Hr. Maier et al., USE OF ARTIFICIAL NEURAL NETWORKS FOR MODELING CYANOBACTERIA ANABAENASPP. IN THE RIVER MURRAY, SOUTH AUSTRALIA, Ecological modelling, 105(2-3), 1998, pp. 257-272
The use of artificial neural networks (ANNs) for modelling the inciden
ce of cyanobacteria in rivers was investigated by forecasting the occu
rrence of a species group of Anabaena in the River Murray at Morgan, A
ustralia. The networks of backpropagation type were trained on 7 years
of weekly data for eight variables, and their ability to provide a 4-
week forecast was evaluated for a 28-week period. They were relatively
successful in providing a good forecast of both the incidence and mag
nitude of a growth peak of the cyanobacteria within the limits require
d for water quality monitoring. The use of lagged versus unlagged inpu
ts was evaluated in the implementation and performance of the networks
. Lagged inputs proved far superior in providing a fit to the actual d
ata. Sensitivity analysis of input variables was performed to evaluate
their relative significance in determining the forecast values. The a
nalysis indicated that for this data set for the River Murray, flow an
d temperature were the predominant variables in determining the onset
and duration of cyanobacterial growth. Water colour was the next most
important variable in determining the magnitude of the population grow
th peak. Plant nutrients nitrogen, phosphorus and iron, and turbidity
were less important for this time period. (C) 1998 Elsevier Science B.
V.