Modelling and prediction of phyto‐ and zooplankton dynamics in Lake Kasumigaura by artificial neural networks
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An artificial neural network model was developed for Lake Kasumigaura to predict timing and magnitudes for chlorophyll a, five species of blue-green algae and three zooplankton groups. The model was trained by 8 years of limnological time series and validated by two independent years. The validation showed the potential of neural networks as predictive tools for highly non-linear phenomena such as blue-green algal blooms in freshwater lakes.
[1] F. Recknagel,et al. Artificial neural network approach for modelling and prediction of algal blooms , 1997 .
[2] N. Takamura,et al. Phytoplankton species shift accompanied by transition from nitrogen dependence to phosphorus dependence of primary production in Lake Kasumigaura, Japan , 1992 .
[3] 孝幸 花里,et al. 霞ヶ浦における枝角類動物プランクトン群集の変動(1986-1989): Daphnia galeata の出現とそれが植物プランクトン量に及ぼす影響 , 1991 .
[4] Noriko Takamura,et al. Primary Production in Lake Kasumigaura, 1981-1985 , 1987 .