (ecology)PollenmedicineOther Biological TopicsEnvironmental ChemistryWaste Management and DisposalBetulaFinland0105 earth and related environmental sciencesSwedenModels Statisticalta114NorwayStatistical modelAllergensPollutionBirch pollenGeographyta1181PollenSeasonsPhysical geographyInter-annual variability

description

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.

https://doi.org/10.1016/j.scitotenv.2017.09.061