Modeling of cyanobacterial blooms in hypereutrophic Lake Dianchi, China


Autoria(s): Hou, GX; Song, LR; Liu, JT; Xiao, BD; Liu, YD
Data(s)

01/12/2004

Resumo

Compared with other approaches for modeling and predicting, artificial neural networks are more effective in describing complex and non-linear systems. The occurrence of cyanobacterial blooms has been a continuous and serious problem over the past decades in hypereutrophic Lake Dianchi. Yet, the main factor(s) initiating these blooms remain(s) unclear. During 2001-2002 at 40 sampling sites in Lake Dianchi, physicochemical parameters possibly relating to the blooms were measured. Parameters directly or indirectly relating to the cyanobacterial blooms were used as driving factors in a back-propagation network to model the concentration of chlorophyll a. According to sensitivity analysis, chemical oxygen demand was identified as a very significant environmental factor for algal growth in Lake Dianchi.

Compared with other approaches for modeling and predicting, artificial neural networks are more effective in describing complex and non-linear systems. The occurrence of cyanobacterial blooms has been a continuous and serious problem over the past decades in hypereutrophic Lake Dianchi. Yet, the main factor(s) initiating these blooms remain(s) unclear. During 2001-2002 at 40 sampling sites in Lake Dianchi, physicochemical parameters possibly relating to the blooms were measured. Parameters directly or indirectly relating to the cyanobacterial blooms were used as driving factors in a back-propagation network to model the concentration of chlorophyll a. According to sensitivity analysis, chemical oxygen demand was identified as a very significant environmental factor for algal growth in Lake Dianchi.

Identificador

http://ir.ihb.ac.cn/handle/152342/9360

http://www.irgrid.ac.cn/handle/1471x/59193

Idioma(s)

英语

Fonte

Guoxiang Hou; Lirong Song; Jiantong Liu; Bangding Xiao; Yongding Liu.Modeling of cyanobacterial blooms in hypereutrophic Lake Dianchi, China,JOURNAL OF FRESHWATER ECOLOGY,2004,19(4):623-629

Palavras-Chave #Ecology; Limnology #NEURAL NETWORKS
Tipo

期刊论文