4.7 Article

Artificial neural network simulation of combined humic substance coagulation and membrane filtration

Journal

CHEMICAL ENGINEERING JOURNAL
Volume 141, Issue 1-3, Pages 27-34

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.cej.2007.10.005

Keywords

membrane separation; artificial neural network; prediction

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Backpropagation artificial neural network (BPNN) was utilized to predict membrane performance. The network was used to predict and compare humic substance (HS) retention and membrane fouling with previously obtained experimental data. BPNN simulation results show high network reliability, if the network is implemented correctly. The difference between the predicted and experimental data was lower than 5%. Low number of training data input has been shown to hinder the learning process. A high number of training data input has lead to over-fitting or memorization of the training data set, reducing the networks predictability. The number of neurons in the hidden layers needs to be chosen carefully to obtain a reliable network. This paper shows that a lower number of neurons result in low reliability, while a higher number of neuron leads to data over-fitting. The best performance was obtained with 2-10 neurons for HS and heavy metals agglomeration and 5-15 neurons for HS coagulation with and without heavy metals. (C) 2007 Elsevier B.V. All rights reserved.

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