Using the moving window incorporated neural network to forecast the population behavior of Nostocales spp. in the River Darling, Australia


Autoria(s): Hou, Guoxiang; Li, Hongbin; Recknagel, Friedrich; Song, Lirong
Data(s)

2007

Resumo

The paper demonstrates the nonstationarity of algal population behaviors by analyzing the historical populations of Nostocales spp. in the River Darling, Australia. Freshwater ecosystems are more likely to be nonstationary, instead of stationary. Nonstationarity implies that only the near past behaviors could forecast the near future for the system. However, nonstionarity was not considered seriously in previous research efforts for modeling and predicting algal population behaviors. Therefore the moving window technique was incorporated with radial basis function neural network (RBFNN) approach to deal with nonstationarity when modeling and forecasting the population behaviors of Nostocales spp. in the River Darling. The results showed that the RBFNN model could predict the timing and magnitude of algal blooms of Nostocales spp. with high accuracy. Moreover, a combined model based on individual RBFNN models was implemented, which showed superiority over the individual RBFNN models. Hence, the combined model was recommended for the modeling and forecasting of the phytoplankton populations, especially for the forecasting.

The paper demonstrates the nonstationarity of algal population behaviors by analyzing the historical populations of Nostocales spp. in the River Darling, Australia. Freshwater ecosystems are more likely to be nonstationary, instead of stationary. Nonstationarity implies that only the near past behaviors could forecast the near future for the system. However, nonstionarity was not considered seriously in previous research efforts for modeling and predicting algal population behaviors. Therefore the moving window technique was incorporated with radial basis function neural network (RBFNN) approach to deal with nonstationarity when modeling and forecasting the population behaviors of Nostocales spp. in the River Darling. The results showed that the RBFNN model could predict the timing and magnitude of algal blooms of Nostocales spp. with high accuracy. Moreover, a combined model based on individual RBFNN models was implemented, which showed superiority over the individual RBFNN models. Hence, the combined model was recommended for the modeling and forecasting of the phytoplankton populations, especially for the forecasting.

Identificador

http://ir.ihb.ac.cn/handle/152342/8666

http://www.irgrid.ac.cn/handle/1471x/58846

Idioma(s)

英语

Fonte

Hou, Guoxiang; Li, Hongbin; Recknagel, Friedrich; Song, Lirong.Using the moving window incorporated neural network to forecast the population behavior of Nostocales spp. in the River Darling, Australia,FRESENIUS ENVIRONMENTAL BULLETIN,2007,16(3):304-309

Palavras-Chave #Environmental Sciences #nonstationary #population behavior #radial basis function #neural network #moving window
Tipo

期刊论文