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Spatial interpolation of current airborne pollen concentrations where no monitoring exists.
Atmos. Environ. 199, 435-442 (2019)
Background: Pollen is naturally emitted and is relevant for health, crop sciences and monitoring climate change, among others. Despite their relevance, pollen is often insufficiently monitored resulting in a lack of data. Thus, spatial modelling of pollen concentrations for unmonitored areas is necessary. The aim of this study was to develop an automatic system for calculating daily pollen concentrations at sites without regular pollen monitoring.Method: We used data from 14 pollen taxa collected during 2015 at 26 stations distributed across Bavaria, Germany. The proposed system was based on the Kriging interpolation method to spatially model pollen concentrations for unmonitored areas, in combination with regression of environmental parameters. The method also took into account weather effects on daily pollen concentrations.Results: An automatic system was developed for calculating current pollen concentrations at any location of the county. The results were displayed as daily pollen concentrations per m(3) in maps of 1 km(2) resolution. The models are trained automatically for every day by using the pollen and weather inputs. Automatic inputs will increase the usability of the model. In 50% of the cases, Gaussian Kriging was selected as the optimal model. An R-2 of 0.5 is reached in external validation without considering the effect of the weather. An R-2 of 0.7 is reached after considering the effect of daily weather parameters.Conclusions: A fully automatic pollen network (ePIN) was built in Bavaria during 2018 that delivers data on-line without delay. The proposed method allows for a comparably small number of automatic devices per study area, but still providing information on pollen on any location in the study area.
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Publication type
Article: Journal article
Document type
Scientific Article
Keywords
Pollen ; Geostatistics ; Prediction Model ; Automatic Forecasting System ; Aerobiology; Meteorological Parameters; Climate-change; Birch Pollen; Impact; Air; Prediction; Satellite; Weather; Model; Urban
ISSN (print) / ISBN
1352-2310
e-ISSN
1873-2844
Journal
Atmospheric Environment
Quellenangaben
Volume: 199,
Pages: 435-442
Publisher
Elsevier
Publishing Place
The Boulevard, Langford Lane, Kidlington, Oxford Ox5 1gb, England
Non-patent literature
Publications
Reviewing status
Peer reviewed
Institute(s)
Institute of Environmental Medicine (IEM)