Abstract

Ragweed Pollen Alarm System (R-PAS) has been running since 2014 to provide pollen information for countries in the Pannonian biogeographical region (PBR). The aim of this study was to develop forecast models of the representative aerobiological monitoring stations, identified by analysis based on a neural network computation. Monitoring stations with 7-day Hirst-type pollen trap having 10-year long validated data set of ragweed pollen were selected for the study from the PBR. Variables including forecasted meteorological data, pollen data of the previous days and nearby monitoring stations were used as input of the model. We used the multilayer perceptron model to forecast the pollen concentration. The multilayer perceptron (MLP) is a feedforward artificial neural network. MLP is a data-driven method to forecast the behaviour of complex systems. In our case, it has three layers, one of which is hidden. MLP utilizes a supervised learning technique called backpropagation for training to get better performance. By testing the neural network, we selected different sets of variables to predict pollen levels for the next 3 days in each of the monitoring stations. The predicted pollen level categories (low–medium–high–very high) are shown on isarithmic map. We used the mean square error, mean absolute error and correlation coefficient metrics to show the forecasting system’s performance. The average of the Pearson correlations is around 0.6 but shows big variability (0.13–0.88) among different locations. Model uncertainty is mainly caused by the limitation of the available input data and the variability in ragweed season patterns. Visualization of the results of the neural network forecast on isarithmic maps is a good tool to communicate pollen information to general public in the PBR.

Highlights

  • Pollen emitted in high amounts by wind-pollinated plants can provoke numerous respiratory problems such as allergic rhinoconjunctivitis and asthma

  • The aim of this study is to develop a forecast model of the aerobiological monitoring stations based on a neural network computation for the Pannonian biogeographical region (PBR)

  • Independent variables selected by the model were the day of the year (DOY), 3-day lagged pollen concentration and meteorological variables

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Summary

Introduction

Pollen emitted in high amounts by wind-pollinated plants can provoke numerous respiratory problems such as allergic rhinoconjunctivitis and asthma. Common ragweed (Ambrosia artemisiifolia L.) produces highly allergenic pollen. This plant was introduced to Europe at the beginning of the twentieth century (Csontos et al 2010) and greatly spread during the last two decades. The PBR lies in the south-eastern part of Central Europe and forms a topographically discrete unit set in the European landscape. It is dominated by a large flat alluvial basin transected by two major rivers—the Danube and the Tisza (Sundseth 2009). PBR includes the entire area of Hungary, large regions of Croatia, Serbia, Slovakia and Aerobiologia (2020) 36:131–140

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