Modelling algal blooms in Lake Dianchi, China using neural networks
Data(s) |
2007
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Resumo |
Lake Dianchi is one of the most extensively impacted freshwater lakes by algal blooms. To investigate the response of dominant algal genera, neural networks were applied to model the relationship between water quality parameters and the biomass of four dominant genera (Microcystic spp., Anabaena sp., Quadricauda (Turp.) Breb, Pediastrum Mey) in Dianchi. Results showed that the timing and magnitude of algal blooms of Microcystic spp., nabaena sp., Quadricauda (Turp.) Breb, and Pediastrum Mey in Dianchi could be successfully predicted. The evaluation of environmental factors showed that pH had more significant impact on concentrations of all the four dominant algal genera than the nutrient factors, such as total phosphorus and total nitrogen. Lake Dianchi is one of the most extensively impacted freshwater lakes by algal blooms. To investigate the response of dominant algal genera, neural networks were applied to model the relationship between water quality parameters and the biomass of four dominant genera (Microcystic spp., Anabaena sp., Quadricauda (Turp.) Breb, Pediastrum Mey) in Dianchi. Results showed that the timing and magnitude of algal blooms of Microcystic spp., nabaena sp., Quadricauda (Turp.) Breb, and Pediastrum Mey in Dianchi could be successfully predicted. The evaluation of environmental factors showed that pH had more significant impact on concentrations of all the four dominant algal genera than the nutrient factors, such as total phosphorus and total nitrogen. |
Identificador | |
Idioma(s) |
英语 |
Fonte |
Li, Hongbin; Hou, Guoxiang; Song, Lirong; Liu, Yongding.Modelling algal blooms in Lake Dianchi, China using neural networks,FRESENIUS ENVIRONMENTAL BULLETIN,2007,16(7):798-803 |
Palavras-Chave | #Environmental Sciences #algal dynamics #algal bloom #neural network #pH #sensitivity analysis |
Tipo |
期刊论文 |