JBiSE  Vol.3 No.4 , April 2010
Fermentation process modeling of exopolysaccharide using neural networks and fuzzy systems with entropy criterion
ABSTRACT
The prediction accuracy and generalization of fermentation process modeling on exopolysaccharide (EPS) production from Lactobacillus are often deteriorated by noise existing in the corresponding experimental data. In order to circumvent this problem, a novel entropy-based criterion is proposed as the objective function of several commonly used modeling methods, i.e. Multi-Layer Perceptron (MLP) network, Radial Basis Function (RBF) neural network, Takagi-Sugeno-Kang (TSK) fuzzy system, for fermentation process model in this study. Quite different from the traditional Mean Square Error (MSE) based criterion, the novel entropy-based criterion can be used to train the parameters of the adopted modeling methods from the whole distribution structure of the training data set, which results in the fact that the adopted modeling methods can have global approximation capability. Compared with the MSE- criterion, the advantage of this novel criterion exists in that the parameter learning can effectively avoid the over-fitting phenomenon, therefore the proposed criterion based modeling methods have much better generalization ability and robustness. Our experimental results confirm the above virtues of the proposed entropy-criterion based modeling methods.

Cite this paper
nullTan, Z. , Wang, S. , Deng, Z. and Du, G. (2010) Fermentation process modeling of exopolysaccharide using neural networks and fuzzy systems with entropy criterion. Journal of Biomedical Science and Engineering, 3, 430-438. doi: 10.4236/jbise.2010.34059.
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