The “Seili-index” for the Prediction of Chlorophyll-α Levels in the Archipelago Sea of the northern Baltic Sea, southwest Finland
To build a forecasting tool for the state of eutrophication in the Archipelago Sea, we fitted a Generalized Additive Mixed Model (GAMM) to marine environmental monitoring data, which were collected over the years 2011–2019 by an automated profiling buoy at the Seili ODAS-station. The resulting “Seil...
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Veröffentlicht in: | Environmental modeling & assessment 2022-08, Vol.27 (4), p.571-584 |
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Sprache: | eng |
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Zusammenfassung: | To build a forecasting tool for the state of eutrophication in the Archipelago Sea, we fitted a
Generalized Additive Mixed Model
(GAMM) to marine environmental monitoring data, which were collected over the years 2011–2019 by an automated profiling buoy at the Seili ODAS-station. The resulting “Seili-index” can be used to predict the chlorophyll-
α
(chl-a) concentration in the seawater a number of days ahead by using the temperature forecast as a covariate. An array of test predictions with two separate models on the 2019 data set showed that the index is adept at predicting the amount of chl-a especially in the upper water layer. The visualization with 10 days of chl-a level predictions is presented online at
https://saaristomeri.utu.fi/seili-index/
. We also applied GAMMs to predict abrupt blooms of cyanobacteria on the basis of temperature and wind conditions and found the model to be feasible for short-term predictions. The use of automated monitoring data and the presented GAMM model in assessing the effects of natural resource management and pollution risks is discussed. |
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ISSN: | 1420-2026 1573-2967 |
DOI: | 10.1007/s10666-022-09822-9 |