پديد آورندگان :
Wei A. L. نويسنده , Zeng G . M. نويسنده , Huang G . H. نويسنده , Liang J. نويسنده , Li X. D. نويسنده
چكيده لاتين :
Although traditional artificial neural networks have been an attractive topic in modeling membrane
filtration, lower efficiency by trial-and-error constructing and random initializing methods often accompanies neural
networks. To improve traditional neural networks, the present research used the wavelet network, a special feedforward
neural network with a single hidden layer supported by the wavelet theory. Prediction performance and efficiency of the
proposed network were examined with a published experimental dataset of cross-flow membrane filtration. The dataset
was divided into two parts: 62 samples for training data and 329 samples for testing data. Various combinations of
transmembrane pressure, filtration time, ionic strength and zeta potential were used as inputs of the wavelet network
so as to predict the permeate flux. Through the orthogonal least square alogorithm, an initial network with 12 hidden
neurons was obtained which offered a normalized square root of mean square of 0.103 for the training data. The initial
network led to a wavelet network model after training procedures with fast convergence within 30 epochs. Futher the
wavelet network model accurately depicted the positive effects of either transmembrane pressure or zeta potential on
permeate flux. The wavelet network also offered accurate predictions for the testing data, 96.4 % of which deviated the
measured data within the ± 10 % relative error range. Moreover, comparisons indicated the wavelet network model
produced better predictability than the back-forward backpropagation neural network and the multiple regression
models. Thus the wavelet network approach could be employed successfully in modeling dynamic permeate flux in
cross-flow membrane filtration.